Fuzzy Logic and Computing with Words. Ning Xiong. School of Innovation, Design, and Engineering Mälardalen University. Motivations
|
|
- Hector Bell
- 6 years ago
- Views:
Transcription
1 /3/22 Fuzzy Logic and Computing with Words Ning Xiong School of Innovation, Design, and Engineering Mälardalen University Motivations Human centric intelligent systems is a hot trend in current research, entailing more computer-human interaction. Humans are more comfortable to express opinions in vague terms in natural language; they also prefer to receive information about system behavior in abstract and comprehensible formulations. Complex, ill-defined processes difficult for description and analysis by exact mathematical techniques Precision is not always the goal to strive for. Tolerance of imprecision can lead to tractability, robustness, and short computation/reaction time
2 /3/22 Significance of Fuzzy Theory We need Fuzzy logic and fuzzy theory as powerful means of manimulation of vague and uncertaion information, and to create systems that are much closer in spirit to human thinking and reasoning Enhancing Classic AI Knowledge Base Sentences Judgment New sentence The classic AI only concerns binary statement/judgments AI augmented with fuzzy logic can reason with sentences with uncertainty or partial truth, which indeed reflect pervasive phenomena in real world. 2
3 /3/22 Outline Basic concepts of fuzzy logic and fuzzy set theory Liguistic fuzzy rules Computing with words via fuzzy logic Procedure of fuzzy reasoning and decision making Two illustrative examples of fuzzy reasoning What is Fuzzy Logic Fuzzy logic is not logic that is fuzzy, but a precise logic that is used to cope with fuzziness and approximate reasoning Fuzzy Logic is the theory of fuzzy sets, sets that Accomodate vagueness and uncertainty. 3
4 /3/22 Father of Fuzzy Logic Lotfi Zadeh, Professor in the Graduate School, Computer Science Division Department of Elec. Eng. and Computer Sciences, University of California Berkeley. In 965 Zadeh published his famous paper Fuzzy sets. In 973 Zadeh proposed his theory of Fuzzy Logic. In 996 Zadeh published the new pioneering paper Fuzzy logic=computing with words Fuzzy vs. Crisp Sets Fuzzy set indicates how much (to which extent) an element belongs to it. Crisp set indicates whether an element belongs to it 4
5 /3/22 Classical (Crisp) Set young = { x x 3 } characteristic function: m young (x) m young (x) = { : x 3 : x> 3 A= young 3 x [years] Fuzzy Set Definition : A fuzzy set F in a universe of discourse U is characterized by membership function m F, which takes values in the interval [,], i.e., m F : U [,] Example: If U contains finite number of elements, fuzzy set F can be denoted by: F={m F (u )/u, m F (u 2 )/u 2,, m F (u n )/u n } 5
6 /3/22 Fuzzy versus Classical Logic Classical Logic Element x belongs to set A or it does not: m A (x) {,} Fuzzy Logic Element x belongs to set A with a certain degree of membership: m A (x) [,] m A (x) A= young m A (x) A= young x [years] x [years] Types of Membership Functions Trapezoid: <a,b,c,d> Gaussian: N(m,s) m(x) m(x) s a b c d x m x m(x) Triangular: <a,b,b,d> Singleton: (a,) m(x) a b d x a x 6
7 /3/22 Operators on Fuzzy Sets Union (of crisp sets): whether an element belongs to either set Union (of fuzzy sets): How much an element belongs to either set m A B (x)=max{m A (x),m B (x)} m A B (x)=min{,m A (x)+m B (x)} m A (x) m B (x) m A (x) m B (x) x x Operators on Fuzzy Sets Intersection (of crisp sets): whether an element belongs to both sets Intersection (of fuzzy sets): How much an element belongs to both sets m A B (x)=min{m A (x),m B (x)} m A B (x)=m A (x) m B (x) m A (x) m B (x) m A (x) m B (x) x x 7
8 /3/22 Operators on Fuzzy Sets Complement (of a crisp set): whether an element is excluded from the set Complement (of a fuzzy set): how much an element is excluded from the set Negation: m A (x)= - m A (x) Classical law does not always hold: m A A (x) m A A (x) Example : m A (x) =.6 m A (x) = - m A (x) =.4 m A A (x) = max(.6,.4) =.6 m A A (x) = min(.6,.4) =.4 Fuzzy Relations A classical relation R is a crisp subset in the product space X Y, defined by m R (x,y) = if (x,y) R if (x,y) R Good_friend ={(Johan, Mary), (Alice,Mathias)} A fuzzy relation R is a fuzzy subset in the product space X Y, defined by m R (x,y) [,] m R (x,y) describes to which degree x and y are related by R. 8
9 /3/22 Fuzzy Relations Example: X = { rainy, cloudy, sunny } Y = { swimming, bicycling, camping, reading } X/Y swimming bicycling camping reading rainy..2.. cloudy sunny Linguistic Variables A linguistic variable has a set of linguistic terms/values. Each linguistic value corresponds to a fuzzy set and explained with its membership function linguistic variable : temperature linguistics terms (fuzzy sets) : { cold, warm, hot } m(x) m cold m warm m hot 2 6 x [C] 9
10 /3/22 Fuzzy Rules A fuzzy rule is a linguistic expression of causal dependencies between linguistic variables in form of if-then statements General form: If <antecedent> then <consequence> Example: if temperature is cold and oil price is cheap then heating is high linguistic variables linguistic values/terms (fuzzy sets) Fuzzy Rule Base Heating Oil price: cheap normal expensive Temperature : cold warm hot high high medium high medium low medium low low A fuzzy rule base is a collection of fuzzy if-then rules
