SlideShare ist ein Scribd-Unternehmen logo
1 von 20
-PRIYA
           SRIVASTAVA
04/27/12    090105801   1
INTRODUCTION
 Fuzzy logic has rapidly become one of the most
  successful of today's technologies for developing
  sophisticated control systems. The reason for which is
  very simple.
 Fuzzy logic addresses such applications perfectly as it
  resembles human decision making with an ability to
  generate precise solutions from certain or
  approximate information.
 It fills an important gap in engineering design
  methods left vacant by purely mathematical
  approaches (e.g. linear control design), and purely
  logic-based approaches (e.g. expert systems) in
  system design.
04/27/12                                                2
 While other approaches require accurate equations to
  model real-world behaviors, fuzzy design can
  accommodate the ambiguities of real-world human
  language and logic.
 It provides both an intuitive method for describing
  systems in human terms and automates the
  conversion of those system specifications into
  effective models.


    04/27/12                                             3
CHRONICLE:-
 Lotfi A. Zadeh, a professor of UC Berkeley in
  California, soon to be known as the founder of fuzzy
  logic observed that conventional computer logic was
  incapable of manipulating data representing subjective
  or vague human ideas such as "an atractive person" .
 Fuzzy logic, hence was designed to allow computers
  to determine the distinctions among data with shades
  of gray, similar to the process of human reasoning.
 This theory proposed making the membership
  function (or the values False and True) operate over
  the range of real numbers [0.0, 1.0]. Fuzzy logic was
  now introduced to the world.

04/27/12                                               4
t d o yo u m e a n b y  f u z z y
   Fuzzy logic is a superset of Boolean logic that has
      been extended to handle the concept of partial truth-
      truth values between "completely true" and
      "completely false".
      The essential characteristics of fuzzy logicare as
      follows:-
   In fuzzy logic, exact reasoning is viewed as a limiting
      case of approximate reasoning.
   In fuzzy logic everything is a matter of degree.
   Any logical system can be fuzzified
   In fuzzy logic, knowledge is interpreted as a collection
      of elastic or, equivalently , fuzzy constraint on a
      collection of variables
   The third statement hence, define Boolean logic as a
      subset of Fuzzy logic.
  04/27/12                                                   5
F uzzy S e ts

 A paradigm is a set of rules and regulations which
  defines boundaries and tells us what to do to be
  successful in solving problems within these
  boundaries.
 For example the use of transistors instead of vacuum
  tubes is a paradigm shift - likewise the development of
  Fuzzy Set Theory from conventional bivalent set
  theory is a paradigm shift.
 Bivalent Set Theory can be somewhat limiting if we
  wish to describe a 'humanistic' problem
  mathematically.


04/27/12                                                6
Fig. below illustrates bivalent sets to
characterise the temperature of a room.




04/27/12                                  7
F u z z y S e t O p e r a t io n s .

 U n io n
     The membership function of the Union of two fuzzy sets A
      and B with membership functions  and   respectively is
      defined as the maximum of the two individual membership
      functions. This is called the maximum criterion.




04/27/12                                                         8
W h a t d o e s it o f f e r ?

 The first applications of fuzzy theory were primarily
     industrial, such as process control for cement kilns.
 Since then, the applications of Fuzzy Logic technology
     have virtually exploded, affecting things we use
     everyday.
     Take for example, the fuzzy washing machine .
 A load of clothes in it and press start, and the
     machine begins to churn, automatically choosing the
     best cycle. The fuzzy microwave, Place chili,
     potatoes, or etc in a fuzzy microwave and push single
     button, and it cooks for the right time at the proper
     temperature.
 The fuzzy car, maneuvers itself by following simple
     verbal instructions from its driver. It can even stop
     itself when there is an obstacle immediately ahead 9
04/27/12
     using sensors.
H o w d o f u z z y s e t s d if f e r
f r o m c la s s ic a l s e t s ?
 In classical set theory we assume that all sets rare
  well-defined (or crisp), that is given any object in our
  universe we can always say that object either is or is
  not the member of a particular set.
                CLASSICAL SETS
                The set of people that can run a mile in 4 minutes or
                 less.
                The set of children under age seven that weigh more
                 than 1oo pounds.
                FUZZY SETS
                The set of fast runners.
                The set of overweight children.

