Title: M.Yamakita
1Introduction To Intelligent Control
- M.Yamakita
- Dept. of Mechanical and Control Systems Eng.
- Tokyo Inst. Of Tech.
2- Controlled system becomes more and more complex.
- It is almost impossible to represent mathematical
differential and difference equation
representation of the systems.
Emergent technology is needed !
Intelligent Control
3Trends from 60
Artificial Intelligence (AI)
Crisp Logic
Fuzzy Logic
Symbolic Representation
Non-Symbolic Representation (ANN)
Control Theory
Classical Control Theory (PID)
Modern Control Theory Robust Control
Theory Adaptive Control Theory Hybrid System
Control
4Whats Intelligent Control ?
Intelligent Control
(
Intelligent Control ? Fuzzy Control
5Structure Of Intelligent Control
1. Hierarchical Intelligent Control (Albus,
Saridis)
2. Reactive Intelligent Control (Brooks)
(Subsumption Architecture)
6Hierarchical Intelligent Control (Saridis)
PRECISION
INTELLIGENCE
7Reactive Intelligent Control (Brooks)
Modify the World
Create Maps
Discover New Area
Avoid Collisions
Move Around
8Supporting Technologies
1. Extensions of conventional control technologies
Robust optimal control
Adaptive control
Learning control
2. New technologies
FAN(Fuzzy, AI, and Neural network) technology
(Fukuda)
Soft computing (Zadeh)
9Dynamical System Representation(State Space
Representation)
10Robust Optimal Control
Set of uncertain systems
A nominal system
Model set of uncertain systems
11Adaptive Control
12Symbolic System Representation(Rule Based
Representation)
Area3
Area2
?
Area1
Classical AI, Automaton etc.
13Crisp Logic vs. Fuzzy Logic
Tall
Mr.A
180cm
170cm
?
Mrs.B
(
170cm
160cm
Mr.C
Short
14When we describe real world symbolically, there
always exist gray zone state. It is very
difficult to describe the gray zone property by
conventional crisp logic. Or, we must define
undesirably many categories.
Fuzzy Logic
15Introduction of membership functions
Degree of property
100
50
)
x
160
180
170
Height
Short
Tall
16Perceptron
O1
O2
B
B
A
C
A
C
D
A--B B--C C--D
A--B (A is connected to B) B--C C--A
Triangle
NOT Triangle
Human easily recognize O2 as triangle !
17Mimic the brain function !
18No Hidden Layer
(Rosenbratto Type Perceptron)
19Multi Layered Neural Network
Adjustable Weights
Activation Function
. .
Generalized delta rule, Back-propagation algorithm
(Amari, Rumelhalt)
20References
- 1.M.M.Gupta,N.k.SinhaIntelligent Control
Systems, - IEEE Press. (1996)
- 2. K.Furuta et.Intelligent Control, Corona Pub.
(1988) - (in Japanese)
- 3.B.Widrow, E.Walach Adaptive Inverse
Control,Prentice Hall (1996)