Fuzzy Logic Based on a system of non-digital (continuous & fuzzy without crisp boundaries) set theory and rules. Developed by Lotfi Zadeh in 1965 Its advantage.

Slides:



Advertisements
Similar presentations
International Conference on Electrical and control Engineering, p.p , Sept Study on online judgement model of boiler combustion stability.
Advertisements

Fuzzy Expert System  An expert might say, “ Though the power transformer is slightly overloaded, I can keep this load for a while”.  Another expert.
Introduction to Fuzzy Control Lecture 10.1 Appendix E.
Fuzzy logic Fuzzy Expert Systems Yeni Herdiyeni Departemen Ilmu Komputer.
AI TECHNIQUES Fuzzy Logic (Fuzzy System). Fuzzy Logic : An Idea.
Fuzzy Logic Based on a system of non-digital (continuous & fuzzy without crisp boundaries) set theory and rules. Developed by Lotfi Zadeh in 1965 Its advantage.
Fuzzy Expert System.
AI – CS364 Hybrid Intelligent Systems Overview of Hybrid Intelligent Systems 07 th November 2005 Dr Bogdan L. Vrusias
WELCOME TO THE WORLD OF FUZZY SYSTEMS. DEFINITION Fuzzy logic is a superset of conventional (Boolean) logic that has been extended to handle the concept.
Fuzzy Logic Dave Saad CS498. Origin Proposed as a mathematical model similar to traditional set theory but with the possibility of partial set membership.
Introduction What is Fuzzy Logic? HOW DOES FL WORK? Differences between Classical set (crisps) and Fuzzy set theory Example 1 Example 2 Classifying Houses.
Introduction to Fuzzy Logic Control
Fuzzy Systems and Applications
The Equivalence between fuzzy logic controllers and PD controllers for single input systems Professor: Chi-Jo Wang Student: Nguyen Thi Hoai Nam Student.
Teachers Name : Suman Sarker Telecommunication Technology Subject Name : Computer Controller System & Robotics Subject Code : 6872 Semester :7th Department.
Fuzzy Logic. Priyaranga Koswatta Mundhenk and Itti, 2007.
What are Neuro-Fuzzy Systems A neuro-fuzzy system is a fuzzy system that uses a learning algorithm derived from or inspired by neural network theory to.
1 Prediction of Software Reliability Using Neural Network and Fuzzy Logic Professor David Rine Seminar Notes.
FUZZY LOGIC Babu Appat. OVERVIEW What is Fuzzy Logic? Where did it begin? Fuzzy Logic vs. Neural Networks Fuzzy Logic in Control Systems Fuzzy Logic in.
CPSC 386 Artificial Intelligence Ellen Walker Hiram College
Fuzzy Sets Introduction/Overview Material for these slides obtained from: Modern Information Retrieval by Ricardo Baeza-Yates and Berthier Ribeiro-Neto.
Fuzzy Rules 1965 paper: “Fuzzy Sets” (Lotfi Zadeh) Apply natural language terms to a formal system of mathematical logic
 Definition Definition  Bit of History Bit of History  Why Fuzzy Logic? Why Fuzzy Logic?  Applications Applications  Fuzzy Logic Operators Fuzzy.
Mobile Robot Navigation Using Fuzzy logic Controller
FUZZY LOGIC 1.
INVENTORY CONTROL AS IDENTIFICATION PROBLEM BASED ON FUZZY LOGIC ALEXANDER ROTSHTEIN Dept. of Industrial Engineering and Management, Jerusalem College.
Neural-Network-Based Fuzzy Logical Control and Decision System 主講人 虞台文.
Fuzzy Systems Michael J. Watts
Lec 34 Fuzzy Logic Control (II)
© 2005 Prentice Hall, Decision Support Systems and Intelligent Systems, 7th Edition, Turban, Aronson, and Liang 12-1 Chapter 12 Advanced Intelligent Systems.
Fuzzy Sets and Control. Fuzzy Logic The definition of Fuzzy logic is a form of multi-valued logic derived frommulti-valued logic fuzzy setfuzzy set theory.
PART 9 Fuzzy Systems 1. Fuzzy controllers 2. Fuzzy systems and NNs 3. Fuzzy neural networks 4. Fuzzy Automata 5. Fuzzy dynamic systems FUZZY SETS AND FUZZY.
Homework 5 Min Max “Temperature is low” AND “Temperature is middle”
PhD. Prof. FADI ISSA IONEL NAFTANAILA.  Measure of success of a project:  Time management systems:  Processes of Time Management area: ◦ Define ◦ Sequence.
2008/9/15fuzzy set theory chap01.ppt1 Introduction to Fuzzy Set Theory.
AI Fuzzy Systems. History, State of the Art, and Future Development Sde Seminal Paper “Fuzzy Logic” by Prof. Lotfi Zadeh, Faculty in Electrical.
Fuzzy Expert System n Introduction n Fuzzy sets n Linguistic variables and hedges n Operations of fuzzy sets n Fuzzy rules n Summary.
1 Lecture 4 The Fuzzy Controller design. 2 By a fuzzy logic controller (FLC) we mean a control law that is described by a knowledge-based system consisting.
Mohammed Mahdi Computer Engineering Department Philadelphia University Monzer Krishan Electrical Engineering Department Al-Balqa.
1 Pattern Recognition: Statistical and Neural Lonnie C. Ludeman Lecture 2 Nanjing University of Science & Technology.
Introduction of Fuzzy Inference Systems By Kuentai Chen.
A Presentation on Adaptive Neuro-Fuzzy Inference System using Particle Swarm Optimization and it’s Application By Sumanta Kundu (En.R.No.
Chapter 12 Case Studies Part B. Control System Design.
Chapter 13 (Continued) Fuzzy Expert Systems 1. Fuzzy Rule-based Expert System 2.
Introduction to Fuzzy Logic and Fuzzy Systems
Artificial Intelligence CIS 342
Fuzzy Systems Michael J. Watts
FUZZY NEURAL NETWORKS TECHNIQUES AND THEIR APPLICATIONS
Fuzzy expert systems Fuzzy inference Mamdani fuzzy inference
Artificial Intelligence
Stanisław H. Żak School of Electrical and Computer Engineering
Fuzzy Logics.
Fuzzy Logic and Fuzzy Sets
Homework 8 Min Max “Temperature is low” AND “Temperature is middle”
Introduction to Fuzzy Logic
Artificial Intelligence and Adaptive Systems
Introduction To Intelligent Control
Dr. Unnikrishnan P.C. Professor, EEE
منطق فازی.
Dr. Unnikrishnan P.C. Professor, EEE
FUZZIFICATION AND DEFUZZIFICATION
Chapter 12 Advanced Intelligent Systems
فازی سازی و غیرفازی سازی
Homework 9 Min Max “Temperature is low” AND “Temperature is middle”
This time: Fuzzy Logic and Fuzzy Inference
Fuzzy Logic Colter McClure.
Dr. Unnikrishnan P.C. Professor, EEE
Hybrid intelligent systems:
Fuzzy Logic Bai Xiao.
Fuzzy Logic KH Wong Fuzzy Logic v.9a.
Presentation transcript:

