A First Course in FUZZY and NEURAL CONTROL

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4.2. MAIN APPROACHES TO FUZZY CONTROL 141

Note that the premise is in the same form as for the Mamdani and Larsen
methods, but the consequent is of a different form.
In the Takagi-Sugeno method eachfjis a linear function


fj(x 1 ,...,xn)=a 0 j+

Xn

i=1

αijxi

Other forms in common use are quadratic


fj(x 1 ,...,xn)=a 0 j+

Xn

i=1

αijx^2 i

and trigonometric


fj(x 1 ,...,xn)=exp

√n
X

i=1

αijsinxi

!

The choice of the consequentsfj(x)depends upon the particular application.


Example 4.1The Takagi-Sugeno rules provide a means to interpolate between
piecewise linear mappings. For the partial mapping


-6

-4

-2

0

2

4

6

8

10

-3 -2 -1 (^1) x 2 3
y=



3+3xforx≤− 1
−1+4xforx≥ 1
take two fuzzy sets


A 1 (x)=




1 if x≤− 1
1 −x
2 if −^1 ≤x≤^1
0 if 1 ≤x

and


A 2 (x)=




0 if x≤− 1
1+x
2 if −^1 ≤x≤^1
1 if 1 ≤x
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