04/27/12                                                                 10
E Q U A L IT Y O F F U Z Z Y S E T S :-
 Let A={ Mohan/.2;Sohan/1;John/7;Abrahm/4}

 B= {Abrahm/4;Mohan/.2;John/7;Sohan/1}

 However, if
 C={Abrahm/2;Mohan/.4;Sohan/1;John}

 A = B and A ≠ C




04/27/12                                      11
F U Z Z Y C O N TR O L :-

 Fuzzy control, which directly uses fuzzy rules is the
  most important application in fuzzy theory.
 Using a procedure originated by Ebrahim Mamdani in
  the late 70s, three steps are taken to create a fuzzy
  controlled machine:
 1)Fuzzification(Using membership functions to
  graphically describe a situation)

  2)Rule evaluation(Application of fuzzy rules) 

  3)Defuzzification(Obtaining the crisp or actual results) 

04/27/12                                                 12
WH Y F U Z Z Y C O N TR O L ?
 Fuzzy Logic is a technique to embody human like
  thinking into a control system.
 A fuzzy controller is designed to emulate human
  deductive thinking, that is, the process people use to
  infer conclusions from what they know.
 Traditional control approach requires formal modeling
  of the physical reality.




04/27/12                                               13
 A f u z z y c o n t r o l s y s t e m  can also be
  described as based on fuzzy logic—a mathematical
   system that analyzes analog input values in terms of 
  logical variables that take on continuous values
  between 0 and 1, in contrast to classical or digital
   logic, which operates on discrete values of either 1 or
  0 (true or false respectively).




04/27/12                                                14
 Fuzzy logic is widely used in machine control.

 The term itself inspires a certain skepticism, sounding
  equivalent to "half-baked logic" or "bogus logic", but
  the "fuzzy" part does not refer to a lack of rigour in the
  method, rather to the fact that the logic involved can
  deal with fuzzy concepts—concepts that cannot be
  expressed as "true" or "false" but rather as "partially
  true".




04/27/12                                                  15
 Although genetic algorithms and neural networks can
  perform just as well as fuzzy logic in many cases,
 fuzzy logic has the advantage that the solution to the
  problem can be cast in terms that human operators
  can understand,
 so that their experience can be used in the design of
  the controller. This makes it easier to mechanize tasks
  that are already successfully performed by humans.




04/27/12                                               16
L IT T L E M O R E O N F U Z Z Y
C O N T R O L :-
 Fuzzy controllers are very simple conceptually.
  They consist of an input stage, a processing
  stage, and an output stage.
 The input stage maps sensor or other inputs,
  such as switches, thumbwheels, and so on, to the
  appropriate membership functions and truth
  values.
 The processing stage invokes each appropriate
  rule and generates a result for each, then
  combines the results of the rules. Finally, the
  output stage converts the combined result back
  into a specific control output value.
04/27/12                                        17
H o w f a r c a n f u z z y lo g ic
go???

  It can appear almost anyplace where computers and
     modern control theory are overly precise as well as in
     tasks requiring delicate human intuition and
     experience-based knowledge. What does the future
     hold?
 Computers that understand and respond to normal
     human language.
      Machines that write interesting novels and
     screenplays in a selected style , such as
     Hemingway's.
  Molecule-sized soldiers of health that will roam the
     blood-stream, killing cancer cells and slowing the
04/27/12                                                   18
     aging process.
 Hence, it can be seen that with the enormous
  research currently being done in Japan and many
  other countries whose eyes have opened, the future
  of fuzzy logic is undetermined. There is no limit to
  where it can go. 
  The future is bright. The future is fuzzy.




04/27/12                                                 19
04/27/12   20

Weitere ähnliche Inhalte

Was ist angesagt?

