SlideShare a Scribd company logo
1 of 32
Dept. of Electronics and Communication Engg.
Vision: Progress through the growing knowledge of Electronics and Communication technology.
Mission: To emerge as a world class center of learning, research and development, integrating with the latest trends
in Electronics and Communication Engineering for the service of humanity.
15.01.2015
Prof. Dr. S. Swapna Kumar
Introduction to
FUZZY LOGIC
Professor Dr. Lotfali Asker Zadeh
Born: February 4, 1921 (age 93)
Baku, Soviet, Azerbaijan
Professional affiliation
Professor in the Graduate School, Computer Science Division
Department of Electrical Engineering and Computer Sciences
University of California
Berkeley, CA 94720 -1776
Director, Berkeley Initiative in Soft Computing (BISC)
zadeh@eecs.berkeley.edu
http://www.cs.berkeley.edu/~zadeh/
Tel.(office): (510) 642-4959
Fax (office): (510) 642-1712
Tel.(home): (510) 526-2569
Fax (home): (510) 526-2433
 1938: Alborz International High School, Tehran, Iran.
 1942: B.S. engineering degree, University of Tehran, Iran.
 1946 : M.S., Massachusetts Institute of Technology.
 1949: PhD – (Electrical Engineering}, Columbia University.
 Faculty member: Columbia University and the University of
California-Berkeley.
 1990: Retired from UC-Berkeley
 Director of UC Berkeley Initiative on Soft Computing.
2
Adversity
*Fuzzy Logic: Intelligence, Control, and Information - J. Yen and R. Langari, Prentice Hall 1999
1964: Lotfi A. Zadeh, UC Berkeley, introduced the
paper on fuzzy sets.
 Idea of grade of membership was born
 Sharp criticism from academic community
 Name!
 Theory’s emphasis on imprecision
 Waste of government funds!
3
History of Fuzzy Logic
*Fuzzy Logic: Intelligence, Control, and Information - J. Yen and R. Langari, Prentice Hall 1999
 1965: Zadeh introduced fuzzy set theory
1970s: research groups were form in JAPAN
1974: Mamdani, United Kingdom, developed the first fuzzy
logic controller
1977: Dubois applied fuzzy sets in a comprehensive study of
traffic conditions
1976-1987: Industrial application of fuzzy logic in Japan and
Europe
1987-Present: Fuzzy Boom 4
Precision is not ULTIMATE truth
5
Traditional logic
A rose is either RED or not RED.
6
Traditional (crisp) logic
What about this rose?
7
Precision & Significant in Real world
 Fuzzy logic relative importance of precision; when a rough
answer will do.
8
What/How……!!!!
FastestSlow FastSlowest
[ 0.1 – 0.25 ] [ 0.25 – 0.50 ] [ 0.50 – 0.75 ] [ 0.75 – 1.00 ]
 Very tall ~ 7f
 Tall ~ 6f
 Average ~ 5f
 Short ~ 4f
 Very short ~ 3f
9
10
What is FUZZY LOGIC?
 Fuzzy logic:
 A way to represent variation or imprecision in logic
 A way to make use of natural language in logic
 Approximate reasoning
 Linguistic variables:
 Temp: {freezing, cool, warm, hot}
 Cloud Cover: {overcast, partly cloudy, sunny}
 Speed: {slow, fast}
 Problem-solving methodology
 Definite conclusion
Fuzzy Sets
NOTE: FUZZY SET IS NOT A “SET” but is a mapping
A x x x XA {( , ( ))| }
Universe or
universe of discourseFuzzy set
Membership
Function (MF)
A fuzzy set is totally characterized by a
membership function (MF).
Integer
11
Membership function
 A membership function (MF) is a curve that maps input space
to a membership value between 0 and 1.



























