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Fuzzy Inference and Reasoning
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Proposition
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Logic variable
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Basic connectives for logic variables
(1) Negation (2) Conjunction
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Basic connectives for logic variables
(3) Disjunction (4) Implication
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Logical function
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Logic Formula
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Tautology
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Tautology
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Predicate logic
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Fuzzy Propositions Assuming that truthand falsity are expressed by values 1 and 0, respectively, the degree of truth of each fuzzy proposition is expressed by a number in the unit interval [0, 1].
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Fuzzy Propositions
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p : temperature (V) is high (F).
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Fuzzy Propositions p : V is F is S
V is a variable that takes values v from some universal set V F is a fuzzy set onV that represents a fuzzy predicate S is a fuzzy truth qualifier In general, the degree of truth, T(p), of any truth-qualified proposition p is given for each v e V by the equation T(p) = S(F(v)).
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p : Age (V) is very(S) young (F).
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Representation of Fuzzy Rule
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Representation of Fuzzy Rule
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Fuzzy rule as a relation
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Fuzzy implications
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Example of Fuzzy implications
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Example of Fuzzy implications
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Example of Fuzzy implications
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Representation of Fuzzy Rule
Single input and single output Multiple inputs and single output Multiple inputs and Multiple outputs
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Representation of Fuzzy Rule
Multiple rules
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Compositional rule of inference
The inference procedure is called as the “compositional rule of inference”. The inference is determined by two factors : “implication operator” and “composition operator”. For the implication, the two operators are often used: For the composition, the two operators are often used:
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Representation of Fuzzy Rule
Max-min composition operator Mamdani: min operator for the implication Larsen: product operator for the implication
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One singleton input and one fuzzy output
Mamdani
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One singleton input and one fuzzy output
Mamdani
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One singleton input and one fuzzy output
Larsen
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One singleton input and one fuzzy output
Larsen
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One fuzzy input and one fuzzy output
Mamdani
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One fuzzy input and one fuzzy output
Mamdani
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Ri consists of R1 and R2
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Example
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Two singleton inputs and one fuzzy output
Mamdani
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Two singleton inputs and one fuzzy output
Mamdani
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Example
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Two fuzzy inputs and one fuzzy output
Mamdani
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Two fuzzy inputs and one fuzzy output
Mamdani
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Two fuzzy inputs and one fuzzy output
Mamdani
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Example
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Multiple rules
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Multiple rules
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Multiple rules
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Example
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Mamdani method
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Mamdani method
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Mamdani method
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Mamdani method
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Larsen method
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Larsen method
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Larsen method
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Larsen method
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Fuzzy Logic Controller
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Inference
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Inference
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Inference
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Inference
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Defuzzification Mean of Maximum Method (MOM)
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Defuzzification Center of Area Method (COA)
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Defuzzification Bisector of Area (BOA)
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