Was ist angesagt? (20)

Application of fuzzy logic
Application of fuzzy logicApplication of fuzzy logic
Application of fuzzy logic
 
Fuzzy logic and its applications
Fuzzy logic and its applicationsFuzzy logic and its applications
Fuzzy logic and its applications
 
Fuzzy+logic
Fuzzy+logicFuzzy+logic
Fuzzy+logic
 
Fuzzy logic Notes AI CSE 8th Sem
Fuzzy logic Notes AI CSE 8th SemFuzzy logic Notes AI CSE 8th Sem
Fuzzy logic Notes AI CSE 8th Sem
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Chapter 5 - Fuzzy Logic
Chapter 5 - Fuzzy LogicChapter 5 - Fuzzy Logic
Chapter 5 - Fuzzy Logic
 
Unification and Lifting
Unification and LiftingUnification and Lifting
Unification and Lifting
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Fuzzy control and its applications
Fuzzy control and its applicationsFuzzy control and its applications
Fuzzy control and its applications
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
AI Lecture 7 (uncertainty)
AI Lecture 7 (uncertainty)AI Lecture 7 (uncertainty)
AI Lecture 7 (uncertainty)
 
Genetic Algorithms
Genetic AlgorithmsGenetic Algorithms
Genetic Algorithms
 
FUZZY LOGIC
FUZZY LOGIC FUZZY LOGIC
FUZZY LOGIC
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Presentation on fuzzy logic and fuzzy systems
Presentation on fuzzy logic and fuzzy systemsPresentation on fuzzy logic and fuzzy systems
Presentation on fuzzy logic and fuzzy systems
 
Fuzzy Logic in the Real World
Fuzzy Logic in the Real WorldFuzzy Logic in the Real World
Fuzzy Logic in the Real World
 
Classical Sets & fuzzy sets
Classical Sets & fuzzy setsClassical Sets & fuzzy sets
Classical Sets & fuzzy sets
 
Forward and Backward chaining in AI
Forward and Backward chaining in AIForward and Backward chaining in AI
Forward and Backward chaining in AI
 
Fuzzy inference
Fuzzy inferenceFuzzy inference
Fuzzy inference
 
Fuzzy set and its application
Fuzzy set and its applicationFuzzy set and its application
Fuzzy set and its application
 

Andere mochten auch

Soft computing (ANN and Fuzzy Logic) : Dr. Purnima Pandit
Soft computing (ANN and Fuzzy Logic)  : Dr. Purnima PanditSoft computing (ANN and Fuzzy Logic)  : Dr. Purnima Pandit
Soft computing (ANN and Fuzzy Logic) : Dr. Purnima Pandit
Purnima Pandit
 
An Introduction to Soft Computing
An Introduction to Soft ComputingAn Introduction to Soft Computing
An Introduction to Soft Computing
Tameem Ahmad
 

Andere mochten auch (15)

Fuzzy logic and neural networks
Fuzzy logic and neural networksFuzzy logic and neural networks
Fuzzy logic and neural networks
 
Fuzzy Logic Seminar with Implementation
Fuzzy Logic Seminar with ImplementationFuzzy Logic Seminar with Implementation
Fuzzy Logic Seminar with Implementation
 
Vitualisation
VitualisationVitualisation
Vitualisation
 
Soft computing (ANN and Fuzzy Logic) : Dr. Purnima Pandit
Soft computing (ANN and Fuzzy Logic)  : Dr. Purnima PanditSoft computing (ANN and Fuzzy Logic)  : Dr. Purnima Pandit
Soft computing (ANN and Fuzzy Logic) : Dr. Purnima Pandit
 
Genetic Algorithms Made Easy
Genetic Algorithms Made EasyGenetic Algorithms Made Easy
Genetic Algorithms Made Easy
 
An Introduction to Soft Computing
An Introduction to Soft ComputingAn Introduction to Soft Computing
An Introduction to Soft Computing
 
Neuro-fuzzy systems
Neuro-fuzzy systemsNeuro-fuzzy systems
Neuro-fuzzy systems
 
Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing Unit I & II in Principles of Soft computing
Unit I & II in Principles of Soft computing
 
Fuzzy logic application (aircraft landing)
Fuzzy logic application (aircraft landing)Fuzzy logic application (aircraft landing)
Fuzzy logic application (aircraft landing)
 
Soft computing
Soft computingSoft computing
Soft computing
 
Genetic Algorithm by Example
Genetic Algorithm by ExampleGenetic Algorithm by Example
Genetic Algorithm by Example
 
