SlideShare ist ein Scribd-Unternehmen logo
1 von 69
Downloaden Sie, um offline zu lesen
Section 2.8
 Linear Approximation and Differentials

                      V63.0121.041, Calculus I

                           New York University


                          October 13, 2010



Announcements

   Quiz 2 in recitation this week on §§1.5, 1.6, 2.1, 2.2
   Midterm on §§1.1–2.5

                                                 .   .   .   .   .   .
Announcements




         Quiz 2 in recitation this
         week on §§1.5, 1.6, 2.1,
         2.2
         Midterm on §§1.1–2.5




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       2 / 27
Objectives
         Use tangent lines to make
         linear approximations to a
         function.
                Given a function and a
                point in the domain,
                compute the
                linearization of the
                function at that point.
                Use linearization to
                approximate values of
                functions
         Given a function, compute
         the differential of that
         function
         Use the differential
         notation to estimate error
         in linear approximations.                                          .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       3 / 27
Outline



The linear approximation of a function near a point
  Examples
  Questions


Differentials
    Using differentials to estimate error


Advanced Examples




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       4 / 27
The Big Idea

Question
Let f be differentiable at a. What linear function best approximates f
near a?




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       5 / 27
The Big Idea

Question
Let f be differentiable at a. What linear function best approximates f
near a?

Answer
The tangent line, of course!




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       5 / 27
The Big Idea

Question
Let f be differentiable at a. What linear function best approximates f
near a?

Answer
The tangent line, of course!

Question
What is the equation for the line tangent to y = f(x) at (a, f(a))?




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       5 / 27
The Big Idea

Question
Let f be differentiable at a. What linear function best approximates f
near a?

Answer
The tangent line, of course!

Question
What is the equation for the line tangent to y = f(x) at (a, f(a))?

Answer

                                  L(x) = f(a) + f′ (a)(x − a)

                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       5 / 27
The tangent line is a linear approximation



                                                              y
                                                              .


     L(x) = f(a) + f′ (a)(x − a)

is a decent approximation to f                        L
                                                      . (x)                                .
near a.                                                f
                                                       .(x)                                .

                                                       f
                                                       .(a)               .
                                                                              .
                                                                              x−a




                                                               .                                            x
                                                                                                            .
                                                                         a
                                                                         .          x
                                                                                    .

                                                                              .        .       .        .       .     .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       6 / 27
The tangent line is a linear approximation



                                                              y
                                                              .


     L(x) = f(a) + f′ (a)(x − a)

is a decent approximation to f                        L
                                                      . (x)                                .
near a.                                                f
                                                       .(x)                                .
How decent? The closer x is to
a, the better the approxmation                         f
                                                       .(a)               .
                                                                              .
                                                                              x−a
L(x) is to f(x)

                                                               .                                            x
                                                                                                            .
                                                                         a
                                                                         .          x
                                                                                    .

                                                                              .        .       .        .       .     .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       6 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.




.

                                                                               .          .   .        .      .      .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)

        If f(x) = sin x, then f(0) = 0
        and f′ (0) = 1.
        So the linear approximation
        near 0 is L(x) = 0 + 1 · x = x.
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .   .        .      .      .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)
                                                                      We have f                   =            and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3
        and f′ (0) = 1.                                               f′ π = .
                                                                         3
        So the linear approximation
        near 0 is L(x) = 0 + 1 · x = x.
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .       .        .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = .
                                                                         3
        So the linear approximation
        near 0 is L(x) = 0 + 1 · x = x.
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2
        So the linear approximation
        near 0 is L(x) = 0 + 1 · x = x.
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2
        So the linear approximation
                                                                      So L(x) =
        near 0 is L(x) = 0 + 1 · x = x.
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2                √
        So the linear approximation                                                             3 1(    π)
                                                                      So L(x) =                  +   x−
        near 0 is L(x) = 0 + 1 · x = x.                                                        2   2    3
        Thus
             (      )
                61π       61π
         sin           ≈       ≈ 1.06465
                180       180

.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2                √
        So the linear approximation                                                             3 1(    π)
                                                                      So L(x) =                  +   x−
        near 0 is L(x) = 0 + 1 · x = x.                                                        2   2    3
        Thus                                                          Thus
             (      )                                                              (              )
                61π       61π                                                          61π
         sin           ≈       ≈ 1.06465                                     sin                      ≈
                180       180                                                          180


.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2                √
        So the linear approximation                                                             3 1(    π)
                                                                      So L(x) =                  +   x−
        near 0 is L(x) = 0 + 1 · x = x.                                                        2   2    3
        Thus                                                          Thus
             (      )                                                              (              )
                61π       61π                                                          61π
         sin           ≈       ≈ 1.06465                                     sin                      ≈ 0.87475
                180       180                                                          180


.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2                √
        So the linear approximation                                                             3 1(    π)
                                                                      So L(x) =                  +   x−
        near 0 is L(x) = 0 + 1 · x = x.                                                        2   2    3
        Thus                                                          Thus
             (      )                                                              (              )
                61π       61π                                                          61π
         sin           ≈       ≈ 1.06465                                     sin                      ≈ 0.87475
                180       180                                                          180


Calculator check: sin(61◦ ) ≈
.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Example
.
Example
Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation
(i) about a = 0     (ii) about a = 60◦ = π/3.


Solution (i)                                                   Solution (ii)
                                                                                          (π)          √
                                                                                                        3
                                                                      We have f                   =             and
        If f(x) = sin x, then f(0) = 0                                  ( )                   3        2
        and f′ (0) = 1.                                               f′ π = 1 .
                                                                         3   2                √
        So the linear approximation                                                             3 1(    π)
                                                                      So L(x) =                  +   x−
        near 0 is L(x) = 0 + 1 · x = x.                                                        2   2    3
        Thus                                                          Thus
             (      )                                                              (              )
                61π       61π                                                          61π
         sin           ≈       ≈ 1.06465                                     sin                      ≈ 0.87475
                180       180                                                          180


Calculator check: sin(61◦ ) ≈ 0.87462.
.

                                                                               .          .       .         .         .   .

    V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010        7 / 27
Illustration

       y
       .




