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Fuzzy Logic and Approximate Reasoning
1. Fuzzy Propositions 2. Inference from Conditional Propositions 3. Approximate Reasoning 4. Fuzzy Control
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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.
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Fuzzy Proposition Unconditional and Unqualified Example:
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Unconditional and Qualified Propositions
Truth qualified and Probability qualified Truth qualified “Tina is young is very true” (See Fig. 8.2)
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Unconditional and Qualified Propositions
Probability qualified (See Fig. 8.3) Note: Truth quantifiers = “True, False” with hedges Probability quantifiers =“Likely, Unlikely” with hedges
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Conditional and Unqualified Propositions
Example with Lukaseiwicz implication
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Conditional and Qualified Propositions
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Fuzzy Quantifiers Absolute Quantifiers Fuzzy Numbers:
about 10, much more than 100, at least 5
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Fuzzy Quantifiers Fuzzy Number with Connectives
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Fuzzy Quantifiers Relative Quantifier
Example: “almost all”, “about half”, ”most” See Fig. 8.5
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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
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Inference from Conditional Fuzzy Propositions
Crisp Case (See Fig. 8.6 & Fig. 8.7)
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Inference from Conditional Fuzzy Propositions
Fuzzy Case Compositional Rule of Inference Modus Ponen
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Inference from Conditional Fuzzy Propositions
Modus Tollen Hypothetical Syllogism
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Approximate Reasoning
Expert System Expert User Knowledge Aq. Module Explanatory Interface Knowledge Base Inference Engine Data Base (Fact) Meta KB Expert System
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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
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Fuzzy Implications Crisp to fuzzy extension of implication
S-Implication from 1
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Fuzzy Implications R-Implications from 2 QL-Implication from 3
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Selection of Fuzzy Implication
Criteria Modus Ponen Modus Tollen Syllogism Some operators satisfies the criteria for 4 kinds of intersection (t-norm) operators
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Multi-conditional AR General Schema
Step1: Calculate degree of consistency
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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°)
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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
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Multi-conditional AR
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Multi-conditional AR Interpretation of rule connection Disjunctive
Conjunctive 4 ways of inference
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The Role of Fuzzy Relation Equations
Theorem Condition of solution and Solution itself If the condition does not satisfy, approximate solution should be considered.
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