+ All Categories
Home > Documents > Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Date post: 28-Dec-2015
Category:
Upload: barnaby-greene
View: 223 times
Download: 2 times
Share this document with a friend
Popular Tags:
28
Fuzzy Control – Configuration – Design choices – Takagi-Sugeno controller
Transcript
Page 1: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Fuzzy Control

– Configuration – Design choices– Takagi-Sugeno controller

Page 2: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Direct Control

Deviations Actions OutputsRef

Controller

End-user

Inferenceengine

Rulebase

Plant

Page 3: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Building Blocks

Fuzzy controller

Inferenceengine

Rulebase Defuzzi

-ficationPostpro-cessing

Fuzzi-fication

Prepro-cessing

Page 4: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Nonlinear Input Scaling

-5 0 5

-100

-50

0

50

100

measured input

sca

led

inp

ut

Page 5: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

If-Then Rule Base

1. If error is Neg and change in error is Neg then output is NB

2. If error is Neg and change in error is Zero then output is NM

3. If error is Neg and change in error is Pos then output is Zero

4. If error is Zero and change in error is Neg then output is NM

5. If error is Zero and change in error is Zero then output is Zero

6. If error is Zero and change in error is Pos then output is PM

7. If error is Pos and change in error is Neg then output is Zero

8. If error is Pos and change in error is Zero then output is PM

9. If error is Pos and change in error is Pos then output is PB

Page 6: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Relational Rule Format

Error Change in error Control

Pos Pos PB

Pos Zero PM

Pos Neg Zero

Zero Pos PM

Zero Zero Zero

Zero Neg NM

Neg Pos Zero

Neg Zero NM

Neg Neg NB

Page 7: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Tabular Rule Format

Change in error

Neg Zero Pos

Neg NB NM Zero

Error Zero NM Zero PM

Pos Zero PM PB

Page 8: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Connectives

)(),(max

)(),(min

xxBA

xxBA

BA

BA

)()()()(

)()(

xxxxBA

xxBA

BABA

BA

minimum

maximum

algebraic product

probabilistic sum

Page 9: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

FLS I/O Families

-1 -0.5 0 0.5 10

0.5

1

Input

Mem

bers

hip

-1 -0.5 0 0.5 10

0.5

1

Output

Mem

bers

hip

NegZero

Pos

Page 10: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Examples Of Primary Sets

-100 0 1000

0.5

1

(a)-100 0 1000

0.5

1

(d)-100 0 1000

0.5

1

(g)-100 0 1000

0.5

1

(j)-100 0 1000

0.5

1

(m)

-100 0 1000

0.5

1

(b)-100 0 1000

0.5

1

(e)-100 0 1000

0.5

1

(h)-100 0 1000

0.5

1

(k)-100 0 1000

0.5

1

(n)

-100 0 1000

0.5

1

(c)-100 0 1000

0.5

1

(f)-100 0 1000

0.5

1

(i)-100 0 1000

0.5

1

(l)-100 0 1000

0.5

1

(o)

Page 11: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Inference And Terminology

AND

Aggregation

Accumulation

Defuzzification

Activation

4

5

Page 12: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Defuzzification

0 50 100

0

0.5

1

RM

BOACO

G

MOM

LM

Page 13: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Rule Based Controllers

1. If error is Neg then control is Neg

2. If error is Zero then control is Zero

3. If error is Pos then control is Pos

Page 14: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Mamdani Inference

-100 0 1000

0.5

1error

-100 0 1000

0.5

1control

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

u = -25.7

Page 15: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

FLS Inference

-100 0 1000

0.5

1error

-100 0 1000

0.5

1control

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

u = -29.7

Page 16: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Sugeno Inference

-100 0 1000

0.5

1error

-100 0 1000

0.5

1control

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

-100 0 1000

0.5

1

u = -36.3

Page 17: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Singleton Output

1. If error is Pos then control is 10

2. If error is Zero then control is 0

3. If error is Neg then control is -10

Page 18: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

First Order Output

1. If error is Pos then control is a2*error + b2

2. If error is Neg then control is a1*error + b1

Page 19: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Interpolation (Takagi-Sugeno)

0 50 1000

50

100

150

(a)

outp

ut

1

2

0 50 1000

0.5

1

(b)

mem

bers

hip

Page 20: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Rule Base To Table

Page 21: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Look-Up Table

Change in error

-100 -50 0 50 100

Error

100 0 40 100 100 200

50 -40 0 61 121 160

0 -100 -61 0 61 100

-50 -100 -121 -61 0 40

-100 -200 -160 -100 -40 0

Page 22: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Control Surface

-100

0

100

-100

0

100-200

0

200

ECE

u

-100 -50 0 50 1000

0.2

0.4

0.6

0.8

1

input family

me

mb

ers

hip

Page 23: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Linear Controller

-100

0

100

-100

0

100-200

0

200

ECE

u

-100 -50 0 50 1000

0.2

0.4

0.6

0.8

1

input family

me

mb

ers

hip

Page 24: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Linear Rule Base

Page 25: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Conditions For Linearity

• Triangular sets, crossing at = 0.5• Rules: complete -combination• Define as *• Use conclusion singletons, positioned at sum of input

peak positions• Use sum-accumulation and COGS defuzzification

Page 26: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Simplification of 4 rules

1. If error is Neg and change in error is Neg then control is NB3. If error is Neg and change in error is Pos then control is Zero7. If error is Pos and change in error is Neg then control is Zero9. If error is Pos and change in error is Pos then control is PB

PBPosPos CEEu )1(

is

Page 27: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Simplification of 9 rules1. If error is Neg and change in error is Neg then output is NB2. If error is Neg and change in error is Zero then output is NM3. If error is Neg and change in error is Pos then output is Zero4. If error is Zero and change in error is Neg then output is NM5. If error is Zero and change in error is Zero then output is Zero6. If error is Zero and change in error is Pos then output is PM7. If error is Pos and change in error is Neg then output is Zero8. If error is Pos and change in error is Zero then output is PM9. If error is Pos and change in error is Pos then output is PB

is

PBNegPosNegPos CECEEEu 2

1

Page 28: Fuzzy Control –Configuration –Design choices –Takagi-Sugeno controller.

Summary Of Choices

• Rule-base related choices: # of inputs and outputs, rules, universes, continuous or discrete, # of membership functions, their overlap and width, singleton conclusions

• Inference engine choices: Connectives, modifiers, activation operation, aggregation operation, accumulation operation

• Defuzzification method: COG, COGS, BOA, MOM, LM, RM

• Pre- and postprocessing: Scaling, quantization, sampling time


Recommended