                                                                      y
                                                                      . = sin x




        .                                                                                  x
                                                                                           .
                                                 . 1◦
                                                 6
                                                                            .          .       .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       8 / 27
Illustration

       y
       .
                                                                   y
                                                                   . = L1 (x) = x




                                                                      y
                                                                      . = sin x




        .                                                                                  x
                                                                                           .
            0
            .                                    . 1◦
                                                 6
                                                                            .          .       .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       8 / 27
Illustration

       y
       .
                                                                   y
                                                                   . = L1 (x) = x




                         b
                         . ig difference!                             y
                                                                      . = sin x




        .                                                                                  x
                                                                                           .
            0
            .                                    . 1◦
                                                 6
                                                                            .          .       .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010       8 / 27
Illustration

       y
       .
                                                                   y
                                                                   . = L1 (x) = x


                                                                                           √                     (            )
                                                                   y
                                                                   . = L2 (x) =            2
                                                                                            3
                                                                                                     +       1
                                                                                                             2       x−   π
                                                                                                                          3
                                                                     y
                                                                     . = sin x
                                               .




        .                                      .                                           x
                                                                                           .
            0
            .                          .
                                       π/3         . 1◦
                                                   6
                                                                            .          .       .         .           .        .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010               8 / 27
Illustration

       y
       .
                                                                   y
                                                                   . = L1 (x) = x


                                                                                           √                     (            )
                                                               y
                                                               . = L2 (x) =                2
                                                                                            3
                                                                                                     +       1
                                                                                                             2       x−   π
                                                                                                                          3
                                                                 y
                                                                 . = sin x
                                               . . ery little difference!
                                                 v




        .                                      .                                           x
                                                                                           .
            0
            .                          .
                                       π/3         . 1◦
                                                   6
                                                                            .          .       .         .           .        .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials               October 13, 2010               8 / 27
Another Example

Example
              √
Estimate       10 using the fact that 10 = 9 + 1.




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       9 / 27
Another Example

Example
              √
Estimate       10 using the fact that 10 = 9 + 1.

Solution
                                                                                           √
The key step is to use a linear approximation to f(x) =
                    √                                                                       x near a = 9
to estimate f(10) = 10.




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       9 / 27
Another Example

Example
              √
Estimate       10 using the fact that 10 = 9 + 1.

Solution
                                                                                           √
The key step is to use a linear approximation to f(x) =
                    √                                                                       x near a = 9
to estimate f(10) = 10.
                             √    √     d√
                              10 ≈ 9 +      x     (1)
                                        dx    x=9
                                       1        19
                                 =3+      (1) =     ≈ 3.167
                                     2·3         6




                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       9 / 27
Another Example

Example
              √
Estimate       10 using the fact that 10 = 9 + 1.

Solution
                                                                                           √
The key step is to use a linear approximation to f(x) =
                    √                                                                       x near a = 9
to estimate f(10) = 10.
                             √    √     d√
                              10 ≈ 9 +      x     (1)
                                        dx    x=9
                                       1        19
                                 =3+      (1) =     ≈ 3.167
                                     2·3         6
           (        )2
               19
Check:                   =
               6
                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       9 / 27
Another Example

Example
              √
Estimate       10 using the fact that 10 = 9 + 1.

Solution
                                                                                           √
The key step is to use a linear approximation to f(x) =
                    √                                                                       x near a = 9
to estimate f(10) = 10.
                             √    √     d√
                              10 ≈ 9 +      x     (1)
                                        dx    x=9
                                       1        19
                                 =3+      (1) =     ≈ 3.167
                                     2·3         6
           (        )2
               19            361
Check:                   =       .
               6             36
                                                                            .          .   .        .      .      .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010       9 / 27
Dividing without dividing?
Example
Suppose I have an irrational fear of division and need to estimate
577 ÷ 408. I write
                      577            1             1  1
                          = 1 + 169     = 1 + 169 × ×    .
                      408           408            4 102
                                   1
But still I have to find              .
                                  102




                                                                             .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Section 2.8 Linear Approximation and Differentials           October 13, 2010   10 / 27
Dividing without dividing?
Example
Suppose I have an irrational fear of division and need to estimate
577 ÷ 408. I write
                      577            1             1  1
                          = 1 + 169     = 1 + 169 × ×    .
                      408           408            4 102
                                   1
But still I have to find              .
                                  102

Solution
                1
Let f(x) =        . We know f(100) and we want to estimate f(102).
                x
                                                               1   1
          f(102) ≈ f(100) + f′ (100)(2) =                        −     (2) = 0.0098
                                                              100 1002
                                                 577
                                        =⇒           ≈ 1.41405
                                                 408                         .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Section 2.8 Linear Approximation and Differentials           October 13, 2010   10 / 27
Questions

Example
Suppose we are traveling in a car and at noon our speed is 50 mi/hr.
How far will we have traveled by 2:00pm? by 3:00pm? By midnight?




                                                                            .          .   .         .      .     .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   11 / 27
Answers


Example
Suppose we are traveling in a car and at noon our speed is 50 mi/hr.
How far will we have traveled by 2:00pm? by 3:00pm? By midnight?




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   12 / 27
Answers


Example
Suppose we are traveling in a car and at noon our speed is 50 mi/hr.
How far will we have traveled by 2:00pm? by 3:00pm? By midnight?

Answer

      100 mi
      150 mi
      600 mi (?) (Is it reasonable to assume 12 hours at the same
      speed?)



                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   12 / 27
Questions

Example
Suppose we are traveling in a car and at noon our speed is 50 mi/hr.
How far will we have traveled by 2:00pm? by 3:00pm? By midnight?

Example
Suppose our factory makes MP3 players and the marginal cost is
currently $50/lot. How much will it cost to make 2 more lots? 3 more
lots? 12 more lots?




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   13 / 27
Answers


Example
Suppose our factory makes MP3 players and the marginal cost is
currently $50/lot. How much will it cost to make 2 more lots? 3 more
lots? 12 more lots?

Answer

      $100
      $150
      $600 (?)




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   14 / 27
Questions

Example
Suppose we are traveling in a car and at noon our speed is 50 mi/hr.
How far will we have traveled by 2:00pm? by 3:00pm? By midnight?

Example
Suppose our factory makes MP3 players and the marginal cost is
currently $50/lot. How much will it cost to make 2 more lots? 3 more
lots? 12 more lots?

Example
Suppose a line goes through the point (x0 , y0 ) and has slope m. If the
point is moved horizontally by dx, while staying on the line, what is the
corresponding vertical movement?

                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   15 / 27
Answers


Example
Suppose a line goes through the point (x0 , y0 ) and has slope m. If the
point is moved horizontally by dx, while staying on the line, what is the
corresponding vertical movement?




