Chap 3: Fuzzy Rules and Fuzzy Reasoning - PowerPoint PPT Presentation

1 / 28
About This Presentation
Title:

Chap 3: Fuzzy Rules and Fuzzy Reasoning

Description:

Title: Chap 3: Fuzzy Rules and Fuzzy Reasoning Last modified by: Sony Customer Document presentation format: Letter Paper (8.5x11 in) Other titles – PowerPoint PPT presentation

Number of Views:313
Avg rating:3.0/5.0
Slides: 29
Provided by: acir150
Category:

less

Transcript and Presenter's Notes

Title: Chap 3: Fuzzy Rules and Fuzzy Reasoning


1
Chap 3 Fuzzy Rules and Fuzzy Reasoning
Fuzzy Rules and Fuzzy Reasoning
  • Provided J.-S. Roger Jang
  • Modified Vali Derhami

2
Outline
  • Extension principle
  • Fuzzy relations
  • Fuzzy if-then rules
  • Compositional rule of inference
  • Fuzzy reasoning

3
Extension Principle
A is a fuzzy set on X
The image of A under f( ) is a fuzzy set B
where yi f(xi), i 1 to n.
If f( ) is a many-to-one mapping, then
4
Fuzzy Relations
  • A fuzzy relation R is a 2D MF
  • Examples
  • x is close to y (x and y are numbers)
  • x depends on y (x and y are events)
  • x and y look alike (x, and y are persons or
    objects)
  • If x is large, then y is small (x is an observed
    reading and Y is a corresponding action)

5
Max-Min Composition
  • The max-min composition of two fuzzy relations R1
    (defined on X and Y) and R2 (defined on Y and Z)
    is
  • Properties
  • Associativity
  • Distributivity over union
  • Week distributivity over intersection
  • Monotonicity

6
Max-Star Composition
  • Max-product composition
  • In general, we have max- composition
  • where is a T-norm operator.

7
Linguistic Variables
  • A numerical variables takes numerical values
  • Age 65
  • A linguistic variables takes linguistic values
  • Age is old
  • A linguistic values is a fuzzy set.
  • All linguistic values form a term set
  • T(age) young, not young, very young, ...
  • middle aged, not middle aged, ...
  • old, not old, very old, more or
    less old, ...
  • not very yound and not very old,
    ...

8
Linguistic Values (Terms)
complv.m
9
Linguistic Hedges
Very
Somewhat
Extremely
10
Fuzzy Partition
  • Fuzzy partitions formed by the linguistic values
    young, middle aged, and old

lingmf.m
11
Fuzzy If-Then Rules
  • General format
  • If x is A then y is B
  • Examples
  • If pressure is high, then volume is small.
  • If the road is slippery, then driving is
    dangerous.
  • If a tomato is red, then it is ripe.
  • If the speed is high, then apply the brake a
    little.

12
Fuzzy If-Then Rules
Two ways to interpret If x is A then y is B
A coupled with B
A entails B
y
y
B
B
x
x
A
A
13
Fuzzy If-Then Rules
  • Two ways to interpret If x is A then y is B
  • A coupled with B (A and B)
  • A entails B (not A or B)
  • Material implication
  • Propositional calculus
  • Extended propositional calculus
  • Generalization of modus ponens

14
Fuzzy If-Then Rules
  • Fuzzy implication function

A coupled with B
fuzimp.m
15
Fuzzy If-Then Rules
A entails B
fuzimp.m
16
Compositional Rule of Inference
  • Derivation of y b from x a and y f(x)

y
y
b
b
y f(x)
y f(x)
a
x
x
a
a and b points y f(x) a curve
a and b intervals y f(x) an interval-valued
function
17
Compositional Rule of Inference
  • a is a fuzzy set and y f(x) is a fuzzy relation

cri.m
18
Fuzzy Reasoning
  • Modus ponens
  • Generalized Modus ponens
  • Approximate reasoning or fuzzy reasoning

19
Fuzzy Reasoning
  • Single rule with single antecedent
  • Rule if x is A then y is B
  • Fact x is A
  • Conclusion y is B

And Method
Degree of compatibility
And Method is a T- norm such as min, or Prod
Implication Method
Implication Method is a T-norm such as min, or
Prod
20
Fuzzy Reasoning
  • Graphic Representation
  • And method min
  • Implication method min

A
A
B
?
x
y
A
B
y
x
x is A
y is B
21
Fuzzy Reasoning
  • Single rule with multiple antecedent
  • Rule if x is A and y is B then z is C
  • Fact x is A and y is B
  • Conclusion z is C

Degree of compatibility
Degree of compatibility
And Method
And Method
Firing Strength
Implication Method
22
Fuzzy Reasoning
  • Graphic Representation
  • And method min
  • Implication method min

T-norm
A
B
A
B
C
?
z
x
y
A
B
C
z
x
y
x is A
y is B
z is C
23
Fuzzy Reasoning
  • Multiple rules with multiple antecedent
  • Rule 1 if x is A1 and y is B1 then z is C1
  • Rule 2 if x is A2 and y is B2 then z is C2
  • Fact x is A and y is B
  • Conclusion z is C

24
Fuzzy Reasoning
  • Multiple rules with multiple antecedent

Firing strength of rule1
Implication
And Method
Aggregation Method is Sum or a S-norm such as Max.
Aggregation Method
25
Fuzzy Reasoning
  • Graphics representation
  • And method min, Implication min, Aggr. Max

A1
B1
A
B
C1
?1
Z
X
Y
A2
B2
A
B
C2
?2
Z
X
Y
T-norm
A
B
C
Z
X
Y
x is A
y is B
z is C
26
Fuzzy Reasoning MATLAB Demo
  • gtgt ruleview mam21

27
Other Variants
  • Some terminology
  • Degrees of compatibility (match)
  • Firing strength
  • Qualified (induced) MFs
  • Overall output MF

28
Assignment 4
  • 3-2 ,3-4 , and 3-11 from ch.3 (Jang)
  • Dead line
Write a Comment
User Comments (0)
About PowerShow.com