Fuzzy Logic Based on a system of non-digital (continuous & fuzzy without crisp boundaries) set theory and rules. Developed by Lotfi Zadeh in 1965 Its advantage is its ability to deal with vague systems and its use of linguistic variables. An accurate quantitative model is not required to control a plant or determine appropriate action. Leads to faster and simpler program development of system controllers. It can be a decision support system tool for managers

Fuzzy Logic Example Automotive Speed Controller 3 inputs: speed (5 levels) acceleration (3 levels) distance to destination (3 levels) 1 output: power (fuel flow to engine) Set of rules to determine output based on input values

Fuzzy Logic Example

Example Rules IF speed is TOO SLOW and acceleration is DECELERATING, THEN INCREASE POWER GREATLY IF speed is SLOW and acceleration is DECREASING, THEN INCREASE POWER SLIGHTLY IF distance is CLOSE, THEN DECREASE POWER SLIGHTLY...

Output Determination Degree of membership in an output fuzzy set now represents each fuzzy action. Fuzzy actions are combined to form a system output. Fuzzy Logic Example

Steps Fuzzification: determines an input's % membership in overlapping sets. Rules: determine outputs based on inputs and rules. Combination/Defuzzification: combine all fuzzy actions into a single fuzzy action and transform the single fuzzy action into a crisp, executable system output. May use centroid of weighted sets.

Fuzzy Logic Example Note there would be a total of 95 different rules for all combinations of inputs of 1, 2, or 3 at a time. ( 5x3x3 + 5x3 + 5x3 + 3x ) In practice, a system won't require all the rules. System tweaked by adding or changing rules and by adjusting set boundaries. System performance can be very good but not usually optimized by traditional metrics (minimize RMS error).

Fuzzy Logic Summary Doesn't require an understanding of process but any knowledge will help formulate rules. Complicated systems may require several iterations to find a set of rules resulting in a stable system. Combining Neural Networks with fuzzy logic reduces time to establish rules by analyzing clusters of data. Possible applications: Master Production Schedule, Material Requirements Planning, Inventory Capacity Planning

Classical Feedback Control

Modern Control

Model Reference Adaptive Control