Presentation is loading. Please wait.

Presentation is loading. Please wait.

Fuzzy Logic and Approximate Reasoning

Similar presentations


Presentation on theme: "Fuzzy Logic and Approximate Reasoning"— Presentation transcript:

1 Fuzzy Logic and Approximate Reasoning
1. Fuzzy Propositions 2. Inference from Conditional Propositions 3. Approximate Reasoning 4. Fuzzy Control

2 Fuzzy Proposition Fuzzy Proposition:
The proposition whose truth value is [0,1] Classification of Fuzzy Proposition Unconditional or Conditional Unqualified of Qualified Focus on how a proposition can take truth value from fuzzy sets, or membership functions.

3 Fuzzy Proposition Unconditional and Unqualified Example:

4 Unconditional and Qualified Propositions
Truth qualified and Probability qualified Truth qualified “Tina is young is very true” (See Fig. 8.2)

5 Unconditional and Qualified Propositions
Probability qualified (See Fig. 8.3) Note: Truth quantifiers = “True, False” with hedges Probability quantifiers =“Likely, Unlikely” with hedges

6 Conditional and Unqualified Propositions
Example with Lukaseiwicz implication

7 Conditional and Qualified Propositions

8 Fuzzy Quantifiers Absolute Quantifiers Fuzzy Numbers:
about 10, much more than 100, at least 5

9 Fuzzy Quantifiers Fuzzy Number with Connectives

10 Fuzzy Quantifiers Relative Quantifier
Example: “almost all”, “about half”, ”most” See Fig. 8.5

11 Linguistic Hedges Modifiers
“very”, ”more or less”, “fairly”, “extremely” Interpretation Example: Age(John)=26 Young(26)=0.8 Very Young(26)=0.64 Fairly Young(26)=0.89

12 Inference from Conditional Fuzzy Propositions
Crisp Case (See Fig. 8.6 & Fig. 8.7)

13 Inference from Conditional Fuzzy Propositions
Fuzzy Case Compositional Rule of Inference Modus Ponen

14 Inference from Conditional Fuzzy Propositions
Modus Tollen Hypothetical Syllogism

15 Approximate Reasoning
Expert System Expert User Knowledge Aq. Module Explanatory Interface Knowledge Base Inference Engine Data Base (Fact) Meta KB Expert System

16 Approximate Reasoning
Expert System Knowledge Base (Long-Term Memory) Fuzzy Production Rules (If-Then) Data Base (Short-Term Memory) Fact from user or Parameters Inference Engine Data Driven (Forward Chaining, Modus Ponen) Goal Driven (Backward Chaining, Modus Tollen) Meta-Knowledge Base Explanatory Interface Knowledge Acquisition Module

17 Fuzzy Implications Crisp to fuzzy extension of implication
S-Implication from 1

18 Fuzzy Implications R-Implications from 2 QL-Implication from 3

19 Selection of Fuzzy Implication
Criteria Modus Ponen Modus Tollen Syllogism Some operators satisfies the criteria for 4 kinds of intersection (t-norm) operators

20 Multi-conditional AR General Schema
Step1: Calculate degree of consistency

21 Multi-conditional AR Note: Step2: Calculate conclusion Example:
HIGH = 0.1/1.5m + 0.3/1.6m + 0.7/1.7m + 0.8/1.8m + 0.9/1.9m + 1.0/2m + 1.0/2.1m + 1.0/2.2m OPEN = 0.1/30° + 0.2/40° + 0.3/50° + 0.5/60° + 0.8/70° + 1.0/80° + 1.0/90° (if Completely OPEN is 90°)

22 Multi-conditional AR Fact: “Current water level is rather HIGH… around 1.7m, maybe.” rather HIGH = 0.5/1.6m + 1.0/1.7m + 0.8/1.8m + 0.2/1.9m If HIGH then OPEN : R(HIGH, OPEN) = A  B rather HIGH : A’ = rather HIGH a little OPEN : B’ = a little OPEN

23 Multi-conditional AR

24 Multi-conditional AR Interpretation of rule connection Disjunctive
Conjunctive 4 ways of inference

25 The Role of Fuzzy Relation Equations
Theorem Condition of solution and Solution itself If the condition does not satisfy, approximate solution should be considered.


Download ppt "Fuzzy Logic and Approximate Reasoning"

Similar presentations


Ads by Google