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ECE6451-1
The Maxwell-Boltzmann Distribution
Brennan 5.4
Lecture prepared by Melanie Hill
ECE6451-2
Maxwell-Boltzmann Distribution
Scottish physicist James Clerk Maxwell developed his kinetic theory of gases in 1859.
Maxwell determined the distribution of velocities among the molecules of a gas. Maxwell's
finding was later generalized in 1871 by a German physicist, Ludwig Boltzmann, to
express the distribution of energies among the molecules.
Maxwell made four assumptions…
[1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004
[2] http://www.hk-phy.org/contextual/heat/tep/trans01_e.html
Maxwell pictured the gas to consist of
billions of molecules moving rapidly
at random, colliding with each other
and the walls of the container.
This was qualitatively consistent with
the physical properties of gases, if we
accept the notion that raising the
temperature causes the molecules to
move faster and collide with the walls
of the container more frequently.[1]
[2]
ECE6451-3
The diameter of the molecules
are much smaller than the distance
between them
Maxwell-Boltzmann Distribution
Maxwell’s
Four Assumptions[1]
x
D D
The collisions
between molecules
conserve energy
The molecules move
between collisions without
interacting as a constant
speed in a straight line
The positions and velocities
of the molecules are
INITIALLY AT RANDOM
Great
insight!
[1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004
ECE6451-4
Maxwell-Boltzmann Distribution
By making these assumptions, Maxwell could compute the probability that a molecule
chosen at random would have a particular velocity.
This set of curves is called the Maxwell
Distribution. It provides useful
information about the billions and
billions of molecules within a system;
when the motion of an individual
molecule can’t be calculated in
practice. [1]
We will derive the Maxwell-Boltzmann
Distribution, which will provide useful
information about the energy.
[1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004
[1]
Raising the temperature causes
the curve to skew to the right,
increasing the most probable
velocity.
ECE6451-5
Maxwell-Boltzmann Distribution
Why use statistical mechanics to predict molecule behavior? Why not just
calculate the motion of the molecules exactly?
Even though we are discussing classical physics, there exists a degree of
“uncertainty” with respect to the fact that the motion of every single particle
at all times cannot be determined in practice in any large system.
Even if we were only dealing with one mole of gas, we would still have to
determine characteristics of 6x1023 molecules!!
Maxwell’s theory was based on statistical averages to see if the macrostates,
(i.e. measurable, observable) could be predicted from the microstates.
ECE6451-6
Maxwell-Boltzmann Distribution
In Section 5.3, it was determined that the thermal equilibrium is established
when the temperatures of the subsystems are equal. So…
What is the nature of the equilibrium distribution for a system of N non-
interacting gas particles?
The equilibrium configuration corresponds to the most probable (most likely)
configuration of the system.
Consider the simplest case, a system of N non-interacting classical gas
particles.
– Classical system:
• there are no restrictions on how many particles can be put into any one state
simultaneously
• the particles are distinguishable, i.e. each particle is labeled for all time
First, we’ll need to determine the number of microstates within any given
configuration, i.e. the number of ways in which N objects can be arranged
into n distinct groups, also called the Multiplicity Function.
ECE6451-7
Maxwell-Boltzmann Distribution
The Multiplicity Function - determine the number of ways in which N objects
can be arranged into n containers.
Consider the first twelve letters of the alphabet:
a b c d e f g h i j k l
Arrange the letters into 3 containers without replacement. Container 1 holds 3
letters, Container 2 holds 4 letters, and Container 3 holds 5 letters.
| _ _ _ | | _ _ _ _ | | _ _ _ _ _ |
For the 1st slot, there are 12 possibilities. | c _ _ | | _ _ _ _ | | _ _ _ _ _ |
For the 2nd slot, there are 11 possibilities. | c h _ | | _ _ _ _ | | _ _ _ _ _ |
For the 3rd slot, there are 10 possibilities. | c h k | | _ _ _ _ | | _ _ _ _ _ |
etc…
There are 12! possible arrangements if the containers are ignored.
ECE6451-8
Maxwell-Boltzmann Distribution
(cont.) The Multiplicity Function - determine the number of ways in which N objects can
be arranged into n containers
Since we care about the containers but we don’t care about the order of the letters within
each container, we divide out the number of arrangements within each given
container, resulting in:
720
,
27
!
5
!
4
!
3
!
12
=
⋅
⋅
There are 27,720 ways of partitioning
12 letters into the 3 containers
The Multiplicity
Function:
In general, the number of distinct arrangements of N particles into n groups containing
N1, N2, …, Ni, …, Nn objects becomes:
!
...
!
...
!
!
!
2
1 n
i N
N
N
N
N
⋅
⋅
⋅
⋅
⋅
∏
=
=
⋅
⋅
⋅
⋅
⋅
= n
i
i
n
i
n
i
N
N
N
N
N
N
N
N
N
N
N
Q
1
2
1
2
1
!
!
!
...
!
...
!
!
!
)
,...,
,...,
,
(
Where Ni is the number of
objects in container i
ECE6451-9
Maxwell-Boltzmann Distribution
Physically, each container corresponds to a state in which each particle can be put.
• In the classical case, there are no restrictions on how many particles that can be
put into any one container or state
• See Section 5.7 for the quantum case where there are restrictions for some
particles
The states are classified in terms of
their energy, Ei, and degeneracy, gi
Think of the system as n containers with gi subcontainers.
So, how can we arrange Ni particles in these gi
subcontainers?
Each level has gi degenerate states into
which Ni particles can be arranged
There are n
independent levels
Ei
Ei+1
Ei-1
Degenerate states are different states that
have the same energy level. The number
of states available is known as the
degeneracy of that level.
ECE6451-10
Maxwell-Boltzmann Distribution
Since we are dealing with the classical case:
• there are no restrictions on how many particles can be put into any one subcontainer
or state simultaneously
• the particles are distinguishable, i.e. each particle is labeled for all time
So, how many arrangements of Ni particles in
these gi subcontainers are possible?
Consider an example where we have 3 particles
and 2 subcontainers:
R
G
B
3 particles 2 subcontainers
n containers with gi subcontainers.
· · ·
ECE6451-11
Maxwell-Boltzmann Distribution
(cont.) How many arrangements of Ni particles in these gi subcontainers are possible?
R
G
B
R
G B
R
G
B R
G
B
R
G
B
R
G B
R
G
B
R
G
B
There are 8 possible arrangements, or 23
In general, the possible arrangements of Ni
particles into gi subcontainers is:
i
N
i
g
Therefore, if our system has a particular state that has a particular degeneracy, there is
an additional multiplicity of i
N
i
g for that particular state.
ECE6451-12
Maxwell-Boltzmann Distribution
(cont.) Therefore, the total Multiplicity Function for a collection of classical particles is:
Constraint 1 implies:
There are two physical constraints on our classical system:
1. the total number of particles must be conserved
2. the total energy of the system must be conserved
where U is the total energy for the system
∏
∏ =
=