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   16 / 27
Answers


Example
Suppose a line goes through the point (x0 , y0 ) and has slope m. If the
point is moved horizontally by dx, while staying on the line, what is the
corresponding vertical movement?

Answer
The slope of the line is
                                     rise
                                                m=
                                     run
We are given a “run” of dx, so the corresponding “rise” is m dx.



                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   16 / 27
Outline



The linear approximation of a function near a point
  Examples
  Questions


Differentials
    Using differentials to estimate error


Advanced Examples




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   17 / 27
Differentials are another way to express derivatives


    f(x + ∆x) − f(x) ≈ f′ (x) ∆x                               y
                                                               .
               ∆y                    dy

Rename ∆x = dx, so we can
write this as
                                                                                           .
          ∆y ≈ dy = f′ (x)dx.                                                                       .
                                                                                                    dy
                                                                                               .
                                                                                               ∆y

And this looks a lot like the                                             .
                                                                           .
                                                                           dx = ∆x
Leibniz-Newton identity

                  dy                                            .
                     = f′ (x)                                                                                     x
                                                                                                                  .
                  dx                                                     x x
                                                                         . . + ∆x


                                                                            .          .            .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials                    October 13, 2010   18 / 27
Differentials are another way to express derivatives


    f(x + ∆x) − f(x) ≈ f′ (x) ∆x                               y
                                                               .
               ∆y                    dy

Rename ∆x = dx, so we can
write this as
                                                                                           .
          ∆y ≈ dy = f′ (x)dx.                                                                       .
                                                                                                    dy
                                                                                               .
                                                                                               ∆y

And this looks a lot like the                                             .
                                                                           .
                                                                           dx = ∆x
Leibniz-Newton identity

                  dy                                            .
                     = f′ (x)                                                                                     x
                                                                                                                  .
                  dx                                                     x x
                                                                         . . + ∆x
Linear approximation means ∆y ≈ dy = f′ (x0 ) dx near x0 .
                                                                            .          .            .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials                    October 13, 2010   18 / 27
Using differentials to estimate error



                                                               y
                                                               .
If y = f(x), x0 and ∆x is known,
and an estimate of ∆y is
desired:
       Approximate: ∆y ≈ dy                                                                .
       Differentiate: dy = f′ (x) dx                                                           .
                                                                                               ∆y
                                                                                                    .
                                                                                                    dy


       Evaluate at x = x0 and                                             .
                                                                           .
                                                                           dx = ∆x
       dx = ∆x.

                                                                .                                                 x
                                                                                                                  .
                                                                         x x
                                                                         . . + ∆x

                                                                            .          .            .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials                    October 13, 2010   19 / 27
Example
A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting
machine will cut a rectangle whose width is exactly half its length, but
the length is prone to errors. If the length is off by 1 in, how bad can the
area of the sheet be off by?




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   20 / 27
Example
A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting
machine will cut a rectangle whose width is exactly half its length, but
the length is prone to errors. If the length is off by 1 in, how bad can the
area of the sheet be off by?

Solution
                     1 2
Write A(ℓ) =           ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in.
                     2




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   20 / 27
Example
A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting
machine will cut a rectangle whose width is exactly half its length, but
the length is prone to errors. If the length is off by 1 in, how bad can the
area of the sheet be off by?

Solution
             1 2
Write A(ℓ) =   ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in.
             2      ( )
                      97     9409         9409
  (I) A(ℓ + ∆ℓ) = A       =       So ∆A =       − 32 ≈ 0.6701.
                      12      288          288




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   20 / 27
Example
A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting
machine will cut a rectangle whose width is exactly half its length, but
the length is prone to errors. If the length is off by 1 in, how bad can the
area of the sheet be off by?

Solution
              1 2
Write A(ℓ) =    ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in.
              2      ( )
                       97      9409            9409
  (I) A(ℓ + ∆ℓ) = A         =       So ∆A =         − 32 ≈ 0.6701.
                       12      288             288
      dA
 (II)     = ℓ, so dA = ℓ dℓ, which should be a good estimate for ∆ℓ.
      dℓ
      When ℓ = 8 and dℓ = 12 , we have dA = 12 = 2 ≈ 0.667. So we
                             1                  8
                                                    3
      get estimates close to the hundredth of a square foot.

                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   20 / 27
Why?



Why use linear approximations dy when the actual difference ∆y is
known?
      Linear approximation is quick and reliable. Finding ∆y exactly
      depends on the function.
      These examples are overly simple. See the “Advanced Examples”
      later.
      In real life, sometimes only f(a) and f′ (a) are known, and not the
      general f(x).




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   21 / 27
Outline



The linear approximation of a function near a point
  Examples
  Questions


Differentials
    Using differentials to estimate error


Advanced Examples




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   22 / 27
Gravitation
Pencils down!

Example

       Drop a 1 kg ball off the roof of the Silver Center (50m high). We
       usually say that a falling object feels a force F = −mg from gravity.




                                                                             .          .   .         .       .    .

  V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   23 / 27
Gravitation
Pencils down!

Example

       Drop a 1 kg ball off the roof of the Silver Center (50m high). We
       usually say that a falling object feels a force F = −mg from gravity.
       In fact, the force felt is
                                                               GMm
                                               F(r) = −            ,
                                                                r2
       where M is the mass of the earth and r is the distance from the
       center of the earth to the object. G is a constant.
                                              GMm
       At r = re the force really is F(re ) =      = −mg.
                                               r2
                                                e
       What is the maximum error in replacing the actual force felt at the
       top of the building F(re + ∆r) by the force felt at ground level
       F(re )? The relative error? The percentage error?                     .          .   .         .       .    .

  V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   23 / 27
Gravitation Solution
Solution
We wonder if ∆F = F(re + ∆r) − F(re ) is small.
      Using a linear approximation,

                                                  dF           GMm
                                  ∆F ≈ dF =             dr = 2 3 dr
                                                  dr re         re
                                                  (      )
                                                    GMm dr           ∆r
                                                =     2
                                                               = 2mg
                                                     re     re       re

                          ∆F        ∆r
      The relative error is   ≈ −2
                           F        re
      re = 6378.1 km. If ∆r = 50 m,
            ∆F      ∆r         50
               ≈ −2    = −2         = −1.56 × 10−5 = −0.00156%
             F      re      6378100
                                                                              .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)     Section 2.8 Linear Approximation and Differentials           October 13, 2010   24 / 27
Systematic linear approximation

      √                    √
       2 is irrational, but 9/4 is rational and 9/4 is close to 2.