cxif
cxbif
bc
xc
bxaif
ab
ax
axif
xA
0
0
)(
a b c x
µA(x)
1
0
12
Membership Functions (MFs)
13
14
 Is water colorless?
 CRISP Yes = 1, No = 0
 Is I am honest?
 Extremely honest = 1
 Very honest = 0.80
 Honest at times = 0.4
 Extremely dishonest = 0
Crisp Vs.. Fuzzy
Membership Functions
 Fuzzy logic Connectives:
 Fuzzy Disjunction, 
 Fuzzy Conjunction, 
1550 70 90 1103010
Temp. (F°)
Freezing Cool Warm Hot
0
1
0.7
0.3
How cool is 36 F° ?
µA(x)
Michio SugenoEbrahim Mamdani
Fuzzy Logic System
16
Crisp Input
Fuzzification
Rules
De-Fuzzification
Crisp Output Result
“antecedent”
“consequent”
Begin
End
FUZZY LOGIC USING MATLAB
17
PRIMARY GUI TOOLS
18
User Interface Layout: FIS Editor
19
User Interface Layout: MF Editor
20
User Interface Layout: MF Editor
21
User Interface Layout: Rule Editor
22
User Interface Layout: Rule Viewer
23
fis=readfis('ws')
out=evalfis(scale,fis)
out=result
UIL: Surface Viewer
24
Fuzzy Logic Control of
Washing Machines
25
BWA
Fuzzy Surface
26
27
Drawbacks to Fuzzy logic
 Requires tuning of membership functions
 Fuzzy Logic control may not scale well to large or
complex problems
 Deals with imprecision, and vagueness, but not
uncertainty
Fuzzy Logic Applications
 Aerospace
 Automotive
 Business
 Chemical Industry
 Defense
 Electronics
 Financial
 Industrial
 Manufacturing
 Marine
 Medical
 Signal Processing
 Telecommunications
 Transportation
28
Summary
 Fuzzy logic provides an alternative way to represent
linguistic and subjective attributes of the real world in
computing.
 It is able to be applied to control systems and other
applications in order to improve the efficiency and
simplicity of the design process.
29
30
References
 L. Zadah, “Fuzzy sets as a basis of possibility” Fuzzy
Sets Systems, Vol. 1, pp3-28, 1978.
 T. J. Ross, “Fuzzy Logic with Engineering
Applications”, McGraw-Hill, 1995.
 K. M. Passino, S. Yurkovich, "Fuzzy Control" Addison
Wesley, 1998.
 Google…..
zadeh@eecs.berkeley.edu
Questions
31
Thank You
drsswapnakumar@gmail.com

More Related Content

Viewers also liked

TOPSIS - A multi-criteria decision making approach
TOPSIS - A multi-criteria decision making approachTOPSIS - A multi-criteria decision making approach
TOPSIS - A multi-criteria decision making approach
Presi
 
3 way conference
3 way conference3 way conference
3 way conference
sosaia07
 

Viewers also liked (16)

Rough set based decision tree for identifying vulnerable and food insecure ho...
Rough set based decision tree for identifying vulnerable and food insecure ho...Rough set based decision tree for identifying vulnerable and food insecure ho...
Rough set based decision tree for identifying vulnerable and food insecure ho...
 
Fuzzy Logic in Smart Homes
Fuzzy Logic in Smart HomesFuzzy Logic in Smart Homes
Fuzzy Logic in Smart Homes
 
Fuzzy logic and its application in environmental engineering
Fuzzy logic and its application in environmental engineeringFuzzy logic and its application in environmental engineering
Fuzzy logic and its application in environmental engineering
 
Fuzzy control and its applications
Fuzzy control and its applicationsFuzzy control and its applications
Fuzzy control and its applications
 
Soft computing08
Soft computing08Soft computing08
Soft computing08
 
Fuzzy Logic Application in Robotics( Humanoid Push Recovery)
Fuzzy Logic Application in Robotics( Humanoid Push Recovery)Fuzzy Logic Application in Robotics( Humanoid Push Recovery)
Fuzzy Logic Application in Robotics( Humanoid Push Recovery)
 