11 /3/22 Fuzzy vs. Crisp Rules Oscillation, sharply changing behavior due to crisp rules If a robot decides its speed based on the below rules, it can only go two speeds, mph or 3mph, and no speed in between. if sensor value is between and 27, then go mph if sensor value is between 28 and 255, then go 3mph Fuzzy rules can produce continuous, gracefully changing behavior, due to the overlapping fuzzy membership functions. Fuzzy Logic and Computing with Words Computing with words is inspired by human capability to perform a variety of mental and physical tasks without measurements and computations Computing with words is a methodology in which words are the objects for computing and reasoning Words are considered as linguistic terms corresponding to fuzzy sets defined by membership functions Fuzzy logic plays a vital role in computing with words By approximation: Fuzzy Logic = Computing with Words
12 /3/22 Natural Language Processing with Fuzzy Technique Natural language is inherently imprecise young m-precisiation young With fuzzy technique we can translate natural language into a precisiated language so that it can be computed by machines. The fuzzy logic opens the door to computation with information described in natural language. Perception Based Modeling To describe the subject of interest with a set of linguistic rules, in which antecedents and consequences comprise perceptions or words. Perception-based function explanation: summarize the function with linguistic if-then rules Perception-based system modeling: describe system behavior with perceptions and linguistic rules X S Y 2
13 /3/22 Perception Based Function Explanation X If X is small then Y is small If X is medium then Y is medium If X is large then Y is small Fuzzy linguistic rules are transparent Extract fuzzy linguistic rules from neural network Modeling of a Dynamic System (Inverted Pendulum) 3
14 /3/22 Mathematical Model of the System Perception-Based (Linguistic) Model 4
15 /3/22 How to Build Perception Model Interview with experts: summarize their ideas into linguistic rules. But this approach suffers from knowledge acquisition bottleneck. Data based fuzzy modeling: Learn a linguistic fuzzy model from the available data Fuzzy Decision Making Procedure Inputs Fuzzification Rule matching Firing strengths of rules Fuzzy inference Suggestions by rules (fuzzy) Crisp output value Defuzzification Overall output fuzzy set Fuzzy aggregation Fuzzification: compute the membership degrees for each input variable respect to its linguistic terms. Rule Matching: calculating firing strengths (degrees of satisfaction) of the individual rules Fuzzy Inference: determine the suggestions of rules according to firing strengths and rule conclusions Fuzzy Aggregation: combine suggestions from individual rules into an overall output fuzzy set. Sometimes this step is also called accumulation. Defuzzification: determine a crisp value from the overall output membership function as the final result or solution. 5
16 /3/22 Fuzzification Determine the degree of membership for each term of an input variable : temperature : t=8 C m(x) m cold m warm m hot 2 6 m cold (t)=.2, m warm(t)=.6, m hot (t)= t [C] Rule Matching Calculate the firing strength of every rule by combining the individual membership degrees for all terms involved in the condition part of the rule through fuzzy AND: min-operator.5 m cold (t)=.5 5C.3 t m cheap (p)=.3 $3/barrel p R i if temperature is cold... and oil is cheap... t i = min{m cold (t), m cheap (p)} = min{.5,.3} =.3 6
17 /3/22 Fuzzy Inference Inference step: For each rule apply the firing strength to modify its consequent fuzzy set, resulting in a new output fuzzy set as the suggestion of the rule. m high (h) m resp. (h)... t =.3 h... then heating is high min-inference: m resp. = min{t, m high } m high (h) m resp. (h)... t =.3 h prod-inference: m resp. = t m high Fuzzy Aggregation Aggregation: combine suggestions of individual rules to yield an overall output fuzzy set. The overall output fuzzy set is the union of suggestions (output fuzzy sets) from individual rules F F F F m F 2 ( F F2 n y) max m ( y), m ( y),, m ( y) F n F F2 F3 h 7
18 /3/22 Defuzzification Determine crisp value from output membership function. Commonly used is the Center of Gravity method: m consequent (h) COG 73 h COG b a m ( x) xdx b a A m ( x) dx A COG b x a b x a m ( x) x A m ( x) A An Example of Fuzzy Reasoning R: if temp is cold then valve is open R2: if temp is warm then valve is half R3: if temp is hot then valve is close m open m half m close v m cold m warm m hot min(.7, (m open )) Overall fuzzy set measured temperature t=.7 t3 =. t2=.2 temp.2 min(.2, (m half )) v v Center of gravity as crisp output for valve setting 8
19 /3/22 Other example: Financial Advisor Financial Recommendation Fuzzy Rules: a) If saved amount is inadequate, then percentage in saving is High b) If saved amount is adequate and income is adequate, then the percentage in saving is Low c) If saved amount is adequate and income is inadequate, then the percentage in saving Medium. Low Medium High Percentage To Classify Saved Amount Fuzzy rules to classify saved amount:.if a saved amount is Small, it is inadequate 2.If a saved amount is Large, it is adequate The meanings of Small and Large for saved amount are defined for the individual as follows:. Small Large Dollar Given the saved amount x=22 (for the individual), we have t =m Small (x)=.3, t 2 =m Large (x)=.7, m Inadequate (x)=.3, m Adequate (x)=.7 9