=
n
i
N
i
n
i
i
n
i
i
g
N
N
N
N
N
N
Q
1
1
2
1
!
!
)
,...,
,...,
,
(
N
N
n
i
i =
= ∑
=1
φ
Constraint 2 implies:
U
N
E
n
i
i
i =
= ∑
=1
ψ
The equilibrium configuration corresponds to the most probable (most likely)
configuration of the system, i.e. the configuration with the greatest multiplicity! To
find the greatest multiplicity, we need to maximize Q subject to constraints.
Constant
Constant
ECE6451-13
Maxwell-Boltzmann Distribution
From previous slide:
∑
∑ =
=
−
+
=
n
i
i
n
i
i
i N
g
N
N
Q
1
1
!
ln
ln
!
ln
ln
∏
∏ =
=












=
n
i
N
i
n
i
i
n
i
i
g
N
N
N
N
N
N
Q
1
1
2
1
!
!
)
,...,
,...,
,
(
This equation will be easier to deal with if we take the logarithm of both sides:
x
x
x
x −
≈ ln
!
ln
Applying Stirling’s approximation, for large x:
∑
∑
∑ =
=
=
+
−
+
−
=
n
i
i
n
i
i
i
n
i
i
i N
N
N
g
N
N
N
N
Q
1
1
1
ln
ln
ln
ln
0
ln =
∂
∂
−
∂
∂
+
∂
∂
j
j
j N
N
Q
N
ψ
β
φ
α
In order to maximize, we need to make use of Lagrange multipliers and Constraints 1
and 2:
Almost exact
because we’re
dealing with very
large x, 1023 particles!
The derivatives of the 1st and 2nd constraints are zero
because the constraints are equal to constants
All we are doing is adding and subtracting
constants multiplied by zero!
ECE6451-14
Maxwell-Boltzmann Distribution
From previous slide:
0
ln =
∂
∂
−
∂
∂
+
∂
∂
j
j
j N
N
Q
N
ψ
β
φ
α
Substituting in ln Q and Constraints 1 and 2:
0
1
1
ln
1
ln =
−
+
+