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   25 / 27
Systematic linear approximation

      √                    √
       2 is irrational, but 9/4 is rational and 9/4 is close to 2. So
                       √   √           √                                1                         17
                        2 = 9/4 − 1/4 ≈ 9/4 +                                   (−1/4) =
                                                                    2(3/2)                        12




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   25 / 27
Systematic linear approximation

      √                    √
       2 is irrational, but 9/4 is rational and 9/4 is close to 2. So
                       √   √           √                                1                         17
                        2 = 9/4 − 1/4 ≈ 9/4 +                                   (−1/4) =
                                                                    2(3/2)                        12


      This is a better approximation since (17/12)2 = 289/144




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   25 / 27
Systematic linear approximation

      √                    √
       2 is irrational, but 9/4 is rational and 9/4 is close to 2. So
                       √   √           √                                 1                         17
                        2 = 9/4 − 1/4 ≈ 9/4 +                                    (−1/4) =
                                                                     2(3/2)                        12


      This is a better approximation since (17/12)2 = 289/144
      Do it again!
          √   √                 √                                         1
           2 = 289/144 − 1/144 ≈ 289/144 +                                      (−1/144) = 577/408
                                                                       2(17/12)
               (         )2
                   577            332, 929             1
      Now                     =            which is          away from 2.
                   408            166, 464          166, 464

                                                                             .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)    Section 2.8 Linear Approximation and Differentials           October 13, 2010   25 / 27
Illustration of the previous example




                                  .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                  .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                  .
                                                               2
                                                               .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                                   .




                                  .
                                                               2
                                                               .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                                   .




                                  .
                                                               2
                                                               .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                   . 2, 17 )
                                                   ( 12
                                                                . .




                                  .
                                                               2
                                                               .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                   . 2, 17 )
                                                   ( 12
                                                                . .




                                  .
                                                               2
                                                               .




                                                                                .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)       Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                                        .
                                       . 2, 17/12)
                                       (
                                                        .                   . 4, 3)
                                                                            (9 2




                                                                             .         .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                                        .
                                       . 2, 17/12)
                                       (
                                                        .. (              . 9, 3)
                                                                          (
                                                                          )4 2
                                                               289 17
                                                          .    144 , 12




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Illustration of the previous example




                                                                .
                                       . 2, 17/12)
                                       (
                                                   .. (           . 9, 3)
                                                                  (
                                        ( 577 )                  )4 2
                                        . 2, 408        289 17
                                                      . 144 , 12




                                                                            .          .   .         .       .    .

 V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   26 / 27
Summary


     Linear approximation: If f is differentiable at a, the best linear
     approximation to f near a is given by

                                   Lf,a (x) = f(a) + f′ (a)(x − a)

     Differentials: If f is differentiable at x, a good approximation to
     ∆y = f(x + ∆x) − f(x) is

                                                      dy        dy
                                 ∆y ≈ dy =               · dx =    · ∆x
                                                      dx        dx
     Don’t buy plywood from me.



                                                                           .          .   .         .       .    .

V63.0121.041, Calculus I (NYU)   Section 2.8 Linear Approximation and Differentials           October 13, 2010   27 / 27

Weitere ähnliche Inhalte

Was ist angesagt?

Differential Geometry
Differential GeometryDifferential Geometry
Differential Geometry
lapuyade
 

Was ist angesagt? (17)

Lesson 14: Derivatives of Logarithmic and Exponential Functions (handout)
Lesson 14: Derivatives of Logarithmic and Exponential Functions (handout)Lesson 14: Derivatives of Logarithmic and Exponential Functions (handout)
Lesson 14: Derivatives of Logarithmic and Exponential Functions (handout)
 
Lesson 20: Derivatives and the Shapes of Curves (handout)
Lesson 20: Derivatives and the Shapes of Curves (handout)Lesson 20: Derivatives and the Shapes of Curves (handout)
Lesson 20: Derivatives and the Shapes of Curves (handout)
 
Tro07 sparse-solutions-talk
Tro07 sparse-solutions-talkTro07 sparse-solutions-talk
Tro07 sparse-solutions-talk
 
Tensor Decomposition and its Applications
Tensor Decomposition and its ApplicationsTensor Decomposition and its Applications
Tensor Decomposition and its Applications
 
Lesson 12: Linear Approximation and Differentials (Section 21 handout)
Lesson 12: Linear Approximation and Differentials (Section 21 handout)Lesson 12: Linear Approximation and Differentials (Section 21 handout)
Lesson 12: Linear Approximation and Differentials (Section 21 handout)
 
Lesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential FunctionsLesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential Functions
 
Lesson 13: Exponential and Logarithmic Functions (handout)
Lesson 13: Exponential and Logarithmic Functions (handout)Lesson 13: Exponential and Logarithmic Functions (handout)
Lesson 13: Exponential and Logarithmic Functions (handout)
 
project report(1)
project report(1)project report(1)
project report(1)
 
Lesson 4: Continuity
Lesson 4: ContinuityLesson 4: Continuity
Lesson 4: Continuity
 
Lesson 1: Functions
Lesson 1: FunctionsLesson 1: Functions
Lesson 1: Functions
 
Lesson 25: Evaluating Definite Integrals (handout)
Lesson 25: Evaluating Definite Integrals (handout)Lesson 25: Evaluating Definite Integrals (handout)
Lesson 25: Evaluating Definite Integrals (handout)
 
Lesson 5: Continuity (handout)
Lesson 5: Continuity (handout)Lesson 5: Continuity (handout)
Lesson 5: Continuity (handout)
 
Lesson 1: Functions
Lesson 1: FunctionsLesson 1: Functions
Lesson 1: Functions
 
MATHEON Center Days: Index determination and structural analysis using Algori...
MATHEON Center Days: Index determination and structural analysis using Algori...MATHEON Center Days: Index determination and structural analysis using Algori...
MATHEON Center Days: Index determination and structural analysis using Algori...
 