Fuzzy Logic Fossil Classification System
Fuzzy Logic Fossil Classification SystemFuzzy Logic Fossil Classification System
Fuzzy Logic Fossil Classification System
 
Intelligence control using fuzzy logic
Intelligence control using fuzzy logicIntelligence control using fuzzy logic
Intelligence control using fuzzy logic
 
fuzzy logic
fuzzy logicfuzzy logic
fuzzy logic
 
Fuzzy logic
Fuzzy logicFuzzy logic
Fuzzy logic
 
Fuzzy Logic
Fuzzy LogicFuzzy Logic
Fuzzy Logic
 
TOPSIS - A multi-criteria decision making approach
TOPSIS - A multi-criteria decision making approachTOPSIS - A multi-criteria decision making approach
TOPSIS - A multi-criteria decision making approach
 
Fuzzy logic application (aircraft landing)
Fuzzy logic application (aircraft landing)Fuzzy logic application (aircraft landing)
Fuzzy logic application (aircraft landing)
 
On learning ghp15 cmg
On learning ghp15 cmgOn learning ghp15 cmg
On learning ghp15 cmg
 
3 way conference
3 way conference3 way conference
3 way conference
 
6 vamos al mundo
6 vamos al mundo6 vamos al mundo
6 vamos al mundo
 

Similar to Fuzzy logic (vast 2015)

Deep Learning and Automatic Differentiation from Theano to PyTorch
Deep Learning and Automatic Differentiation from Theano to PyTorchDeep Learning and Automatic Differentiation from Theano to PyTorch
Deep Learning and Automatic Differentiation from Theano to PyTorch
inside-BigData.com
 

Similar to Fuzzy logic (vast 2015) (20)

JIT_ECE2017
JIT_ECE2017JIT_ECE2017
JIT_ECE2017
 
Lec 01 introduction
Lec 01   introductionLec 01   introduction
Lec 01 introduction
 
Effect systems in scala: beyond flatmap
Effect systems in scala: beyond flatmapEffect systems in scala: beyond flatmap
Effect systems in scala: beyond flatmap
 
lecture_1.pptx
lecture_1.pptxlecture_1.pptx
lecture_1.pptx
 
Iat
Iat Iat
Iat
 
[D2 COMMUNITY] Spark User Group - 머신러닝 인공지능 기법
[D2 COMMUNITY] Spark User Group - 머신러닝 인공지능 기법[D2 COMMUNITY] Spark User Group - 머신러닝 인공지능 기법
[D2 COMMUNITY] Spark User Group - 머신러닝 인공지능 기법
 
Lifi based communication system
Lifi based communication systemLifi based communication system
Lifi based communication system
 
How to win data science competitions with Deep Learning
How to win data science competitions with Deep LearningHow to win data science competitions with Deep Learning
How to win data science competitions with Deep Learning
 
Life Is Great
Life Is GreatLife Is Great
Life Is Great
 
DEF CON 27 - workshop - EIGENTOURIST - hacking with monads
DEF CON 27 - workshop - EIGENTOURIST - hacking with monadsDEF CON 27 - workshop - EIGENTOURIST - hacking with monads
DEF CON 27 - workshop - EIGENTOURIST - hacking with monads
 
Introduction to Concurrent Programming
Introduction to Concurrent ProgrammingIntroduction to Concurrent Programming
Introduction to Concurrent Programming
 
The FullStack Education Paradox
The FullStack Education ParadoxThe FullStack Education Paradox
The FullStack Education Paradox
 
Dsp lab
Dsp labDsp lab
Dsp lab
 
Fuzzy logic member functions
Fuzzy logic member functionsFuzzy logic member functions
Fuzzy logic member functions
 