20 /3/22 To Classify Income Fuzzy rules to classify income: 3. If income is Small and Steady, it is inadequate 4. If income is Large and Steady, it is adequate 5. If income is Unsteady, it is inadequate The meanings of Small and Large for income are defined for the individual as follows:. Small Large Dollar Given steady income y=25 (for the individual), we have t 3 =m Small (y)=.8, t 4 =m Large (y)=.2, t 5 = m Inadequate (y)=.8, m Adequate (y)=.2 Reasoning about Investment Rewriting Financial Recommendation Fuzzy Rules: a) If x is inadequate, then percentage v is High b) If x is adequate and y is adequate, then percentage v is Low c) If x is adequate and y is inadequate, then percentage v is Medium The firing strength of the above fuzzy rules are as follows: t a =m Inadequate (x)=.3, t b =min(m Adequate (x), m Adequate (y))=.2 t c =min(m Adequate (x),m Inadequaate (y))=.7 The output fuzzy sets from the rules are: m Fa (v)=t a m High (v)=.3 m High (v) m Fb (v)=t b m Low (v)=.2 m Low (v) m Fc (v)=t c m Medium (v)=.7 m Medium (v) 2
21 /3/22 Deciding Final Percentage The overall output fuzzy set is derived as: F=F a F b F c Finally the percentage in saving is decided by calculating the center of gravity: v* b a m ( v) vdv b a F m ( v) dv F Summary Fuzzy sets are characterized by membership functions between and Fuzzy rules describes causal relations between variables in terms of fuzzy sets Fuzzy decision making based on fuzzy rules includes: fuzzification, rule matching, fuzzy inference, aggregation and defuzzification. Fuzzy logic enables computing with words (word has to be m-precisiated before computation) Fuzzy systems are receiving huge applications, including fuzzy control, fuzzy modeling, function explanation, pattern recognition, decision analysis, 2
22 /3/22 Reading Guidance Please read the lecture slides carefully. You can also study the relevant knowledge from some other books. Examples are:.chapter 4 Fuzzy expert systems in Artificial Intelligence A guide to intelligent systems, by Michael Negnevitsky, Addison Wesley, 22 2.Chapters 2-22, in Computational Intelligence: An Introduction, by Andries P. Engelbrecht, John Wiley &Sons, 27. Some additional reading material is available under the folder \content\fuzzy Supplementary Reading\ in blackboard. 22
ME 534. Mechanical Engineering University of Gaziantep. Dr. A. Tolga Bozdana Assistant Professor
ME 534 Intelligent Manufacturing Systems Chp 4 Fuzzy Logic Mechanical Engineering University of Gaziantep Dr. A. Tolga Bozdana Assistant Professor Motivation and Definition Fuzzy Logic was initiated by
More informationEEE 8005 Student Directed Learning (SDL) Industrial Automation Fuzzy Logic
EEE 8005 Student Directed Learning (SDL) Industrial utomation Fuzzy Logic Desire location z 0 Rot ( y, φ ) Nail cos( φ) 0 = sin( φ) 0 0 0 0 sin( φ) 0 cos( φ) 0 0 0 0 z 0 y n (0,a,0) y 0 y 0 z n End effector
More informationOutline. Introduction, or what is fuzzy thinking? Fuzzy sets Linguistic variables and hedges Operations of fuzzy sets Fuzzy rules Summary.
Fuzzy Logic Part ndrew Kusiak Intelligent Systems Laboratory 239 Seamans Center The University of Iowa Iowa City, Iowa 52242-527 andrew-kusiak@uiowa.edu http://www.icaen.uiowa.edu/~ankusiak Tel: 39-335
More information2010/07/12. Content. Fuzzy? Oxford Dictionary: blurred, indistinct, confused, imprecisely defined
Content Introduction Graduate School of Science and Technology Basic Concepts Fuzzy Control Eamples H. Bevrani Fuzzy GC Spring Semester, 2 2 The class of tall men, or the class of beautiful women, do not
More informationFinancial Informatics IX: Fuzzy Sets
Financial Informatics IX: Fuzzy Sets Khurshid Ahmad, Professor of Computer Science, Department of Computer Science Trinity College, Dublin-2, IRELAND November 19th, 2008 https://www.cs.tcd.ie/khurshid.ahmad/teaching.html
More informationUncertain System Control: An Engineering Approach
Uncertain System Control: An Engineering Approach Stanisław H. Żak School of Electrical and Computer Engineering ECE 680 Fall 207 Fuzzy Logic Control---Another Tool in Our Control Toolbox to Cope with
More informationFinancial Informatics XI: Fuzzy Rule-based Systems
Financial Informatics XI: Fuzzy Rule-based Systems Khurshid Ahmad, Professor of Computer Science, Department of Computer Science Trinity College, Dublin-2, IRELAND November 19 th, 28. https://www.cs.tcd.ie/khurshid.ahmad/teaching.html
More informationModels for Inexact Reasoning. Fuzzy Logic Lesson 8 Fuzzy Controllers. Master in Computational Logic Department of Artificial Intelligence
Models for Inexact Reasoning Fuzzy Logic Lesson 8 Fuzzy Controllers Master in Computational Logic Department of Artificial Intelligence Fuzzy Controllers Fuzzy Controllers are special expert systems KB
More informationFuzzy Expert Systems Lecture 3 (Fuzzy Logic)
http://expertsys.4t.com Fuzzy Expert Systems Lecture 3 (Fuzzy Logic) As far as the laws of mathematics refer to reality, they are not certain, and so far as they are certain, they do not refer to reality.
More informationFuzzy Logic Notes. Course: Khurshid Ahmad 2010 Typset: Cathal Ormond
Fuzzy Logic Notes Course: Khurshid Ahmad 2010 Typset: Cathal Ormond April 25, 2011 Contents 1 Introduction 2 1.1 Computers......................................... 2 1.2 Problems..........................................
More informationWhat Is Fuzzy Logic?