⋅
+
⋅
− j
j
j
j
j E
N
N
N
g β
α
Taking the derivative, noting that N is constant and the only terms that are nonzero are
when i = j:
0
ln
ln
ln
1
1
1 1
1
=






∂
∂
−






∂
∂
+






+
−
+
−
∂
∂
∑
∑
∑ ∑
∑ =
=
= =
=
n
i
i
i
j
n
i
i
j
n
i
n
i
i
n
i
i
i
i
i
j
N
E
N
N
N
N
N
N
g
N
N
N
N
N
β
α
∑
∑
∑ =
=
=
+
−
+
−
=
n
i
i
n
i
i
i
n
i
i
i N
N
N
g
N
N
N
N
Q
1
1
1
ln
ln
ln
ln
0
ln
ln =
−
+
− j
j
j E
N
g β
α
ECE6451-15
Maxwell-Boltzmann Distribution
From previous slide:
To find β, we need to determine the total number of particles, N, in the system and the
total energy, E, of the system.
If the states are closely spaced in energy, they form a quasi-continuum and the total
number of particles, N, is given by:
Where D(E) is the Density of States Function found in Section 5.1
∫
∞
=
0
)
(
)
( dE
E
D
E
f
N
0
ln
ln =
−
+
− j
j
j E
N
g β
α
j
j
j
E
g
N
β
α −
=
ln
j
E
j
j
j e
g
N
E
f
β
α −
=
=
)
(
What are α and β?
ECE6451-16
Maxwell-Boltzmann Distribution
From previous slide:
Using the standard integral:
∫
∞
+
− +
Γ
=
0
1
)
1
(
n
ax
n
a
n
dx
e
x
2
3
2
3
2
)
(
π
h
E
m
E
D =
E
j
j
e
g
N
E
f β
α −
=
=
)
(
∫
∞
=
0
)
(
)
( dE
E
D
E
f
N
∫
∞
−
=
0
2
3
2
3
2
dE
e
E
e
m
N E
β
α
π
h
2
3
2
3
2
3
2
3
2
β
π
α






Γ
= e
m
N
h
ECE6451-17
Maxwell-Boltzmann Distribution
The total energy, E, of the system can be found by:
Using the standard integral again:
∫
∞
+
− +
Γ
=
0
1
)
1
(
n
ax
n
a
n
dx
e
x
2
3
2
3
2
)
(
π
h
E
m
E
D =
E
j
j
e
g
N
E
f β
α −
=
=
)
(
∫
∞
=
0
)
(
)
( dE
E
D
E
Ef
E
∫
∞
−
=
0
2
3
2
3
2
3
2
dE
e
E
e
m
E E
β
α
π
h
2
5
2
3
2
3
2
5
2
β
π
α






Γ
= e
m
E
h
ECE6451-18
Maxwell-Boltzmann Distribution
The average energy per particle is given as:
Where kB is the Boltzmann constant.
Equating the average energy per particle with the ratio of our equations for E and N:
T
k
N
E
B
2
3
=
N
E
T
k
e
m
e
m
N
E
B =
=






Γ






Γ
=
2
3
2
3
2
2
5
2
2
3
2
3
2
3
2
5
2
3
2
3
β
π
β
π
α
α
h
h
K
eV
kB
5
10
6175
.
8 −
×
=
T
kB
2
3
2
3
2
5
2
3
2
5
=






Γ
⋅






Γ
β
β
ECE6451-19
Maxwell-Boltzmann Distribution
From previous slide:
T
kB
2
3
2
3
2
5
2
3
2
5
=