Genetic Algorithms
Genetic AlgorithmsGenetic Algorithms
Genetic Algorithms
 
Genetic algorithm
Genetic algorithmGenetic algorithm
Genetic algorithm
 
Getting Started With SlideShare
Getting Started With SlideShareGetting Started With SlideShare
Getting Started With SlideShare
 
SlideShare 101
SlideShare 101SlideShare 101
SlideShare 101
 

Ähnlich wie Fuzzy logic ppt

On Machine Learning and Data Mining
On Machine Learning and Data MiningOn Machine Learning and Data Mining
On Machine Learning and Data Mining
butest
 
Report on robotic control
Report on robotic controlReport on robotic control
Report on robotic control
Anil Maurya
 
Bionic Model for Control Platforms
Bionic Model for Control PlatformsBionic Model for Control Platforms
Bionic Model for Control Platforms
Hao Yuan Cheng
 
33412283 solving-fuzzy-logic-problems-with-matlab
33412283 solving-fuzzy-logic-problems-with-matlab33412283 solving-fuzzy-logic-problems-with-matlab
33412283 solving-fuzzy-logic-problems-with-matlab
sai kumar
 
Intelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy LogicIntelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy Logic
Praneel Chand
 
Intro tofuzzysystemsnuralnetsgeneticalgorithms
Intro tofuzzysystemsnuralnetsgeneticalgorithmsIntro tofuzzysystemsnuralnetsgeneticalgorithms
Intro tofuzzysystemsnuralnetsgeneticalgorithms
elkhayatyazid
 
Is there any a novel best theory for uncertainty?
Is there any a novel best theory for uncertainty?  Is there any a novel best theory for uncertainty?
Is there any a novel best theory for uncertainty?
Andino Maseleno
 

Ähnlich wie Fuzzy logic ppt (20)

Artificial Intelligence Techniques In Power Systems Paper Presentation
Artificial Intelligence Techniques In Power Systems Paper PresentationArtificial Intelligence Techniques In Power Systems Paper Presentation
Artificial Intelligence Techniques In Power Systems Paper Presentation
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
International Journal of Engineering Inventions (IJEI)
International Journal of Engineering Inventions (IJEI)International Journal of Engineering Inventions (IJEI)
International Journal of Engineering Inventions (IJEI)
 
On Machine Learning and Data Mining
On Machine Learning and Data MiningOn Machine Learning and Data Mining
On Machine Learning and Data Mining
 
Report on robotic control
Report on robotic controlReport on robotic control
Report on robotic control
 
IRJET - Application of Fuzzy Logic: A Review
IRJET - Application of Fuzzy Logic: A ReviewIRJET - Application of Fuzzy Logic: A Review
IRJET - Application of Fuzzy Logic: A Review
 
DESIGN AND SIMULATION OF FUZZY LOGIC CONTROLLER USING MATLAB
DESIGN AND SIMULATION OF FUZZY LOGIC CONTROLLER USING MATLABDESIGN AND SIMULATION OF FUZZY LOGIC CONTROLLER USING MATLAB
DESIGN AND SIMULATION OF FUZZY LOGIC CONTROLLER USING MATLAB
 
FUZZY LOGIC CONTROLLER
FUZZY LOGIC CONTROLLERFUZZY LOGIC CONTROLLER
FUZZY LOGIC CONTROLLER
 
Fuzzy logic mis
Fuzzy logic misFuzzy logic mis
Fuzzy logic mis
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Bionic Model for Control Platforms
Bionic Model for Control PlatformsBionic Model for Control Platforms
Bionic Model for Control Platforms
 
A model theory of induction
A model theory of inductionA model theory of induction
A model theory of induction
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Universal Artificial Intelligence for Intelligent Agents: An Approach to Supe...
Universal Artificial Intelligence for Intelligent Agents: An Approach to Supe...Universal Artificial Intelligence for Intelligent Agents: An Approach to Supe...
Universal Artificial Intelligence for Intelligent Agents: An Approach to Supe...
 