Fuzzy logic What Is Fuzzy Logic? Form of multi-valued logic (algebra) derived from fuzzy set theory. Designed to deal with reasoning that is approximate rather than accurate. Consequence of the 1965 proposal
More informationFuzzy Expert Systems Lecture 3 (Fuzzy Logic)
Fuzzy Expert Systems Lecture 3 (Fuzzy Logic) As far as the laws of mathematics refer to reality, they are not certain, and so far as they are certain, they do not refer to reality. Albert Einstein With
More informationMODELLING THERMAL COMFORT FOR TROPICS USING FUZZY LOGIC
Eighth International IBPSA Conference Eindhoven, Netherlands August 11-14, 2003 MODELLING THERMAL COMFORT FOR TROPICS USING FUZZY LOGIC Henry Feriadi, Wong Nyuk Hien Department of Building, School of Design
More informationThis time: Fuzzy Logic and Fuzzy Inference
This time: Fuzzy Logic and Fuzzy Inference Why use fuzzy logic? Tipping example Fuzzy set theory Fuzzy inference CS 460, Sessions 22-23 1 What is fuzzy logic? A super set of Boolean logic Builds upon fuzzy
More informationRevision: Fuzzy logic
Fuzzy Logic 1 Revision: Fuzzy logic Fuzzy logic can be conceptualized as a generalization of classical logic. Modern fuzzy logic aims to model those problems in which imprecise data must be used or in
More informationFuzzy Logic and Fuzzy Systems Properties & Relationships
Fuzzy Logic and Fuzzy Systems Properties & Relationships Khurshid Ahmad, Professor of Computer Science, Department of Computer Science Trinity College, Dublin-2, IRELAND October 5th, 2011. https://www.cs.tcd.ie/khurshid.ahmad/teaching/teaching.html
More informationAPPLICATION OF AIR HEATER AND COOLER USING FUZZY LOGIC CONTROL SYSTEM
APPLICATION OF AIR HEATER AND COOLER USING FUZZY LOGIC CONTROL SYSTEM Dr.S.Chandrasekaran, Associate Professor and Head, Khadir Mohideen College, Adirampattinam E.Tamil Mani, Research Scholar, Khadir Mohideen
More informationFuzzy expert systems
The Islamic University of Gaza Faculty of Engineering Dept. of Computer Engineering ECOM5039:Artificial Intelligence Eng. Ibraheem Lubbad Fuzzy expert systems Main points: Fuzzy logic is determined as
More informationFuzzy Systems. Introduction
Fuzzy Systems Introduction Prof. Dr. Rudolf Kruse Christian Moewes {kruse,cmoewes}@iws.cs.uni-magdeburg.de Otto-von-Guericke University of Magdeburg Faculty of Computer Science Department of Knowledge
More informationThis time: Fuzzy Logic and Fuzzy Inference
This time: Fuzzy Logic and Fuzzy Inference Why use fuzzy logic? Tipping example Fuzzy set theory Fuzzy inference CS 460, Sessions 22-23 1 What is fuzzy logic? A super set of Boolean logic Builds upon fuzzy
More information3. Lecture Fuzzy Systems
Soft Control (AT 3, RMA) 3. Lecture Fuzzy Systems Fuzzy Knowledge 3. Outline of the Lecture 1. Introduction of Soft Control: definition and limitations, basics of "smart" systems 2. Knowledge representation
More informationFuzzy Systems. Introduction
Fuzzy Systems Introduction Prof. Dr. Rudolf Kruse Christoph Doell {kruse,doell}@iws.cs.uni-magdeburg.de Otto-von-Guericke University of Magdeburg Faculty of Computer Science Department of Knowledge Processing
More informationOUTLINE. Introduction History and basic concepts. Fuzzy sets and fuzzy logic. Fuzzy clustering. Fuzzy inference. Fuzzy systems. Application examples
OUTLINE Introduction History and basic concepts Fuzzy sets and fuzzy logic Fuzzy clustering Fuzzy inference Fuzzy systems Application examples "So far as the laws of mathematics refer to reality, they
More information5. Lecture Fuzzy Systems
Soft Control (AT 3, RMA) 5. Lecture Fuzzy Systems Fuzzy Control 5. Structure of the lecture. Introduction Soft Control: Definition and delimitation, basic of 'intelligent' systems 2. Knowledge representation
More information3. DIFFERENT MODEL TYPES
3-1 3. DIFFERENT MODEL TYPES It is important for us to fully understand a physical problem before we can select a solution strategy for it. Models are convenient tools that enhance our understanding and
More informationFundamentals. 2.1 Fuzzy logic theory
Fundamentals 2 In this chapter we briefly review the fuzzy logic theory in order to focus the type of fuzzy-rule based systems with which we intend to compute intelligible models. Although all the concepts
More informationFuzzy Logic. An introduction. Universitat Politécnica de Catalunya. Departament de Teoria del Senyal i Comunicacions.
Universitat Politécnica de Catalunya Departament de Teoria del Senyal i Comunicacions Fuzzy Logic An introduction Prepared by Temko Andrey 2 Outline History and sphere of applications Basics. Fuzzy sets
More informationThe Problem. Sustainability is an abstract concept that cannot be directly measured.
Measurement, Interpretation, and Assessment Applied Ecosystem Services, Inc. (Copyright c 2005 Applied Ecosystem Services, Inc.) The Problem is an abstract concept that cannot be directly measured. There
More informationApplied Logic. Lecture 3 part 1 - Fuzzy logic. Marcin Szczuka. Institute of Informatics, The University of Warsaw
Applied Logic Lecture 3 part 1 - Fuzzy logic Marcin Szczuka Institute of Informatics, The University of Warsaw Monographic lecture, Spring semester 2017/2018 Marcin Szczuka (MIMUW) Applied Logic 2018 1
More informationFuzzy Controller. Fuzzy Inference System. Basic Components of Fuzzy Inference System. Rule based system: Contains a set of fuzzy rules
Fuzz Controller Fuzz Inference Sstem Basic Components of Fuzz Inference Sstem Rule based sstem: Contains a set of fuzz rules Data base dictionar: Defines the membership functions used in the rules base
More informationWhat is fuzzy? A dictionary definition. And so what is a Fuzzy Set? events. a not clear Set? 1. Of or resembling fuzz.