Γ
⋅






Γ
β
β
T
kB
2
3
2
3
2
3
2
3
=






Γ
⋅






Γ
⋅
β
T
kB
2
3
2
3
=
β
T
kB
1
=
β
( ) ( )
z
z
z Γ
=
+
Γ 1
Use the relationship[1]:
[1] http://mathworld.wolfram.com/GammaFunction.html eq. 37
ECE6451-20
Maxwell-Boltzmann Distribution
Now we have β but we still need α. α will be derived in Section 5.7.
T
kB
µ
α =
Where µ is the chemical potential. In Section 5.8, we will find out that the chemical
potential, µ, is exactly equal to the Fermi Energy, EF — Leaving us with an α of:
(Eq. 5.7.26)
T
k
E
B
F
=
α
From previous slides:
T
kB
1
=
β
j
E
j
j
j e
g
N
E
f
β
α −
=
=
)
(
T
k
E
E
j
j
j
B
j
F
e
g
N
E
f
−
=
=
)
(
Substituting α and β into f(Ej):
ECE6451-21
Maxwell-Boltzmann Distribution
From previous slide:
Maxwell-Boltzmann
Distribution
Reversing terms in the numerator of the exponent:
This distribution gives the number of particles in the jth state, where the jth state has a
degeneracy, gj.
If we want to find the probability of finding the particle in the jth state, we need to
normalize. We’ll start by dividing the number of particles in the jth state, Nj, by the
total number of particles, N.
Using Constraint 1 and f(E):
∑
∑ =
−
=
=
=
n
j
T
k
E
j
n
j
j
B
j
e
g
e
N
N
1
1
α
T
k
E
E
j
j
j
B
j
F
e
g
N
E
f
−
=
=
)
(
( )
T
k
E
E
j
j
j
B
F
j
e
g
N
E
f
−
−
=
=
)
(
It’s intuitive! For a given
temperature, the chance of higher
energy states being occupied
decreases exponentially.
ECE6451-22
Maxwell-Boltzmann Distribution
From previous slide:
Solving for eα:
Substituting eα into f(Ej):
∑
∑ =
−
=
=
=
n
j
T
k
E
j
n
j
j
B
j
e
g
e
N
N
1
1
α
∑
=
−
= n
j
T
k
E
j
B
j
e
g
N
e
1
α
T
k
E
j
j
j
B
j
e
e
g
N
E
f
−
=
= α
)
(
∑
=
−
−
= n
j
T
k
E
j
T
k
E
j
j
B
j
B
j
e
g
e
Ng
N
1
Normalizing:
∑
=
−
−
= n
j
T
k
E
j
T
k
E
j
j
B
j
B
j
e
g
e
g
N
N
1
ECE6451-23
Maxwell-Boltzmann Distribution
From previous slide:
This normalized distribution is the probability, Pj, of finding the particle in the jth state
with energy Ej:
Since j is just a dummy index, the probability of finding of a particle having an energy Er
is:
∑
=
−
−
= n
j
T
k
E
j
T
k
E
j
j
B
j
B
j
e
g
e
g
N
N
1
∑
=
−
−
=
= n
j
T
k
E
j
T
k
E
j
j
j
B
j
B
j
e
g
e
g
N
N
P
1
∑
=
−
−
= n
j
T
k
E
j
T
k
E
r
r
B
j
B
r
e
g
e
g
P
1
ECE6451-24
Maxwell-Boltzmann Distribution
If the degeneracy factor is 1, i.e. no repeatable arrangements, the probability becomes:
If we want to find out the mean value of a physical observable, y, we can make use of
the following equation derived in Chapter 1:
For example, the mean energy of a system can be determined by:
∑
∑
=
r
r
r
r
r
P
y
P
y
∑
=
−
−
= n
j
T
k
E
T
k
E
r
B
j
B
r
e
e
P
1
∑
∑
−
−
=
r
T
k
E
r
T
k
E
r
B
r
B
r
e
e
E
E
ECE6451-25
∑
∑
−
−
=
r
T
k
E
r
T
k
E
r
B
r
B
r
e
e
E
E
Maxwell-Boltzmann Distribution
From previous slide:
The classical partition function:
∑
−
=
r
T
k
E
B
r
e
Z
This denominator occurs very often—
every time a mean value is calculated in
the Maxwell-Boltzmann Distribution.
Since it occurs so often, it is given a
special name, the classical Partition
Function, Z.
We can use the classical partition function to easily calculate the mean value of the
energy.
First, we need to note the following relationships:
∑
∑ −
−
∂
∂
−
=
r
E
r
E
r
r
r
e
e
E β
β
β
∑ −
=
r
Er
e
Z β
T
kB
1
=
β
; ⇒
Z
e
e
r
E
r
E r
r
β
β
β
β
β
∂
∂
−
=






∂
∂
−
=
∂
∂
− ∑
∑ −
−
ECE6451-26
Z
Z
E
β
∂
∂
−
=
Maxwell-Boltzmann Distribution
From previous slide:
Substituting into the mean energy equation:
Z
e
E
r
E
r
r
β
β
∂
∂
−
=
∑ −
∑ −
=
r
Er
e
Z β
Z
Z
E
β
∂
∂