33412283 solving-fuzzy-logic-problems-with-matlab
33412283 solving-fuzzy-logic-problems-with-matlab33412283 solving-fuzzy-logic-problems-with-matlab
33412283 solving-fuzzy-logic-problems-with-matlab
 
Intelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy LogicIntelligent Control and Fuzzy Logic
Intelligent Control and Fuzzy Logic
 
Intro tofuzzysystemsnuralnetsgeneticalgorithms
Intro tofuzzysystemsnuralnetsgeneticalgorithmsIntro tofuzzysystemsnuralnetsgeneticalgorithms
Intro tofuzzysystemsnuralnetsgeneticalgorithms
 
Improving Tools in Artificial Intelligence
Improving Tools in Artificial IntelligenceImproving Tools in Artificial Intelligence
Improving Tools in Artificial Intelligence
 
Is there any a novel best theory for uncertainty?
Is there any a novel best theory for uncertainty?  Is there any a novel best theory for uncertainty?
Is there any a novel best theory for uncertainty?
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 

Mehr von Priya_Srivastava (20)

Pc ppt
Pc pptPc ppt
Pc ppt
 
Pe,ppt
Pe,pptPe,ppt
Pe,ppt
 
Environment
EnvironmentEnvironment
Environment
 
Environmental
EnvironmentalEnvironmental
Environmental
 
S.c ppt
S.c pptS.c ppt
S.c ppt
 
Vlsi
VlsiVlsi
Vlsi
 
Wtp ppt
Wtp pptWtp ppt
Wtp ppt
 
Technical ppt
Technical pptTechnical ppt
Technical ppt
 
M.c ppt
M.c pptM.c ppt
M.c ppt
 
Project ppt on Rapid Battery Charger using Fuzzy Controller
Project ppt on Rapid Battery Charger using Fuzzy ControllerProject ppt on Rapid Battery Charger using Fuzzy Controller
Project ppt on Rapid Battery Charger using Fuzzy Controller
 
Project ppt
Project pptProject ppt
Project ppt
 
Bsp ppt
Bsp pptBsp ppt
Bsp ppt
 
Ecg ppt
Ecg pptEcg ppt
Ecg ppt
 
Afc ppt
Afc pptAfc ppt
Afc ppt
 
C cp ppt
C cp pptC cp ppt
C cp ppt
 
Ipc ppt
Ipc pptIpc ppt
Ipc ppt
 
Seminar ppt...; )
Seminar ppt...; )Seminar ppt...; )
Seminar ppt...; )
 
Technical presentation on
Technical  presentation onTechnical  presentation on
Technical presentation on
 
O.i.ppt
O.i.pptO.i.ppt
O.i.ppt
 
Filters
FiltersFilters
Filters
 

Kürzlich hochgeladen

CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
giselly40
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
Enterprise Knowledge
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
Earley Information Science
 

Kürzlich hochgeladen (20)

The Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptxThe Codex of Business Writing Software for Real-World Solutions 2.pptx
The Codex of Business Writing Software for Real-World Solutions 2.pptx
 
CNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of ServiceCNv6 Instructor Chapter 6 Quality of Service
CNv6 Instructor Chapter 6 Quality of Service
 
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
Mastering MySQL Database Architecture: Deep Dive into MySQL Shell and MySQL R...
 
Breaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path MountBreaking the Kubernetes Kill Chain: Host Path Mount
Breaking the Kubernetes Kill Chain: Host Path Mount
 
IAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI SolutionsIAC 2024 - IA Fast Track to Search Focused AI Solutions
IAC 2024 - IA Fast Track to Search Focused AI Solutions
 
Handwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed textsHandwritten Text Recognition for manuscripts and early printed texts
Handwritten Text Recognition for manuscripts and early printed texts
 
GenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day PresentationGenCyber Cyber Security Day Presentation
GenCyber Cyber Security Day Presentation
 
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
Strategies for Unlocking Knowledge Management in Microsoft 365 in the Copilot...
 