Sterowanie rozmyte What is fuzzy? A dictionary definition 1. Of or resembling fuzz. 2. Not clear; indistinct: a fuzzy recollection of past events. 3. Not coherent; confused: a fuzzy plan of action. 4.
More informationA Hybrid Approach For Air Conditioning Control System With Fuzzy Logic Controller
International Journal of Engineering and Applied Sciences (IJEAS) A Hybrid Approach For Air Conditioning Control System With Fuzzy Logic Controller K.A. Akpado, P. N. Nwankwo, D.A. Onwuzulike, M.N. Orji
More informationCHAPTER V TYPE 2 FUZZY LOGIC CONTROLLERS
CHAPTER V TYPE 2 FUZZY LOGIC CONTROLLERS In the last chapter fuzzy logic controller and ABC based fuzzy controller are implemented for nonlinear model of Inverted Pendulum. Fuzzy logic deals with imprecision,
More informationVI Fuzzy Optimization
VI Fuzzy Optimization 1. Fuzziness, an introduction 2. Fuzzy membership functions 2.1 Membership function operations 3. Optimization in fuzzy environments 3.1 Water allocation 3.2 Reservoir storage and
More informationPrediction of Ultimate Shear Capacity of Reinforced Normal and High Strength Concrete Beams Without Stirrups Using Fuzzy Logic
American Journal of Civil Engineering and Architecture, 2013, Vol. 1, No. 4, 75-81 Available online at http://pubs.sciepub.com/ajcea/1/4/2 Science and Education Publishing DOI:10.12691/ajcea-1-4-2 Prediction
More informationA Powerful way to analyze and control a complex system
A Powerful way to analyze and control a complex system From the set theory point of view,it is a superset of conventional (Boolean) logic that has been extended to handle the concept of partial truth values
More informationCHAPTER 5 FUZZY LOGIC FOR ATTITUDE CONTROL
104 CHAPTER 5 FUZZY LOGIC FOR ATTITUDE CONTROL 5.1 INTRODUCTION Fuzzy control is one of the most active areas of research in the application of fuzzy set theory, especially in complex control tasks, which
More informationHandling Uncertainty using FUZZY LOGIC
Handling Uncertainty using FUZZY LOGIC Fuzzy Set Theory Conventional (Boolean) Set Theory: 38 C 40.1 C 41.4 C 38.7 C 39.3 C 37.2 C 42 C Strong Fever 38 C Fuzzy Set Theory: 38.7 C 40.1 C 41.4 C More-or-Less
More informationRamchandraBhosale, Bindu R (Electrical Department, Fr.CRIT,Navi Mumbai,India)
Indirect Vector Control of Induction motor using Fuzzy Logic Controller RamchandraBhosale, Bindu R (Electrical Department, Fr.CRIT,Navi Mumbai,India) ABSTRACT: AC motors are widely used in industries for
More informationLecture 1: Introduction & Fuzzy Control I
Lecture 1: Introduction & Fuzzy Control I Jens Kober Robert Babuška Knowledge-Based Control Systems (SC42050) Cognitive Robotics 3mE, Delft University of Technology, The Netherlands 12-02-2018 Lecture
More informationUNIVERSITY OF SURREY
UNIVERSITY OF SURREY B.Sc. Undergraduate Programmes in Computing B.Sc. Undergraduate Programmes in Mathematical Studies Level HE3 Examination MODULE CS364 Artificial Intelligence Time allowed: 2 hours
More informationHamidreza Rashidy Kanan. Electrical Engineering Department, Bu-Ali Sina University
Lecture 3 Fuzzy Systems and their Properties Hamidreza Rashidy Kanan Assistant Professor, Ph.D. Electrical Engineering Department, Bu-Ali Sina University h.rashidykanan@basu.ac.ir; kanan_hr@yahoo.com 2
More informationCS344: Introduction to Artificial Intelligence (associated lab: CS386)
CS344: Introduction to Artificial Intelligence (associated lab: CS386) Pushpak Bhattacharyya CSE Dept., IIT Bombay Lecture 2: Fuzzy Logic and Inferencing Disciplines which form the core of AI- inner circle
More information1. Brief History of Intelligent Control Systems Design Technology
Acknowledgments We would like to express our appreciation to Professor S.V. Ulyanov for his continuous help, value corrections and comments to the organization of this paper. We also wish to acknowledge
More informationUsing Fuzzy Logic as a Complement to Probabilistic Radioactive Waste Disposal Facilities Safety Assessment -8450
Using Fuzzy Logic as a Complement to Probabilistic Radioactive Waste Disposal Facilities Safety Assessment -8450 F. L. De Lemos CNEN- National Nuclear Energy Commission; Rua Prof. Mario Werneck, s/n, BH
More informationToday s s lecture. Lecture 16: Uncertainty - 6. Dempster-Shafer Theory. Alternative Models of Dealing with Uncertainty Information/Evidence
Today s s lecture Lecture 6: Uncertainty - 6 Alternative Models of Dealing with Uncertainty Information/Evidence Dempster-Shaffer Theory of Evidence Victor Lesser CMPSCI 683 Fall 24 Fuzzy logic Logical
More informationABSTRACT I. INTRODUCTION II. FUZZY MODEL SRUCTURE
International Journal of Scientific Research in Computer Science, Engineering and Information Technology 2018 IJSRCSEIT Volume 3 Issue 6 ISSN : 2456-3307 Temperature Sensitive Short Term Load Forecasting:
More informationIslamic University of Gaza Electrical Engineering Department EELE 6306 Fuzzy Logic Control System Med term Exam October 30, 2011
Islamic University of Gaza Electrical Engineering Department EELE 6306 Fuzzy Logic Control System Med term Exam October 30, 2011 Dr. Basil Hamed Exam Time 2:00-4:00 Name Solution Student ID Grade GOOD
More informationFUZZY CONTROL. Main bibliography
FUZZY CONTROL Main bibliography J.M.C. Sousa and U. Kaymak. Fuzzy Decision Making in Modeling and Control. World Scientific Series in Robotics and Intelligent Systems, vol. 27, Dec. 2002. FakhreddineO.