Curve fitting
Curve fittingCurve fitting
Curve fitting
 
Differential Geometry
Differential GeometryDifferential Geometry
Differential Geometry
 
4th Semester Mechanincal Engineering (2012-June) Question Papers
4th Semester Mechanincal Engineering (2012-June) Question Papers4th Semester Mechanincal Engineering (2012-June) Question Papers
4th Semester Mechanincal Engineering (2012-June) Question Papers
 

Ähnlich wie Lesson 12: Linear Approximation and Differentials (Section 41 slides)

Lesson 12: Linear Approximation
Lesson 12: Linear ApproximationLesson 12: Linear Approximation
Lesson 12: Linear Approximation
Mel Anthony Pepito
 
Lesson 12: Linear Approximation
Lesson 12: Linear ApproximationLesson 12: Linear Approximation
Lesson 12: Linear Approximation
Matthew Leingang
 
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Matthew Leingang
 
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides) Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Mel Anthony Pepito
 
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Matthew Leingang
 
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides) Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Mel Anthony Pepito
 
3.4 derivative and graphs
3.4 derivative and graphs3.4 derivative and graphs
3.4 derivative and graphs
math265
 
Lesson 7: The Derivative as a Function
Lesson 7: The Derivative as a FunctionLesson 7: The Derivative as a Function
Lesson 7: The Derivative as a Function
Matthew Leingang
 
Lesson 19: Curve Sketching
Lesson 19: Curve SketchingLesson 19: Curve Sketching
Lesson 19: Curve Sketching
Matthew Leingang
 

Ähnlich wie Lesson 12: Linear Approximation and Differentials (Section 41 slides) (20)

Lesson 12: Linear Approximation
Lesson 12: Linear ApproximationLesson 12: Linear Approximation
Lesson 12: Linear Approximation
 
Lesson 12: Linear Approximation (Section 41 handout)
Lesson 12: Linear Approximation (Section 41 handout)Lesson 12: Linear Approximation (Section 41 handout)
Lesson 12: Linear Approximation (Section 41 handout)
 
Lesson 12: Linear Approximation
Lesson 12: Linear ApproximationLesson 12: Linear Approximation
Lesson 12: Linear Approximation
 
Lesson 12: Linear Approximation
Lesson 12: Linear ApproximationLesson 12: Linear Approximation
Lesson 12: Linear Approximation
 
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)
 
Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides) Lesson 8: Basic Differentiation Rules (Section 41 slides)
Lesson 8: Basic Differentiation Rules (Section 41 slides)
 
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)
 
Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides) Lesson 8: Basic Differentiation Rules (Section 21 slides)
Lesson 8: Basic Differentiation Rules (Section 21 slides)
 
Lesson 16: Inverse Trigonometric Functions (Section 041 slides)
Lesson 16: Inverse Trigonometric Functions (Section 041 slides)Lesson 16: Inverse Trigonometric Functions (Section 041 slides)
Lesson 16: Inverse Trigonometric Functions (Section 041 slides)
 
3.4 derivative and graphs
3.4 derivative and graphs3.4 derivative and graphs
3.4 derivative and graphs
 
Lesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential FunctionsLesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential Functions
 
Lesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential FunctionsLesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential Functions
 
Lesson 7: The Derivative as a Function
Lesson 7: The Derivative as a FunctionLesson 7: The Derivative as a Function
Lesson 7: The Derivative as a Function
 
Lesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential FunctionsLesson 2: A Catalog of Essential Functions
Lesson 2: A Catalog of Essential Functions
 
Important Questions of fourier series with theoretical study Engg. Mathem...
Important Questions  of  fourier series with theoretical study   Engg. Mathem...Important Questions  of  fourier series with theoretical study   Engg. Mathem...
Important Questions of fourier series with theoretical study Engg. Mathem...
 
Seismic data processing lecture 3
Seismic data processing lecture 3Seismic data processing lecture 3
Seismic data processing lecture 3
 
Lesson 1: Functions
Lesson 1: FunctionsLesson 1: Functions
Lesson 1: Functions
 
Jokyokai20111124
Jokyokai20111124Jokyokai20111124
Jokyokai20111124
 
Lesson 19: The Mean Value Theorem (Section 021 slides)
Lesson 19: The Mean Value Theorem (Section 021 slides)Lesson 19: The Mean Value Theorem (Section 021 slides)
Lesson 19: The Mean Value Theorem (Section 021 slides)
 
Lesson 19: Curve Sketching
Lesson 19: Curve SketchingLesson 19: Curve Sketching
Lesson 19: Curve Sketching
 

Mehr von Matthew Leingang

Mehr von Matthew Leingang (20)

Making Lesson Plans
Making Lesson PlansMaking Lesson Plans
Making Lesson Plans
 
Streamlining assessment, feedback, and archival with auto-multiple-choice
Streamlining assessment, feedback, and archival with auto-multiple-choiceStreamlining assessment, feedback, and archival with auto-multiple-choice
Streamlining assessment, feedback, and archival with auto-multiple-choice
 
Electronic Grading of Paper Assessments
Electronic Grading of Paper AssessmentsElectronic Grading of Paper Assessments
Electronic Grading of Paper Assessments
 
Lesson 27: Integration by Substitution (slides)
Lesson 27: Integration by Substitution (slides)Lesson 27: Integration by Substitution (slides)
Lesson 27: Integration by Substitution (slides)
 
Lesson 26: The Fundamental Theorem of Calculus (slides)
Lesson 26: The Fundamental Theorem of Calculus (slides)Lesson 26: The Fundamental Theorem of Calculus (slides)
Lesson 26: The Fundamental Theorem of Calculus (slides)
 
Lesson 26: The Fundamental Theorem of Calculus (slides)
Lesson 26: The Fundamental Theorem of Calculus (slides)Lesson 26: The Fundamental Theorem of Calculus (slides)
Lesson 26: The Fundamental Theorem of Calculus (slides)
 
Lesson 27: Integration by Substitution (handout)
Lesson 27: Integration by Substitution (handout)Lesson 27: Integration by Substitution (handout)
Lesson 27: Integration by Substitution (handout)
 
Lesson 26: The Fundamental Theorem of Calculus (handout)
Lesson 26: The Fundamental Theorem of Calculus (handout)Lesson 26: The Fundamental Theorem of Calculus (handout)
Lesson 26: The Fundamental Theorem of Calculus (handout)
 
Lesson 25: Evaluating Definite Integrals (slides)
Lesson 25: Evaluating Definite Integrals (slides)Lesson 25: Evaluating Definite Integrals (slides)
Lesson 25: Evaluating Definite Integrals (slides)
 
Lesson 24: Areas and Distances, The Definite Integral (handout)
Lesson 24: Areas and Distances, The Definite Integral (handout)Lesson 24: Areas and Distances, The Definite Integral (handout)
Lesson 24: Areas and Distances, The Definite Integral (handout)
 