The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024The 7 Things I Know About Cyber Security After 25 Years | April 2024
The 7 Things I Know About Cyber Security After 25 Years | April 2024
 
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptxEIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
EIS-Webinar-Prompt-Knowledge-Eng-2024-04-08.pptx
 
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdfThe Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
The Role of Taxonomy and Ontology in Semantic Layers - Heather Hedden.pdf
 
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
04-2024-HHUG-Sales-and-Marketing-Alignment.pptx
 
How to convert PDF to text with Nanonets
How to convert PDF to text with NanonetsHow to convert PDF to text with Nanonets
How to convert PDF to text with Nanonets
 
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
08448380779 Call Girls In Diplomatic Enclave Women Seeking Men
 
🐬 The future of MySQL is Postgres 🐘
🐬  The future of MySQL is Postgres   🐘🐬  The future of MySQL is Postgres   🐘
🐬 The future of MySQL is Postgres 🐘
 
Boost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivityBoost PC performance: How more available memory can improve productivity
Boost PC performance: How more available memory can improve productivity
 
Presentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreterPresentation on how to chat with PDF using ChatGPT code interpreter
Presentation on how to chat with PDF using ChatGPT code interpreter
 
Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024Axa Assurance Maroc - Insurer Innovation Award 2024
Axa Assurance Maroc - Insurer Innovation Award 2024
 
A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?A Year of the Servo Reboot: Where Are We Now?
A Year of the Servo Reboot: Where Are We Now?
 
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time AutomationFrom Event to Action: Accelerate Your Decision Making with Real-Time Automation
From Event to Action: Accelerate Your Decision Making with Real-Time Automation
 