Parallel Optimization in Machine Learning
Parallel Optimization in Machine LearningParallel Optimization in Machine Learning
Parallel Optimization in Machine Learning
 
Learning English Essay Blogspot
Learning English Essay BlogspotLearning English Essay Blogspot
Learning English Essay Blogspot
 
Coding wp2-comparative study-si(1)
Coding wp2-comparative study-si(1)Coding wp2-comparative study-si(1)
Coding wp2-comparative study-si(1)
 
Fuzzy Logic Seminar with Implementation
Fuzzy Logic Seminar with ImplementationFuzzy Logic Seminar with Implementation
Fuzzy Logic Seminar with Implementation
 
Microcontroladores: Programación del microcontrolador PIC en C
Microcontroladores: Programación del microcontrolador PIC en CMicrocontroladores: Programación del microcontrolador PIC en C
Microcontroladores: Programación del microcontrolador PIC en C
 
Deep Learning and Automatic Differentiation from Theano to PyTorch
Deep Learning and Automatic Differentiation from Theano to PyTorchDeep Learning and Automatic Differentiation from Theano to PyTorch
Deep Learning and Automatic Differentiation from Theano to PyTorch
 

More from Vidya Academy of Science and Technology, Thalakkottukara-P.O., Thrissur- 680501, Kerala, India.

More from Vidya Academy of Science and Technology, Thalakkottukara-P.O., Thrissur- 680501, Kerala, India. (8)

Dr. s. swapna kumar's selected sing song list 2015
Dr. s. swapna kumar's selected sing song list 2015Dr. s. swapna kumar's selected sing song list 2015
Dr. s. swapna kumar's selected sing song list 2015
 
Effective time managements faculty
Effective time managements  facultyEffective time managements  faculty
Effective time managements faculty
 
Spice
SpiceSpice
Spice
 
Students personalty development
Students personalty developmentStudents personalty development
Students personalty development
 
All about managing college environment dr. s. swapna kumar
All about managing college environment  dr. s. swapna kumarAll about managing college environment  dr. s. swapna kumar
All about managing college environment dr. s. swapna kumar
 
Wireless communication dr. s. swapna kumar
Wireless communication  dr. s. swapna kumarWireless communication  dr. s. swapna kumar
Wireless communication dr. s. swapna kumar
 
Goal setting - dr. s. swapna kumar
Goal  setting - dr. s. swapna kumarGoal  setting - dr. s. swapna kumar
Goal setting - dr. s. swapna kumar
 
Vast 2014 18 batch pta orientation program- dr. s. swapna kumar
Vast 2014 18 batch pta orientation program- dr. s. swapna kumarVast 2014 18 batch pta orientation program- dr. s. swapna kumar
Vast 2014 18 batch pta orientation program- dr. s. swapna kumar
 

Recently uploaded

The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
heathfieldcps1
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
fonyou31
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
PECB
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
kauryashika82
 

Recently uploaded (20)

microwave assisted reaction. General introduction
microwave assisted reaction. General introductionmicrowave assisted reaction. General introduction
microwave assisted reaction. General introduction
 
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptxINDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
INDIA QUIZ 2024 RLAC DELHI UNIVERSITY.pptx
 
Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)Software Engineering Methodologies (overview)
Software Engineering Methodologies (overview)
 
Z Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot GraphZ Score,T Score, Percential Rank and Box Plot Graph
Z Score,T Score, Percential Rank and Box Plot Graph
 
Unit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptxUnit-IV- Pharma. Marketing Channels.pptx
Unit-IV- Pharma. Marketing Channels.pptx
 
A Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy ReformA Critique of the Proposed National Education Policy Reform
A Critique of the Proposed National Education Policy Reform
 
General AI for Medical Educators April 2024
General AI for Medical Educators April 2024General AI for Medical Educators April 2024
General AI for Medical Educators April 2024
 
Web & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdfWeb & Social Media Analytics Previous Year Question Paper.pdf
Web & Social Media Analytics Previous Year Question Paper.pdf
 