More informationRule-Based Fuzzy Model
In rule-based fuzzy systems, the relationships between variables are represented by means of fuzzy if then rules of the following general form: Ifantecedent proposition then consequent proposition The
More informationChapter 11 Fuzzy Logic Control
Chapter 11 Fuzzy Logic Control The control algorithms in Chap. 6 used exact mathematical computations to determine the signals used to control the behavior of a robot. An alternate approach is to use fuzzy
More informationUncertainty and Rules
Uncertainty and Rules We have already seen that expert systems can operate within the realm of uncertainty. There are several sources of uncertainty in rules: Uncertainty related to individual rules Uncertainty
More informationReduced Size Rule Set Based Fuzzy Logic Dual Input Power System Stabilizer
772 NATIONAL POWER SYSTEMS CONFERENCE, NPSC 2002 Reduced Size Rule Set Based Fuzzy Logic Dual Input Power System Stabilizer Avdhesh Sharma and MLKothari Abstract-- The paper deals with design of fuzzy
More informationIntelligent Systems and Control Prof. Laxmidhar Behera Indian Institute of Technology, Kanpur
Intelligent Systems and Control Prof. Laxmidhar Behera Indian Institute of Technology, Kanpur Module - 2 Lecture - 4 Introduction to Fuzzy Logic Control In this lecture today, we will be discussing fuzzy
More informationEnvironment Protection Engineering MATRIX METHOD FOR ESTIMATING THE RISK OF FAILURE IN THE COLLECTIVE WATER SUPPLY SYSTEM USING FUZZY LOGIC
Environment Protection Engineering Vol. 37 2011 No. 3 BARBARA TCHÓRZEWSKA-CIEŚLAK* MATRIX METHOD FOR ESTIMATING THE RISK OF FAILURE IN THE COLLECTIVE WATER SUPPLY SYSTEM USING FUZZY LOGIC Collective water
More informationFuzzy control systems. Miklós Gerzson
Fuzzy control systems Miklós Gerzson 2016.11.24. 1 Introduction The notion of fuzziness: type of car the determination is unambiguous speed of car can be measured, but the judgment is not unambiguous:
More informationFuzzy Logic Controller Based on Association Rules
Annals of the University of Craiova, Mathematics and Computer Science Series Volume 37(3), 2010, Pages 12 21 ISSN: 1223-6934 Fuzzy Logic Controller Based on Association Rules Ion IANCU and Mihai GABROVEANU
More informationCircuit Implementation of a Variable Universe Adaptive Fuzzy Logic Controller. Weiwei Shan
Circuit Implementation of a Variable Universe Adaptive Fuzzy Logic Controller Weiwei Shan Outline 1. Introduction: Fuzzy logic and Fuzzy control 2. Basic Ideas of Variable Universe of Discourse 3. Algorithm
More informationFuzzy Logic Approach for Short Term Electrical Load Forecasting
Fuzzy Logic Approach for Short Term Electrical Load Forecasting M. Rizwan 1, Dinesh Kumar 2, Rajesh Kumar 3 1, 2, 3 Department of Electrical Engineering, Delhi Technological University, Delhi 110042, India
More informationWhat is Fuzzy Logic? Fuzzy logic is a tool for embedding human knowledge (experience, expertise, heuristics) Fuzzy Logic
Fuzz Logic Andrew Kusiak 239 Seamans Center Iowa Cit, IA 52242 527 andrew-kusiak@uiowa.edu http://www.icaen.uiowa.edu/~ankusiak (Based on the material provided b Professor V. Kecman) What is Fuzz Logic?
More informationUncertain Logic with Multiple Predicates
Uncertain Logic with Multiple Predicates Kai Yao, Zixiong Peng Uncertainty Theory Laboratory, Department of Mathematical Sciences Tsinghua University, Beijing 100084, China yaok09@mails.tsinghua.edu.cn,
More informationFuzzy Sets, Fuzzy Logic, and Fuzzy Systems II
Fuzzy Sets, Fuzzy Logic, and Fuzzy Systems II SSIE 617 Fall 2008 Radim BELOHLAVEK Dept. Systems Sci. & Industrial Eng. Watson School of Eng. and Applied Sci. Binghamton University SUNY Radim Belohlavek
More informationMODELLING OF TOOL LIFE, TORQUE AND THRUST FORCE IN DRILLING: A NEURO-FUZZY APPROACH
ISSN 1726-4529 Int j simul model 9 (2010) 2, 74-85 Original scientific paper MODELLING OF TOOL LIFE, TORQUE AND THRUST FORCE IN DRILLING: A NEURO-FUZZY APPROACH Roy, S. S. Department of Mechanical Engineering,
More informationIntroduction to fuzzy sets
Introduction to fuzzy sets Andrea Bonarini Artificial Intelligence and Robotics Lab Department of Electronics and Information Politecnico di Milano E-mail: bonarini@elet.polimi.it URL:http://www.dei.polimi.it/people/bonarini
More informationis implemented by a fuzzy relation R i and is defined as
FS VI: Fuzzy reasoning schemes R 1 : ifx is A 1 and y is B 1 then z is C 1 R 2 : ifx is A 2 and y is B 2 then z is C 2... R n : ifx is A n and y is B n then z is C n x is x 0 and y is ȳ 0 z is C The i-th
More informationLecture 06. (Fuzzy Inference System)
Lecture 06 Fuzzy Rule-based System (Fuzzy Inference System) Fuzzy Inference System vfuzzy inference is the process of formulating the mapping from a given input to an output using fuzzy logic. Fuzzy Inference