Fuzzy logic ppt

  • 1. -PRIYA SRIVASTAVA 04/27/12 090105801 1
  • 2. INTRODUCTION  Fuzzy logic has rapidly become one of the most successful of today's technologies for developing sophisticated control systems. The reason for which is very simple.  Fuzzy logic addresses such applications perfectly as it resembles human decision making with an ability to generate precise solutions from certain or approximate information.  It fills an important gap in engineering design methods left vacant by purely mathematical approaches (e.g. linear control design), and purely logic-based approaches (e.g. expert systems) in system design. 04/27/12 2
  • 3.  While other approaches require accurate equations to model real-world behaviors, fuzzy design can accommodate the ambiguities of real-world human language and logic.  It provides both an intuitive method for describing systems in human terms and automates the conversion of those system specifications into effective models. 04/27/12 3
  • 4. CHRONICLE:-  Lotfi A. Zadeh, a professor of UC Berkeley in California, soon to be known as the founder of fuzzy logic observed that conventional computer logic was incapable of manipulating data representing subjective or vague human ideas such as "an atractive person" .  Fuzzy logic, hence was designed to allow computers to determine the distinctions among data with shades of gray, similar to the process of human reasoning.  This theory proposed making the membership function (or the values False and True) operate over the range of real numbers [0.0, 1.0]. Fuzzy logic was now introduced to the world. 04/27/12 4
  • 5. t d o yo u m e a n b y  f u z z y  Fuzzy logic is a superset of Boolean logic that has been extended to handle the concept of partial truth- truth values between "completely true" and "completely false". The essential characteristics of fuzzy logicare as follows:-  In fuzzy logic, exact reasoning is viewed as a limiting case of approximate reasoning.  In fuzzy logic everything is a matter of degree.  Any logical system can be fuzzified  In fuzzy logic, knowledge is interpreted as a collection of elastic or, equivalently , fuzzy constraint on a collection of variables  The third statement hence, define Boolean logic as a subset of Fuzzy logic. 04/27/12 5
  • 6. F uzzy S e ts  A paradigm is a set of rules and regulations which defines boundaries and tells us what to do to be successful in solving problems within these boundaries.  For example the use of transistors instead of vacuum tubes is a paradigm shift - likewise the development of Fuzzy Set Theory from conventional bivalent set theory is a paradigm shift.  Bivalent Set Theory can be somewhat limiting if we wish to describe a 'humanistic' problem mathematically. 04/27/12 6
  • 7. Fig. below illustrates bivalent sets to characterise the temperature of a room. 04/27/12 7
  • 8. F u z z y S e t O p e r a t io n s .  U n io n  The membership function of the Union of two fuzzy sets A and B with membership functions  and   respectively is defined as the maximum of the two individual membership functions. This is called the maximum criterion. 04/27/12 8
  • 9. W h a t d o e s it o f f e r ?  The first applications of fuzzy theory were primarily industrial, such as process control for cement kilns.  Since then, the applications of Fuzzy Logic technology have virtually exploded, affecting things we use everyday. Take for example, the fuzzy washing machine .  A load of clothes in it and press start, and the machine begins to churn, automatically choosing the best cycle. The fuzzy microwave, Place chili, potatoes, or etc in a fuzzy microwave and push single button, and it cooks for the right time at the proper temperature.  The fuzzy car, maneuvers itself by following simple verbal instructions from its driver. It can even stop itself when there is an obstacle immediately ahead 9 04/27/12 using sensors.
  • 10. H o w d o f u z z y s e t s d if f e r f r o m c la s s ic a l s e t s ?  In classical set theory we assume that all sets rare well-defined (or crisp), that is given any object in our universe we can always say that object either is or is not the member of a particular set.  CLASSICAL SETS  The set of people that can run a mile in 4 minutes or less.  The set of children under age seven that weigh more than 1oo pounds.  FUZZY SETS  The set of fast runners.  The set of overweight children. 04/27/12 10
  • 11. E Q U A L IT Y O F F U Z Z Y S E T S :-  Let A={ Mohan/.2;Sohan/1;John/7;Abrahm/4}  B= {Abrahm/4;Mohan/.2;John/7;Sohan/1}  However, if  C={Abrahm/2;Mohan/.4;Sohan/1;John}  A = B and A ≠ C 04/27/12 11
  • 12. F U Z Z Y C O N TR O L :-  Fuzzy control, which directly uses fuzzy rules is the most important application in fuzzy theory.  Using a procedure originated by Ebrahim Mamdani in the late 70s, three steps are taken to create a fuzzy controlled machine:  1)Fuzzification(Using membership functions to graphically describe a situation)  2)Rule evaluation(Application of fuzzy rules)   3)Defuzzification(Obtaining the crisp or actual results)  04/27/12 12
  • 13. WH Y F U Z Z Y C O N TR O L ?  Fuzzy Logic is a technique to embody human like thinking into a control system.  A fuzzy controller is designed to emulate human deductive thinking, that is, the process people use to infer conclusions from what they know.  Traditional control approach requires formal modeling of the physical reality. 04/27/12 13
  • 14.  A f u z z y c o n t r o l s y s t e m  can also be described as based on fuzzy logic—a mathematical  system that analyzes analog input values in terms of  logical variables that take on continuous values between 0 and 1, in contrast to classical or digital  logic, which operates on discrete values of either 1 or 0 (true or false respectively). 04/27/12 14
  • 15.  Fuzzy logic is widely used in machine control.  The term itself inspires a certain skepticism, sounding equivalent to "half-baked logic" or "bogus logic", but the "fuzzy" part does not refer to a lack of rigour in the method, rather to the fact that the logic involved can deal with fuzzy concepts—concepts that cannot be expressed as "true" or "false" but rather as "partially true". 04/27/12 15
  • 16.  Although genetic algorithms and neural networks can perform just as well as fuzzy logic in many cases,  fuzzy logic has the advantage that the solution to the problem can be cast in terms that human operators can understand,  so that their experience can be used in the design of the controller. This makes it easier to mechanize tasks that are already successfully performed by humans. 04/27/12 16
  • 17. L IT T L E M O R E O N F U Z Z Y C O N T R O L :-  Fuzzy controllers are very simple conceptually. They consist of an input stage, a processing stage, and an output stage.  The input stage maps sensor or other inputs, such as switches, thumbwheels, and so on, to the appropriate membership functions and truth values.  The processing stage invokes each appropriate rule and generates a result for each, then combines the results of the rules. Finally, the output stage converts the combined result back into a specific control output value. 04/27/12 17
  • 18. H o w f a r c a n f u z z y lo g ic go???   It can appear almost anyplace where computers and modern control theory are overly precise as well as in tasks requiring delicate human intuition and experience-based knowledge. What does the future hold?  Computers that understand and respond to normal human language. Machines that write interesting novels and screenplays in a selected style , such as Hemingway's.   Molecule-sized soldiers of health that will roam the blood-stream, killing cancer cells and slowing the 04/27/12 18 aging process.
  • 19.  Hence, it can be seen that with the enormous research currently being done in Japan and many other countries whose eyes have opened, the future of fuzzy logic is undetermined. There is no limit to where it can go.  The future is bright. The future is fuzzy. 04/27/12 19
  • 20. 04/27/12 20