9548086042 for call girls in Indira Nagar with room service
9548086042  for call girls in Indira Nagar  with room service9548086042  for call girls in Indira Nagar  with room service
9548086042 for call girls in Indira Nagar with room service
 
Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17Advanced Views - Calendar View in Odoo 17
Advanced Views - Calendar View in Odoo 17
 
Measures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and ModeMeasures of Central Tendency: Mean, Median and Mode
Measures of Central Tendency: Mean, Median and Mode
 
Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..Sports & Fitness Value Added Course FY..
Sports & Fitness Value Added Course FY..
 
Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1Código Creativo y Arte de Software | Unidad 1
Código Creativo y Arte de Software | Unidad 1
 
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
BAG TECHNIQUE Bag technique-a tool making use of public health bag through wh...
 
The basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptxThe basics of sentences session 2pptx copy.pptx
The basics of sentences session 2pptx copy.pptx
 
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
Ecosystem Interactions Class Discussion Presentation in Blue Green Lined Styl...
 
Disha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdfDisha NEET Physics Guide for classes 11 and 12.pdf
Disha NEET Physics Guide for classes 11 and 12.pdf
 
Holdier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdfHoldier Curriculum Vitae (April 2024).pdf
Holdier Curriculum Vitae (April 2024).pdf
 
Beyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global ImpactBeyond the EU: DORA and NIS 2 Directive's Global Impact
Beyond the EU: DORA and NIS 2 Directive's Global Impact
 
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in DelhiRussian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
Russian Escort Service in Delhi 11k Hotel Foreigner Russian Call Girls in Delhi
 

Fuzzy logic (vast 2015)