More informationFuzzy Rules & Fuzzy Reasoning
Sistem Cerdas : PTK Pasca Sarjana - UNY Fuzzy Rules & Fuzzy Reasoning Pengampu: Fatchul Arifin Referensi: Jyh-Shing Roger Jang et al., Neuro-Fuzzy and Soft Computing: A Computational Approach to Learning
More informationAlgorithms for Increasing of the Effectiveness of the Making Decisions by Intelligent Fuzzy Systems
Journal of Electrical Engineering 3 (205) 30-35 doi: 07265/2328-2223/2050005 D DAVID PUBLISHING Algorithms for Increasing of the Effectiveness of the Making Decisions by Intelligent Fuzzy Systems Olga
More informationEFFECT OF VARYING CONTROLLER PARAMETERS ON THE PERFORMANCE OF A FUZZY LOGIC CONTROL SYSTEM
Nigerian Journal of Technology, Vol. 19, No. 1, 2000, EKEMEZIE & OSUAGWU 40 EFFECT OF VARYING CONTROLLER PARAMETERS ON THE PERFORMANCE OF A FUZZY LOGIC CONTROL SYSTEM Paul N. Ekemezie and Charles C. Osuagwu
More informationIntuitionistic Fuzzy Logic Control for Washing Machines
Indian Journal of Science and Technology, Vol 7(5), 654 661, May 2014 ISSN (Print) : 0974-6846 ISSN (Online) : 0974-5645 Intuitionistic Fuzzy Logic Control for Washing Machines Muhammad Akram *, Shaista
More informationFuzzy Logic. By Clifton F. Cobb
Fuzzy Logic By Clifton F. Cobb Abstract. Theroleoflogicinmathematicalactivitiesis indisputable. Indeed, it has become a cornerstone for many of the important achievements in the field of mathematics. This
More informationFUZZY CONTROL OF CHAOS
International Journal of Bifurcation and Chaos, Vol. 8, No. 8 (1998) 1743 1747 c World Scientific Publishing Company FUZZY CONTROL OF CHAOS OSCAR CALVO CICpBA, L.E.I.C.I., Departamento de Electrotecnia,
More informationFUZZY CONTROL OF CHAOS
FUZZY CONTROL OF CHAOS OSCAR CALVO, CICpBA, L.E.I.C.I., Departamento de Electrotecnia, Facultad de Ingeniería, Universidad Nacional de La Plata, 1900 La Plata, Argentina JULYAN H. E. CARTWRIGHT, Departament
More informationFailure Mode Screening Using Fuzzy Set Theory
International Mathematical Forum, 4, 9, no. 6, 779-794 Failure Mode Screening Using Fuzzy Set Theory D. Pandey a, Sanjay Kumar Tyagi b and Vinesh Kumar c a, c Department of Mathematics, C.C.S. University,
More informationSystem Performance Ratings of High Speed Nano Devices Using Fuzzy Logic
www.ijcsi.org 302 ormance Ratings of High Speed Nano Devices Using Fuzzy Logic Ak.Ashakumar Singh Y.Surjit Singh K.Surchandra Singh Department of Computer Science Dept. of Computer Science Dept. of Computer
More informationExtended IR Models. Johan Bollen Old Dominion University Department of Computer Science
Extended IR Models. Johan Bollen Old Dominion University Department of Computer Science jbollen@cs.odu.edu http://www.cs.odu.edu/ jbollen January 20, 2004 Page 1 UserTask Retrieval Classic Model Boolean
More informationInstitute for Advanced Management Systems Research Department of Information Technologies Åbo Akademi University. Fuzzy Logic Controllers - Tutorial
Institute for Advanced Management Systems Research Department of Information Technologies Åbo Akademi University Directory Table of Contents Begin Article Fuzzy Logic Controllers - Tutorial Robert Fullér
More informationFUZZY LOGIC CONTROLLER AS MODELING TOOL FOR THE BURNING PROCESS OF A CEMENT PRODUCTION PLANT. P. B. Osofisan and J. Esara
FUZZY LOGIC CONTROLLER AS MODELING TOOL FOR THE BURNING PROCESS OF A CEMENT PRODUCTION PLANT P. B. Osofisan and J. Esara Department of Electrical and Electronics Engineering University of Lagos, Nigeria
More informationTowards Smooth Monotonicity in Fuzzy Inference System based on Gradual Generalized Modus Ponens
8th Conference of the European Society for Fuzzy Logic and Technology (EUSFLAT 2013) Towards Smooth Monotonicity in Fuzzy Inference System based on Gradual Generalized Modus Ponens Phuc-Nguyen Vo1 Marcin
More informationA Study on the Fuzzy Modeling of Nonlinear Systems Using Kernel Machines
A Study on the Fuzzy Modeling of Nonlinear Systems Using Kernel Machines February 2007 Jongcheol Kim A Study on the Fuzzy Modeling of Nonlinear Systems Using Kernel Machines A Study on the Fuzzy Modeling
More informationIndex Terms Vague Logic, Linguistic Variable, Approximate Reasoning (AR), GMP and GMT
International Journal of Computer Science and Telecommunications [Volume 2, Issue 9, December 2011] 17 Vague Logic in Approximate Reasoning ISSN 2047-3338 Supriya Raheja, Reena Dadhich and Smita Rajpal
More informationNeural Networks & Fuzzy Logic
Journal of Computer Applications ISSN: 0974 1925, Volume-5, Issue EICA2012-4, February 10, 2012 Neural Networks & Fuzzy Logic Elakkiya Prabha T Pre-Final B.Tech-IT, M.Kumarasamy College of Engineering,
More informationCS 354R: Computer Game Technology