Lesson 24: Areas and Distances, The Definite Integral (slides)
Lesson 24: Areas and Distances, The Definite Integral (slides)Lesson 24: Areas and Distances, The Definite Integral (slides)
Lesson 24: Areas and Distances, The Definite Integral (slides)
 
Lesson 23: Antiderivatives (slides)
Lesson 23: Antiderivatives (slides)Lesson 23: Antiderivatives (slides)
Lesson 23: Antiderivatives (slides)
 
Lesson 23: Antiderivatives (slides)
Lesson 23: Antiderivatives (slides)Lesson 23: Antiderivatives (slides)
Lesson 23: Antiderivatives (slides)
 
Lesson 22: Optimization Problems (slides)
Lesson 22: Optimization Problems (slides)Lesson 22: Optimization Problems (slides)
Lesson 22: Optimization Problems (slides)
 
Lesson 22: Optimization Problems (handout)
Lesson 22: Optimization Problems (handout)Lesson 22: Optimization Problems (handout)
Lesson 22: Optimization Problems (handout)
 
Lesson 21: Curve Sketching (slides)
Lesson 21: Curve Sketching (slides)Lesson 21: Curve Sketching (slides)
Lesson 21: Curve Sketching (slides)
 
Lesson 21: Curve Sketching (handout)
Lesson 21: Curve Sketching (handout)Lesson 21: Curve Sketching (handout)
Lesson 21: Curve Sketching (handout)
 
Lesson 20: Derivatives and the Shapes of Curves (slides)
Lesson 20: Derivatives and the Shapes of Curves (slides)Lesson 20: Derivatives and the Shapes of Curves (slides)
Lesson 20: Derivatives and the Shapes of Curves (slides)
 
Lesson 19: The Mean Value Theorem (slides)
Lesson 19: The Mean Value Theorem (slides)Lesson 19: The Mean Value Theorem (slides)
Lesson 19: The Mean Value Theorem (slides)
 
Lesson 18: Maximum and Minimum Values (slides)
Lesson 18: Maximum and Minimum Values (slides)Lesson 18: Maximum and Minimum Values (slides)
Lesson 18: Maximum and Minimum Values (slides)
 

Lesson 12: Linear Approximation and Differentials (Section 41 slides)