−
=
1
∑
∑
−
−
=
r
T
k
E
r
T
k
E
r
B
r
B
r
e
e
E
E
( )
Z
E ln
β
∂
∂
−
=
The mean energy equation
ECE6451-27
Maxwell-Boltzmann Distribution
Summarizing:
∑ −
=
r
Er
e
Z β
∑
∑
−
−
=
r
T
k
E
r
T
k
E
r
B
r
B
r
e
e
E
E
( )
Z
E ln
β
∂
∂
−
=
∑
=
−
−
= n
j
T
k
E
j
T
k
E
r
r
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ECE6451-28
Maxwell-Boltzmann Distribution
Summarizing:
( )
Z
E ln
β
∂
∂
−
=
• For a given temperature, the chance
of higher energy states being
occupied decreases exponentially
• The area under the curve, i.e. the
total number of molecules in the
system, does NOT change
• The most probable energy value is
at the peak of the curve, when
dP/dE = 0
• The average energy value is greater
than the most probable energy value
• If the temperature of the system is
increased, the most probable energy
and the average energy also
increase because the distribution
skews to the right BUT the area
under the curve remains the same
http://www.bustertests.co.uk/studies/kinetics-collision-theory-maxwell-boltzmann-distribution.php
∑
=
−
−
= n
j
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k
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Hill_5p4_MaxwellBoltzmannDistribution.pdf