  • 1. Dept. of Electronics and Communication Engg. Vision: Progress through the growing knowledge of Electronics and Communication technology. Mission: To emerge as a world class center of learning, research and development, integrating with the latest trends in Electronics and Communication Engineering for the service of humanity. 15.01.2015 Prof. Dr. S. Swapna Kumar Introduction to FUZZY LOGIC
  • 2. Professor Dr. Lotfali Asker Zadeh Born: February 4, 1921 (age 93) Baku, Soviet, Azerbaijan Professional affiliation Professor in the Graduate School, Computer Science Division Department of Electrical Engineering and Computer Sciences University of California Berkeley, CA 94720 -1776 Director, Berkeley Initiative in Soft Computing (BISC) zadeh@eecs.berkeley.edu http://www.cs.berkeley.edu/~zadeh/ Tel.(office): (510) 642-4959 Fax (office): (510) 642-1712 Tel.(home): (510) 526-2569 Fax (home): (510) 526-2433  1938: Alborz International High School, Tehran, Iran.  1942: B.S. engineering degree, University of Tehran, Iran.  1946 : M.S., Massachusetts Institute of Technology.  1949: PhD – (Electrical Engineering}, Columbia University.  Faculty member: Columbia University and the University of California-Berkeley.  1990: Retired from UC-Berkeley  Director of UC Berkeley Initiative on Soft Computing. 2
  • 3. Adversity *Fuzzy Logic: Intelligence, Control, and Information - J. Yen and R. Langari, Prentice Hall 1999 1964: Lotfi A. Zadeh, UC Berkeley, introduced the paper on fuzzy sets.  Idea of grade of membership was born  Sharp criticism from academic community  Name!  Theory’s emphasis on imprecision  Waste of government funds! 3
  • 4. History of Fuzzy Logic *Fuzzy Logic: Intelligence, Control, and Information - J. Yen and R. Langari, Prentice Hall 1999  1965: Zadeh introduced fuzzy set theory 1970s: research groups were form in JAPAN 1974: Mamdani, United Kingdom, developed the first fuzzy logic controller 1977: Dubois applied fuzzy sets in a comprehensive study of traffic conditions 1976-1987: Industrial application of fuzzy logic in Japan and Europe 1987-Present: Fuzzy Boom 4
  • 5. Precision is not ULTIMATE truth 5
  • 6. Traditional logic A rose is either RED or not RED. 6
  • 7. Traditional (crisp) logic What about this rose? 7
  • 8. Precision & Significant in Real world  Fuzzy logic relative importance of precision; when a rough answer will do. 8
  • 9. What/How……!!!! FastestSlow FastSlowest [ 0.1 – 0.25 ] [ 0.25 – 0.50 ] [ 0.50 – 0.75 ] [ 0.75 – 1.00 ]  Very tall ~ 7f  Tall ~ 6f  Average ~ 5f  Short ~ 4f  Very short ~ 3f 9
  • 10. 10 What is FUZZY LOGIC?  Fuzzy logic:  A way to represent variation or imprecision in logic  A way to make use of natural language in logic  Approximate reasoning  Linguistic variables:  Temp: {freezing, cool, warm, hot}  Cloud Cover: {overcast, partly cloudy, sunny}  Speed: {slow, fast}  Problem-solving methodology  Definite conclusion
  • 11. Fuzzy Sets NOTE: FUZZY SET IS NOT A “SET” but is a mapping A x x x XA {( , ( ))| } Universe or universe of discourseFuzzy set Membership Function (MF) A fuzzy set is totally characterized by a membership function (MF). Integer 11
  • 12. Membership function  A membership function (MF) is a curve that maps input space to a membership value between 0 and 1.                            cxif cxbif bc xc bxaif ab ax axif xA 0 0 )( a b c x µA(x) 1 0 12
  • 14. 14  Is water colorless?  CRISP Yes = 1, No = 0  Is I am honest?  Extremely honest = 1  Very honest = 0.80  Honest at times = 0.4  Extremely dishonest = 0 Crisp Vs.. Fuzzy
  • 15. Membership Functions  Fuzzy logic Connectives:  Fuzzy Disjunction,   Fuzzy Conjunction,  1550 70 90 1103010 Temp. (F°) Freezing Cool Warm Hot 0 1 0.7 0.3 How cool is 36 F° ? µA(x) Michio SugenoEbrahim Mamdani
  • 16. Fuzzy Logic System 16 Crisp Input Fuzzification Rules De-Fuzzification Crisp Output Result “antecedent” “consequent” Begin End
  • 17. FUZZY LOGIC USING MATLAB 17
  • 19. User Interface Layout: FIS Editor 19
  • 20. User Interface Layout: MF Editor 20
  • 21. User Interface Layout: MF Editor 21
  • 22. User Interface Layout: Rule Editor 22
  • 23. User Interface Layout: Rule Viewer 23 fis=readfis('ws') out=evalfis(scale,fis) out=result
  • 25. Fuzzy Logic Control of Washing Machines 25 BWA
  • 27. 27 Drawbacks to Fuzzy logic  Requires tuning of membership functions  Fuzzy Logic control may not scale well to large or complex problems  Deals with imprecision, and vagueness, but not uncertainty
  • 28. Fuzzy Logic Applications  Aerospace  Automotive  Business  Chemical Industry  Defense  Electronics  Financial  Industrial  Manufacturing  Marine  Medical  Signal Processing  Telecommunications  Transportation 28
  • 29. Summary  Fuzzy logic provides an alternative way to represent linguistic and subjective attributes of the real world in computing.  It is able to be applied to control systems and other applications in order to improve the efficiency and simplicity of the design process. 29
  • 30. 30 References  L. Zadah, “Fuzzy sets as a basis of possibility” Fuzzy Sets Systems, Vol. 1, pp3-28, 1978.  T. J. Ross, “Fuzzy Logic with Engineering Applications”, McGraw-Hill, 1995.  K. M. Passino, S. Yurkovich, "Fuzzy Control" Addison Wesley, 1998.  Google…..