  • 1. Section 2.8 Linear Approximation and Differentials V63.0121.041, Calculus I New York University October 13, 2010 Announcements Quiz 2 in recitation this week on §§1.5, 1.6, 2.1, 2.2 Midterm on §§1.1–2.5 . . . . . .
  • 2. Announcements Quiz 2 in recitation this week on §§1.5, 1.6, 2.1, 2.2 Midterm on §§1.1–2.5 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 2 / 27
  • 3. Objectives Use tangent lines to make linear approximations to a function. Given a function and a point in the domain, compute the linearization of the function at that point. Use linearization to approximate values of functions Given a function, compute the differential of that function Use the differential notation to estimate error in linear approximations. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 3 / 27
  • 4. Outline The linear approximation of a function near a point Examples Questions Differentials Using differentials to estimate error Advanced Examples . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 4 / 27
  • 5. The Big Idea Question Let f be differentiable at a. What linear function best approximates f near a? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 5 / 27
  • 6. The Big Idea Question Let f be differentiable at a. What linear function best approximates f near a? Answer The tangent line, of course! . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 5 / 27
  • 7. The Big Idea Question Let f be differentiable at a. What linear function best approximates f near a? Answer The tangent line, of course! Question What is the equation for the line tangent to y = f(x) at (a, f(a))? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 5 / 27
  • 8. The Big Idea Question Let f be differentiable at a. What linear function best approximates f near a? Answer The tangent line, of course! Question What is the equation for the line tangent to y = f(x) at (a, f(a))? Answer L(x) = f(a) + f′ (a)(x − a) . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 5 / 27
  • 9. The tangent line is a linear approximation y . L(x) = f(a) + f′ (a)(x − a) is a decent approximation to f L . (x) . near a. f .(x) . f .(a) . . x−a . x . a . x . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 6 / 27
  • 10. The tangent line is a linear approximation y . L(x) = f(a) + f′ (a)(x − a) is a decent approximation to f L . (x) . near a. f .(x) . How decent? The closer x is to a, the better the approxmation f .(a) . . x−a L(x) is to f(x) . x . a . x . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 6 / 27
  • 11. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 12. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) If f(x) = sin x, then f(0) = 0 and f′ (0) = 1. So the linear approximation near 0 is L(x) = 0 + 1 · x = x. Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 13. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 and f′ (0) = 1. f′ π = . 3 So the linear approximation near 0 is L(x) = 0 + 1 · x = x. Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 14. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = . 3 So the linear approximation near 0 is L(x) = 0 + 1 · x = x. Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 15. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 So the linear approximation near 0 is L(x) = 0 + 1 · x = x. Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 16. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 So the linear approximation So L(x) = near 0 is L(x) = 0 + 1 · x = x. Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 17. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 √ So the linear approximation 3 1( π) So L(x) = + x− near 0 is L(x) = 0 + 1 · x = x. 2 2 3 Thus ( ) 61π 61π sin ≈ ≈ 1.06465 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 18. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 √ So the linear approximation 3 1( π) So L(x) = + x− near 0 is L(x) = 0 + 1 · x = x. 2 2 3 Thus Thus ( ) ( ) 61π 61π 61π sin ≈ ≈ 1.06465 sin ≈ 180 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 19. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 √ So the linear approximation 3 1( π) So L(x) = + x− near 0 is L(x) = 0 + 1 · x = x. 2 2 3 Thus Thus ( ) ( ) 61π 61π 61π sin ≈ ≈ 1.06465 sin ≈ 0.87475 180 180 180 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 20. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 √ So the linear approximation 3 1( π) So L(x) = + x− near 0 is L(x) = 0 + 1 · x = x. 2 2 3 Thus Thus ( ) ( ) 61π 61π 61π sin ≈ ≈ 1.06465 sin ≈ 0.87475 180 180 180 Calculator check: sin(61◦ ) ≈ . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 21. Example . Example Estimate sin(61◦ ) = sin(61π/180) by using a linear approximation (i) about a = 0 (ii) about a = 60◦ = π/3. Solution (i) Solution (ii) (π) √ 3 We have f = and If f(x) = sin x, then f(0) = 0 ( ) 3 2 and f′ (0) = 1. f′ π = 1 . 3 2 √ So the linear approximation 3 1( π) So L(x) = + x− near 0 is L(x) = 0 + 1 · x = x. 2 2 3 Thus Thus ( ) ( ) 61π 61π 61π sin ≈ ≈ 1.06465 sin ≈ 0.87475 180 180 180 Calculator check: sin(61◦ ) ≈ 0.87462. . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 7 / 27
  • 22. Illustration y . y . = sin x . x . . 1◦ 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 8 / 27
  • 23. Illustration y . y . = L1 (x) = x y . = sin x . x . 0 . . 1◦ 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 8 / 27
  • 24. Illustration y . y . = L1 (x) = x b . ig difference! y . = sin x . x . 0 . . 1◦ 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 8 / 27
  • 25. Illustration y . y . = L1 (x) = x √ ( ) y . = L2 (x) = 2 3 + 1 2 x− π 3 y . = sin x . . . x . 0 . . π/3 . 1◦ 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 8 / 27
  • 26. Illustration y . y . = L1 (x) = x √ ( ) y . = L2 (x) = 2 3 + 1 2 x− π 3 y . = sin x . . ery little difference! v . . x . 0 . . π/3 . 1◦ 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 8 / 27
  • 27. Another Example Example √ Estimate 10 using the fact that 10 = 9 + 1. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 9 / 27
  • 28. Another Example Example √ Estimate 10 using the fact that 10 = 9 + 1. Solution √ The key step is to use a linear approximation to f(x) = √ x near a = 9 to estimate f(10) = 10. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 9 / 27
  • 29. Another Example Example √ Estimate 10 using the fact that 10 = 9 + 1. Solution √ The key step is to use a linear approximation to f(x) = √ x near a = 9 to estimate f(10) = 10. √ √ d√ 10 ≈ 9 + x (1) dx x=9 1 19 =3+ (1) = ≈ 3.167 2·3 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 9 / 27
  • 30. Another Example Example √ Estimate 10 using the fact that 10 = 9 + 1. Solution √ The key step is to use a linear approximation to f(x) = √ x near a = 9 to estimate f(10) = 10. √ √ d√ 10 ≈ 9 + x (1) dx x=9 1 19 =3+ (1) = ≈ 3.167 2·3 6 ( )2 19 Check: = 6 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 9 / 27
  • 31. Another Example Example √ Estimate 10 using the fact that 10 = 9 + 1. Solution √ The key step is to use a linear approximation to f(x) = √ x near a = 9 to estimate f(10) = 10. √ √ d√ 10 ≈ 9 + x (1) dx x=9 1 19 =3+ (1) = ≈ 3.167 2·3 6 ( )2 19 361 Check: = . 6 36 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 9 / 27
  • 32. Dividing without dividing? Example Suppose I have an irrational fear of division and need to estimate 577 ÷ 408. I write 577 1 1 1 = 1 + 169 = 1 + 169 × × . 408 408 4 102 1 But still I have to find . 102 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 10 / 27
  • 33. Dividing without dividing? Example Suppose I have an irrational fear of division and need to estimate 577 ÷ 408. I write 577 1 1 1 = 1 + 169 = 1 + 169 × × . 408 408 4 102 1 But still I have to find . 102 Solution 1 Let f(x) = . We know f(100) and we want to estimate f(102). x 1 1 f(102) ≈ f(100) + f′ (100)(2) = − (2) = 0.0098 100 1002 577 =⇒ ≈ 1.41405 408 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 10 / 27
  • 34. Questions Example Suppose we are traveling in a car and at noon our speed is 50 mi/hr. How far will we have traveled by 2:00pm? by 3:00pm? By midnight? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 11 / 27
  • 35. Answers Example Suppose we are traveling in a car and at noon our speed is 50 mi/hr. How far will we have traveled by 2:00pm? by 3:00pm? By midnight? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 12 / 27
  • 36. Answers Example Suppose we are traveling in a car and at noon our speed is 50 mi/hr. How far will we have traveled by 2:00pm? by 3:00pm? By midnight? Answer 100 mi 150 mi 600 mi (?) (Is it reasonable to assume 12 hours at the same speed?) . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 12 / 27
  • 37. Questions Example Suppose we are traveling in a car and at noon our speed is 50 mi/hr. How far will we have traveled by 2:00pm? by 3:00pm? By midnight? Example Suppose our factory makes MP3 players and the marginal cost is currently $50/lot. How much will it cost to make 2 more lots? 3 more lots? 12 more lots? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 13 / 27