  • 1. ECE6451-1 The Maxwell-Boltzmann Distribution Brennan 5.4 Lecture prepared by Melanie Hill
  • 2. ECE6451-2 Maxwell-Boltzmann Distribution Scottish physicist James Clerk Maxwell developed his kinetic theory of gases in 1859. Maxwell determined the distribution of velocities among the molecules of a gas. Maxwell's finding was later generalized in 1871 by a German physicist, Ludwig Boltzmann, to express the distribution of energies among the molecules. Maxwell made four assumptions… [1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004 [2] http://www.hk-phy.org/contextual/heat/tep/trans01_e.html Maxwell pictured the gas to consist of billions of molecules moving rapidly at random, colliding with each other and the walls of the container. This was qualitatively consistent with the physical properties of gases, if we accept the notion that raising the temperature causes the molecules to move faster and collide with the walls of the container more frequently.[1] [2]
  • 3. ECE6451-3 The diameter of the molecules are much smaller than the distance between them Maxwell-Boltzmann Distribution Maxwell’s Four Assumptions[1] x D D The collisions between molecules conserve energy The molecules move between collisions without interacting as a constant speed in a straight line The positions and velocities of the molecules are INITIALLY AT RANDOM Great insight! [1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004
  • 4. ECE6451-4 Maxwell-Boltzmann Distribution By making these assumptions, Maxwell could compute the probability that a molecule chosen at random would have a particular velocity. This set of curves is called the Maxwell Distribution. It provides useful information about the billions and billions of molecules within a system; when the motion of an individual molecule can’t be calculated in practice. [1] We will derive the Maxwell-Boltzmann Distribution, which will provide useful information about the energy. [1] McEnvoy, J.P. and Zarate, Oscar; “Introducing Quantum Theory;” 2004 [1] Raising the temperature causes the curve to skew to the right, increasing the most probable velocity.
  • 5. ECE6451-5 Maxwell-Boltzmann Distribution Why use statistical mechanics to predict molecule behavior? Why not just calculate the motion of the molecules exactly? Even though we are discussing classical physics, there exists a degree of “uncertainty” with respect to the fact that the motion of every single particle at all times cannot be determined in practice in any large system. Even if we were only dealing with one mole of gas, we would still have to determine characteristics of 6x1023 molecules!! Maxwell’s theory was based on statistical averages to see if the macrostates, (i.e. measurable, observable) could be predicted from the microstates.
  • 6. ECE6451-6 Maxwell-Boltzmann Distribution In Section 5.3, it was determined that the thermal equilibrium is established when the temperatures of the subsystems are equal. So… What is the nature of the equilibrium distribution for a system of N non- interacting gas particles? The equilibrium configuration corresponds to the most probable (most likely) configuration of the system. Consider the simplest case, a system of N non-interacting classical gas particles. – Classical system: • there are no restrictions on how many particles can be put into any one state simultaneously • the particles are distinguishable, i.e. each particle is labeled for all time First, we’ll need to determine the number of microstates within any given configuration, i.e. the number of ways in which N objects can be arranged into n distinct groups, also called the Multiplicity Function.
  • 7. ECE6451-7 Maxwell-Boltzmann Distribution The Multiplicity Function - determine the number of ways in which N objects can be arranged into n containers. Consider the first twelve letters of the alphabet: a b c d e f g h i j k l Arrange the letters into 3 containers without replacement. Container 1 holds 3 letters, Container 2 holds 4 letters, and Container 3 holds 5 letters. | _ _ _ | | _ _ _ _ | | _ _ _ _ _ | For the 1st slot, there are 12 possibilities. | c _ _ | | _ _ _ _ | | _ _ _ _ _ | For the 2nd slot, there are 11 possibilities. | c h _ | | _ _ _ _ | | _ _ _ _ _ | For the 3rd slot, there are 10 possibilities. | c h k | | _ _ _ _ | | _ _ _ _ _ | etc… There are 12! possible arrangements if the containers are ignored.
  • 8. ECE6451-8 Maxwell-Boltzmann Distribution (cont.) The Multiplicity Function - determine the number of ways in which N objects can be arranged into n containers Since we care about the containers but we don’t care about the order of the letters within each container, we divide out the number of arrangements within each given container, resulting in: 720 , 27 ! 5 ! 4 ! 3 ! 12 = ⋅ ⋅ There are 27,720 ways of partitioning 12 letters into the 3 containers The Multiplicity Function: In general, the number of distinct arrangements of N particles into n groups containing N1, N2, …, Ni, …, Nn objects becomes: ! ... ! ... ! ! ! 2 1 n i N N N N N ⋅ ⋅ ⋅ ⋅ ⋅ ∏ = = ⋅ ⋅ ⋅ ⋅ ⋅ = n i i n i n i N N N N N N N N N N N Q 1 2 1 2 1 ! ! ! ... ! ... ! ! ! ) ,..., ,..., , ( Where Ni is the number of objects in container i