CS 354R: Computer Game Technology AI Fuzzy Logic and Neural Nets Fall 2017 Fuzzy Logic Philosophical approach Decisions based on degree of truth Is not a method for reasoning under uncertainty that s probability
More informationSOFT COMPUTING (PECS 3401)-FUZZY LOGIC
AS PER THE SYLLABUS OF BPUT FOR SEVENTH SEMESTER OF AE&IE BRANCH. RIT, BERHAMPUR SOFT COMPUTING (PECS 3401)-FUZZY LOGIC Lecture Notes KISHORE KUMAR SAHU CHAPTER 01 INTRODUCTION TO SOFT COMPUTING ORIGIN
More informationCOMP219: Artificial Intelligence. Lecture 19: Logic for KR
COMP219: Artificial Intelligence Lecture 19: Logic for KR 1 Overview Last time Expert Systems and Ontologies Today Logic as a knowledge representation scheme Propositional Logic Syntax Semantics Proof
More informationCHAPTER 4 FUZZY AND NEURAL NETWORK FOR SR MOTOR
CHAPTER 4 FUZZY AND NEURAL NETWORK FOR SR MOTOR 4.1 Introduction Fuzzy Logic control is based on fuzzy set theory. A fuzzy set is a set having uncertain and imprecise nature of abstract thoughts, concepts
More informationChapter 13 Uncertainty
Chapter 13 Uncertainty CS4811 Artificial Intelligence Nilufer Onder Department of Computer Science Michigan Technological University 1 Outline Types of uncertainty Sources of uncertainty Nonmonotonic logics
More informationDesign of Decentralized Fuzzy Controllers for Quadruple tank Process
IJCSNS International Journal of Computer Science and Network Security, VOL.8 No.11, November 2008 163 Design of Fuzzy Controllers for Quadruple tank Process R.Suja Mani Malar1 and T.Thyagarajan2, 1 Assistant
More informationWhere are we? Operations on fuzzy sets (cont.) Fuzzy Logic. Motivation. Crisp and fuzzy sets. Examples
Operations on fuzzy sets (cont.) G. J. Klir, B. Yuan, Fuzzy Sets and Fuzzy Logic: Theory and Applications, Prentice-Hall, chapters -5 Where are we? Motivation Crisp and fuzzy sets alpha-cuts, support,
More informationA New Method to Forecast Enrollments Using Fuzzy Time Series
International Journal of Applied Science and Engineering 2004. 2, 3: 234-244 A New Method to Forecast Enrollments Using Fuzzy Time Series Shyi-Ming Chen a and Chia-Ching Hsu b a Department of Computer
More informationCRITICALITY ASSESSMENT RISK; CONTRIBUTION OF FUZZY LOGIC
Yugoslav Journal of Operations Research 28 (2018), Number 1, 93 105 DOI: 10.2298/YJOR161113005M CRITICALITY ASSESSMENT RISK; CONTRIBUTION OF FUZZY LOGIC S. MASMOUDI Faculty of Economics and Management
More informationFuzzy Sets and Fuzzy Logic
Fuzzy Sets and Fuzzy Logic Crisp sets Collection of definite, well-definable objects (elements). Representation of sets: list of all elements ={x,,x n }, x j X elements with property P ={x x satisfies
More informationFuzzy Rule Based Candidate Selection Evaluator by Political Parties
Volume 8, No. 3, March April 2017 International Journal of Advanced Research in Computer Science REVIEW ARTICLE Available Online at www.ijarcs.info ISSN No. 0976-5697 Fuzzy Rule Based Candidate Selection
More informationFuzzy logic : principles and applications
École d été Franco Roumaine Commande Avancée des Systèmes & Nouvelles Technologies Informatiques CA NTI 2015 Fuzzy logic : principles and applications Dr. Ing. Professor-Researcher Co-responsable of ESEA
More informationRULE-BASED FUZZY EXPERT SYSTEMS
University of Waterloo Department of Electrical and Computer Engineering E&CE 457 Applied Artificial Intelligence RULE-BASED FUZZY EXPERT SYSTEMS July 3 rd, 23 Ian Hung, 99XXXXXX Daniel Tse, 99XXXXXX Table
More informationA NEW CLASS OF FUSION RULES BASED ON T-CONORM AND T-NORM FUZZY OPERATORS
A NEW CLASS OF FUSION RULES BASED ON T-CONORM AND T-NORM FUZZY OPERATORS Albena TCHAMOVA, Jean DEZERT and Florentin SMARANDACHE Abstract: In this paper a particular combination rule based on specified
More informationFuzzy Logic and Fuzzy Systems
Fuzzy Logic and Fuzzy Systems Revision Lecture Khurshid Ahmad, Professor of Computer Science, Department of Computer Science Trinity College, Dublin-2, IRELAND 24 February 2008. https://www.cs.tcd.ie/khurshid.ahmad/teaching.html
More informationLearning from Examples
Learning from Examples Adriano Cruz, adriano@nce.ufrj.br PPGI-UFRJ September 20 Adriano Cruz, adriano@nce.ufrj.br (PPGI-UFRJ) Learning from Examples September 20 / 40 Summary Introduction 2 Learning from
More informationPredictions of Indoor Thermal Comfort Level using Fuzzy Logic
IOSR Journal of Mechanical and Civil Engineering (IOSR-JMCE) e-issn: 2278-1684,p-ISSN: 2320-334X, Volume 11, Issue 3 Ver. II (May- Jun. 2014), PP 25-33 Predictions of Indoor Thermal Comfort Level using
More informationOPTIMAL CAPACITOR PLACEMENT USING FUZZY LOGIC
CHAPTER - 5 OPTIMAL CAPACITOR PLACEMENT USING FUZZY LOGIC 5.1 INTRODUCTION The power supplied from electrical distribution system is composed of both active and reactive components. Overhead lines, transformers
More information