  • 38. Answers Example Suppose our factory makes MP3 players and the marginal cost is currently $50/lot. How much will it cost to make 2 more lots? 3 more lots? 12 more lots? Answer $100 $150 $600 (?) . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 14 / 27
  • 39. Questions Example Suppose we are traveling in a car and at noon our speed is 50 mi/hr. How far will we have traveled by 2:00pm? by 3:00pm? By midnight? Example Suppose our factory makes MP3 players and the marginal cost is currently $50/lot. How much will it cost to make 2 more lots? 3 more lots? 12 more lots? Example Suppose a line goes through the point (x0 , y0 ) and has slope m. If the point is moved horizontally by dx, while staying on the line, what is the corresponding vertical movement? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 15 / 27
  • 40. Answers Example Suppose a line goes through the point (x0 , y0 ) and has slope m. If the point is moved horizontally by dx, while staying on the line, what is the corresponding vertical movement? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 16 / 27
  • 41. Answers Example Suppose a line goes through the point (x0 , y0 ) and has slope m. If the point is moved horizontally by dx, while staying on the line, what is the corresponding vertical movement? Answer The slope of the line is rise m= run We are given a “run” of dx, so the corresponding “rise” is m dx. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 16 / 27
  • 42. Outline The linear approximation of a function near a point Examples Questions Differentials Using differentials to estimate error Advanced Examples . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 17 / 27
  • 43. Differentials are another way to express derivatives f(x + ∆x) − f(x) ≈ f′ (x) ∆x y . ∆y dy Rename ∆x = dx, so we can write this as . ∆y ≈ dy = f′ (x)dx. . dy . ∆y And this looks a lot like the . . dx = ∆x Leibniz-Newton identity dy . = f′ (x) x . dx x x . . + ∆x . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 18 / 27
  • 44. Differentials are another way to express derivatives f(x + ∆x) − f(x) ≈ f′ (x) ∆x y . ∆y dy Rename ∆x = dx, so we can write this as . ∆y ≈ dy = f′ (x)dx. . dy . ∆y And this looks a lot like the . . dx = ∆x Leibniz-Newton identity dy . = f′ (x) x . dx x x . . + ∆x Linear approximation means ∆y ≈ dy = f′ (x0 ) dx near x0 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 18 / 27
  • 45. Using differentials to estimate error y . If y = f(x), x0 and ∆x is known, and an estimate of ∆y is desired: Approximate: ∆y ≈ dy . Differentiate: dy = f′ (x) dx . ∆y . dy Evaluate at x = x0 and . . dx = ∆x dx = ∆x. . x . x x . . + ∆x . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 19 / 27
  • 46. Example A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting machine will cut a rectangle whose width is exactly half its length, but the length is prone to errors. If the length is off by 1 in, how bad can the area of the sheet be off by? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 20 / 27
  • 47. Example A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting machine will cut a rectangle whose width is exactly half its length, but the length is prone to errors. If the length is off by 1 in, how bad can the area of the sheet be off by? Solution 1 2 Write A(ℓ) = ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in. 2 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 20 / 27
  • 48. Example A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting machine will cut a rectangle whose width is exactly half its length, but the length is prone to errors. If the length is off by 1 in, how bad can the area of the sheet be off by? Solution 1 2 Write A(ℓ) = ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in. 2 ( ) 97 9409 9409 (I) A(ℓ + ∆ℓ) = A = So ∆A = − 32 ≈ 0.6701. 12 288 288 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 20 / 27
  • 49. Example A sheet of plywood measures 8 ft × 4 ft. Suppose our plywood-cutting machine will cut a rectangle whose width is exactly half its length, but the length is prone to errors. If the length is off by 1 in, how bad can the area of the sheet be off by? Solution 1 2 Write A(ℓ) = ℓ . We want to know ∆A when ℓ = 8 ft and ∆ℓ = 1 in. 2 ( ) 97 9409 9409 (I) A(ℓ + ∆ℓ) = A = So ∆A = − 32 ≈ 0.6701. 12 288 288 dA (II) = ℓ, so dA = ℓ dℓ, which should be a good estimate for ∆ℓ. dℓ When ℓ = 8 and dℓ = 12 , we have dA = 12 = 2 ≈ 0.667. So we 1 8 3 get estimates close to the hundredth of a square foot. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 20 / 27
  • 50. Why? Why use linear approximations dy when the actual difference ∆y is known? Linear approximation is quick and reliable. Finding ∆y exactly depends on the function. These examples are overly simple. See the “Advanced Examples” later. In real life, sometimes only f(a) and f′ (a) are known, and not the general f(x). . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 21 / 27
  • 51. Outline The linear approximation of a function near a point Examples Questions Differentials Using differentials to estimate error Advanced Examples . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 22 / 27
  • 52. Gravitation Pencils down! Example Drop a 1 kg ball off the roof of the Silver Center (50m high). We usually say that a falling object feels a force F = −mg from gravity. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 23 / 27
  • 53. Gravitation Pencils down! Example Drop a 1 kg ball off the roof of the Silver Center (50m high). We usually say that a falling object feels a force F = −mg from gravity. In fact, the force felt is GMm F(r) = − , r2 where M is the mass of the earth and r is the distance from the center of the earth to the object. G is a constant. GMm At r = re the force really is F(re ) = = −mg. r2 e What is the maximum error in replacing the actual force felt at the top of the building F(re + ∆r) by the force felt at ground level F(re )? The relative error? The percentage error? . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 23 / 27
  • 54. Gravitation Solution Solution We wonder if ∆F = F(re + ∆r) − F(re ) is small. Using a linear approximation, dF GMm ∆F ≈ dF = dr = 2 3 dr dr re re ( ) GMm dr ∆r = 2 = 2mg re re re ∆F ∆r The relative error is ≈ −2 F re re = 6378.1 km. If ∆r = 50 m, ∆F ∆r 50 ≈ −2 = −2 = −1.56 × 10−5 = −0.00156% F re 6378100 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 24 / 27
  • 55. Systematic linear approximation √ √ 2 is irrational, but 9/4 is rational and 9/4 is close to 2. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 25 / 27
  • 56. Systematic linear approximation √ √ 2 is irrational, but 9/4 is rational and 9/4 is close to 2. So √ √ √ 1 17 2 = 9/4 − 1/4 ≈ 9/4 + (−1/4) = 2(3/2) 12 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 25 / 27
  • 57. Systematic linear approximation √ √ 2 is irrational, but 9/4 is rational and 9/4 is close to 2. So √ √ √ 1 17 2 = 9/4 − 1/4 ≈ 9/4 + (−1/4) = 2(3/2) 12 This is a better approximation since (17/12)2 = 289/144 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 25 / 27
  • 58. Systematic linear approximation √ √ 2 is irrational, but 9/4 is rational and 9/4 is close to 2. So √ √ √ 1 17 2 = 9/4 − 1/4 ≈ 9/4 + (−1/4) = 2(3/2) 12 This is a better approximation since (17/12)2 = 289/144 Do it again! √ √ √ 1 2 = 289/144 − 1/144 ≈ 289/144 + (−1/144) = 577/408 2(17/12) ( )2 577 332, 929 1 Now = which is away from 2. 408 166, 464 166, 464 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 25 / 27
  • 59. Illustration of the previous example . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 60. Illustration of the previous example . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 61. Illustration of the previous example . 2 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 62. Illustration of the previous example . . 2 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 63. Illustration of the previous example . . 2 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 64. Illustration of the previous example . 2, 17 ) ( 12 . . . 2 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 65. Illustration of the previous example . 2, 17 ) ( 12 . . . 2 . . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 66. Illustration of the previous example . . 2, 17/12) ( . . 4, 3) (9 2 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 67. Illustration of the previous example . . 2, 17/12) ( .. ( . 9, 3) ( )4 2 289 17 . 144 , 12 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 68. Illustration of the previous example . . 2, 17/12) ( .. ( . 9, 3) ( ( 577 ) )4 2 . 2, 408 289 17 . 144 , 12 . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 26 / 27
  • 69. Summary Linear approximation: If f is differentiable at a, the best linear approximation to f near a is given by Lf,a (x) = f(a) + f′ (a)(x − a) Differentials: If f is differentiable at x, a good approximation to ∆y = f(x + ∆x) − f(x) is dy dy ∆y ≈ dy = · dx = · ∆x dx dx Don’t buy plywood from me. . . . . . . V63.0121.041, Calculus I (NYU) Section 2.8 Linear Approximation and Differentials October 13, 2010 27 / 27