  • 9. ECE6451-9 Maxwell-Boltzmann Distribution Physically, each container corresponds to a state in which each particle can be put. • In the classical case, there are no restrictions on how many particles that can be put into any one container or state • See Section 5.7 for the quantum case where there are restrictions for some particles The states are classified in terms of their energy, Ei, and degeneracy, gi Think of the system as n containers with gi subcontainers. So, how can we arrange Ni particles in these gi subcontainers? Each level has gi degenerate states into which Ni particles can be arranged There are n independent levels Ei Ei+1 Ei-1 Degenerate states are different states that have the same energy level. The number of states available is known as the degeneracy of that level.
  • 10. ECE6451-10 Maxwell-Boltzmann Distribution Since we are dealing with the classical case: • there are no restrictions on how many particles can be put into any one subcontainer or state simultaneously • the particles are distinguishable, i.e. each particle is labeled for all time So, how many arrangements of Ni particles in these gi subcontainers are possible? Consider an example where we have 3 particles and 2 subcontainers: R G B 3 particles 2 subcontainers n containers with gi subcontainers. · · ·
  • 11. ECE6451-11 Maxwell-Boltzmann Distribution (cont.) How many arrangements of Ni particles in these gi subcontainers are possible? R G B R G B R G B R G B R G B R G B R G B R G B There are 8 possible arrangements, or 23 In general, the possible arrangements of Ni particles into gi subcontainers is: i N i g Therefore, if our system has a particular state that has a particular degeneracy, there is an additional multiplicity of i N i g for that particular state.
  • 12. ECE6451-12 Maxwell-Boltzmann Distribution (cont.) Therefore, the total Multiplicity Function for a collection of classical particles is: Constraint 1 implies: There are two physical constraints on our classical system: 1. the total number of particles must be conserved 2. the total energy of the system must be conserved where U is the total energy for the system ∏ ∏ = =             = n i N i n i i n i i g N N N N N N Q 1 1 2 1 ! ! ) ,..., ,..., , ( N N n i i = = ∑ =1 φ Constraint 2 implies: U N E n i i i = = ∑ =1 ψ The equilibrium configuration corresponds to the most probable (most likely) configuration of the system, i.e. the configuration with the greatest multiplicity! To find the greatest multiplicity, we need to maximize Q subject to constraints. Constant Constant
  • 13. ECE6451-13 Maxwell-Boltzmann Distribution From previous slide: ∑ ∑ = = − + = n i i n i i i N g N N Q 1 1 ! ln ln ! ln ln ∏ ∏ = =             = n i N i n i i n i i g N N N N N N Q 1 1 2 1 ! ! ) ,..., ,..., , ( This equation will be easier to deal with if we take the logarithm of both sides: x x x x − ≈ ln ! ln Applying Stirling’s approximation, for large x: ∑ ∑ ∑ = = = + − + − = n i i n i i i n i i i N N N g N N N N Q 1 1 1 ln ln ln ln 0 ln = ∂ ∂ − ∂ ∂ + ∂ ∂ j j j N N Q N ψ β φ α In order to maximize, we need to make use of Lagrange multipliers and Constraints 1 and 2: Almost exact because we’re dealing with very large x, 1023 particles! The derivatives of the 1st and 2nd constraints are zero because the constraints are equal to constants All we are doing is adding and subtracting constants multiplied by zero!
  • 14. ECE6451-14 Maxwell-Boltzmann Distribution From previous slide: 0 ln = ∂ ∂ − ∂ ∂ + ∂ ∂ j j j N N Q N ψ β φ α Substituting in ln Q and Constraints 1 and 2: 0 1 1 ln 1 ln = − + +         ⋅ + ⋅ − j j j j j E N N N g β α Taking the derivative, noting that N is constant and the only terms that are nonzero are when i = j: 0 ln ln ln 1 1 1 1 1 =       ∂ ∂ −       ∂ ∂ +       + − + − ∂ ∂ ∑ ∑ ∑ ∑ ∑ = = = = = n i i i j n i i j n i n i i n i i i i i j N E N N N N N N g N N N N N β α ∑ ∑ ∑ = = = + − + − = n i i n i i i n i i i N N N g N N N N Q 1 1 1 ln ln ln ln 0 ln ln = − + − j j j E N g β α
  • 15. ECE6451-15 Maxwell-Boltzmann Distribution From previous slide: To find β, we need to determine the total number of particles, N, in the system and the total energy, E, of the system. If the states are closely spaced in energy, they form a quasi-continuum and the total number of particles, N, is given by: Where D(E) is the Density of States Function found in Section 5.1 ∫ ∞ = 0 ) ( ) ( dE E D E f N 0 ln ln = − + − j j j E N g β α j j j E g N β α − = ln j E j j j e g N E f β α − = = ) ( What are α and β?
  • 16. ECE6451-16 Maxwell-Boltzmann Distribution From previous slide: Using the standard integral: ∫ ∞ + − + Γ = 0 1 ) 1 ( n ax n a n dx e x 2 3 2 3 2 ) ( π h E m E D = E j j e g N E f β α − = = ) ( ∫ ∞ = 0 ) ( ) ( dE E D E f N ∫ ∞ − = 0 2 3 2 3 2 dE e E e m N E β α π h 2 3 2 3 2 3 2 3 2 β π α       Γ = e m N h
  • 17. ECE6451-17 Maxwell-Boltzmann Distribution The total energy, E, of the system can be found by: Using the standard integral again: ∫ ∞ + − + Γ = 0 1 ) 1 ( n ax n a n dx e x 2 3 2 3 2 ) ( π h E m E D = E j j e g N E f β α − = = ) ( ∫ ∞ = 0 ) ( ) ( dE E D E Ef E ∫ ∞ − = 0 2 3 2 3 2 3 2 dE e E e m E E β α π h 2 5 2 3 2 3 2 5 2 β π α       Γ = e m E h
  • 18. ECE6451-18 Maxwell-Boltzmann Distribution The average energy per particle is given as: Where kB is the Boltzmann constant. Equating the average energy per particle with the ratio of our equations for E and N: T k N E B 2 3 = N E T k e m e m N E B = =       Γ       Γ = 2 3 2 3 2 2 5 2 2 3 2 3 2 3 2 5 2 3 2 3 β π β π α α h h K eV kB 5 10 6175 . 8 − × = T kB 2 3 2 3 2 5 2 3 2 5 =       Γ ⋅       Γ β β
  • 19. ECE6451-19 Maxwell-Boltzmann Distribution From previous slide: T kB 2 3 2 3 2 5 2 3 2 5 =       Γ ⋅       Γ β β T kB 2 3 2 3 2 3 2 3 =       Γ ⋅       Γ ⋅ β T kB 2 3 2 3 = β T kB 1 = β ( ) ( ) z z z Γ = + Γ 1 Use the relationship[1]: [1] http://mathworld.wolfram.com/GammaFunction.html eq. 37
  • 20. ECE6451-20 Maxwell-Boltzmann Distribution Now we have β but we still need α. α will be derived in Section 5.7. T kB µ α = Where µ is the chemical potential. In Section 5.8, we will find out that the chemical potential, µ, is exactly equal to the Fermi Energy, EF — Leaving us with an α of: (Eq. 5.7.26) T k E B F = α From previous slides: T kB 1 = β j E j j j e g N E f β α − = = ) ( T k E E j j j B j F e g N E f − = = ) ( Substituting α and β into f(Ej):
  • 21. ECE6451-21 Maxwell-Boltzmann Distribution From previous slide: Maxwell-Boltzmann Distribution Reversing terms in the numerator of the exponent: This distribution gives the number of particles in the jth state, where the jth state has a degeneracy, gj. If we want to find the probability of finding the particle in the jth state, we need to normalize. We’ll start by dividing the number of particles in the jth state, Nj, by the total number of particles, N. Using Constraint 1 and f(E): ∑ ∑ = − = = = n j T k E j n j j B j e g e N N 1 1 α T k E E j j j B j F e g N E f − = = ) ( ( ) T k E E j j j B F j e g N E f − − = = ) ( It’s intuitive! For a given temperature, the chance of higher energy states being occupied decreases exponentially.
  • 22. ECE6451-22 Maxwell-Boltzmann Distribution From previous slide: Solving for eα: Substituting eα into f(Ej): ∑ ∑ = − = = = n j T k E j n j j B j e g e N N 1 1 α ∑ = − = n j T k E j B j e g N e 1 α T k E j j j B j e e g N E f − = = α ) ( ∑ = − − = n j T k E j T k E j j B j B j e g e Ng N 1 Normalizing: ∑ = − − = n j T k E j T k E j j B j B j e g e g N N 1
  • 23. ECE6451-23 Maxwell-Boltzmann Distribution From previous slide: This normalized distribution is the probability, Pj, of finding the particle in the jth state with energy Ej: Since j is just a dummy index, the probability of finding of a particle having an energy Er is: ∑ = − − = n j T k E j T k E j j B j B j e g e g N N 1 ∑ = − − = = n j T k E j T k E j j j B j B j e g e g N N P 1 ∑ = − − = n j T k E j T k E r r B j B r e g e g P 1
  • 24. ECE6451-24 Maxwell-Boltzmann Distribution If the degeneracy factor is 1, i.e. no repeatable arrangements, the probability becomes: If we want to find out the mean value of a physical observable, y, we can make use of the following equation derived in Chapter 1: For example, the mean energy of a system can be determined by: ∑ ∑ = r r r r r P y P y ∑ = − − = n j T k E T k E r B j B r e e P 1 ∑ ∑ − − = r T k E r T k E r B r B r e e E E
  • 25. ECE6451-25 ∑ ∑ − − = r T k E r T k E r B r B r e e E E Maxwell-Boltzmann Distribution From previous slide: The classical partition function: ∑ − = r T k E B r e Z This denominator occurs very often— every time a mean value is calculated in the Maxwell-Boltzmann Distribution. Since it occurs so often, it is given a special name, the classical Partition Function, Z. We can use the classical partition function to easily calculate the mean value of the energy. First, we need to note the following relationships: ∑ ∑ − − ∂ ∂ − = r E r E r r r e e E β β β ∑ − = r Er e Z β T kB 1 = β ; ⇒ Z e e r E r E r r β β β β β ∂ ∂ − =       ∂ ∂ − = ∂ ∂ − ∑ ∑ − −
  • 26. ECE6451-26 Z Z E β ∂ ∂ − = Maxwell-Boltzmann Distribution From previous slide: Substituting into the mean energy equation: Z e E r E r r β β ∂ ∂ − = ∑ − ∑ − = r Er e Z β Z Z E β ∂ ∂       − = 1 ∑ ∑ − − = r T k E r T k E r B r B r e e E E ( ) Z E ln β ∂ ∂ − = The mean energy equation
  • 27. ECE6451-27 Maxwell-Boltzmann Distribution Summarizing: ∑ − = r Er e Z β ∑ ∑ − − = r T k E r T k E r B r B r e e E E ( ) Z E ln β ∂ ∂ − = ∑ = − − = n j T k E j T k E r r B j B r e g e g P 1 T kB 1 = β ( ) T k E E j j j B F j e g N E f − − = = ) ( T k E B F = α ( ) T k E E B F e E f − − = ) (
  • 28. ECE6451-28 Maxwell-Boltzmann Distribution Summarizing: ( ) Z E ln β ∂ ∂ − = • For a given temperature, the chance of higher energy states being occupied decreases exponentially • The area under the curve, i.e. the total number of molecules in the system, does NOT change • The most probable energy value is at the peak of the curve, when dP/dE = 0 • The average energy value is greater than the most probable energy value • If the temperature of the system is increased, the most probable energy and the average energy also increase because the distribution skews to the right BUT the area under the curve remains the same http://www.bustertests.co.uk/studies/kinetics-collision-theory-maxwell-boltzmann-distribution.php ∑ = − − = n j T k E j T k E r r B j B r e g e g P 1 ( ) T k E E B F e E f − − = ) (