improving a pid controller using fuzzy logic

29
Improving A PID Controller Using Fuzzy Logic Andrew Thompson Ni Li Ara Tchobanian Professor: Riadh Habash TA: Hanliu Chen

Upload: laasya

Post on 02-Feb-2016

70 views

Category:

Documents


2 download

DESCRIPTION

Improving A PID Controller Using Fuzzy Logic. Andrew Thompson Ni Li Ara Tchobanian Professor: Riadh Habash TA: Hanliu Chen. Problem. Although PID controllers are able to provide adequate control for simple systems, they are unable to compensate for disturbances. - PowerPoint PPT Presentation

TRANSCRIPT

Page 1: Improving A PID Controller Using Fuzzy Logic

Improving A PID Controller Using Fuzzy Logic

Andrew ThompsonNi Li

Ara TchobanianProfessor: Riadh Habash

TA: Hanliu Chen

Page 2: Improving A PID Controller Using Fuzzy Logic

Problem

• Although PID controllers are able to provide adequate control for simple systems, they are unable to compensate for disturbances.

• We will use Fuzzy Logic controllers to improve the PID controllers ability to handle disturbances.

Page 3: Improving A PID Controller Using Fuzzy Logic

Hypothesis

• We feel like all the designs for the fuzzy compensator will be an improvement upon the PID controller and will have greater ability to deal with disturbances.

Page 4: Improving A PID Controller Using Fuzzy Logic

IEEE Papers

Page 5: Improving A PID Controller Using Fuzzy Logic

Group Contribution

• Andrew Thompson: – Research and development of Fuzzy precompensator

design and rules– Research and development of PID Controller

• Ni Li: – Research and development of various Fuzzy logic

compensator (PD, PI) designs and rules

• Ara Tchobanian:– Research and modeling of DC motor– Research and development of PID Controller

Page 6: Improving A PID Controller Using Fuzzy Logic

Procedure

• We first needed to decide upon a system which we could control using a PID controller as well as be able to introduce a disturbance.

• We chose to model a basic DC motor.

Page 7: Improving A PID Controller Using Fuzzy Logic

DC Motor

We used the following values for the model of the DC Motor

• moment of inertia of the rotor J = 0.01 kg.m2/s2

• damping ratio of the mechanical system b = 0.1 Nms

• electromotive force constant K = 0.01 Nm/Amp

• electric resistance R = 1 ohm• electric inductance L = 0.5 H• input V: Source Voltage• output Θ’: Speed of motor

Page 8: Improving A PID Controller Using Fuzzy Logic

DC Motor Model

Page 9: Improving A PID Controller Using Fuzzy Logic

Step 2

• We next had to design a PID controller to control the speed of the motor.

Page 10: Improving A PID Controller Using Fuzzy Logic

PID Controller

• We wanted the PID controller to satisfy the following criteria:– Settling time less than 2 seconds

– Overshoot less than 5%

– Steady-state error less than 1%

• By using trial and error, and examining the step response we obtained the following gains:

• Kp = 100, Ki = 200, Kd = 10

Page 11: Improving A PID Controller Using Fuzzy Logic

PID Model

Page 12: Improving A PID Controller Using Fuzzy Logic

Step 3

• The final step in the development of our controllers was to design various forms Fuzzy logic compensators in order to improve the performance of the PID controller and to allow it to account for the disturbance.

• We designed three types of Fuzzy logic Compensators– Fuzzy PI– Fuzzy PD– Fuzzy Precompensated

Page 13: Improving A PID Controller Using Fuzzy Logic

Fuzzy logic Introduction Fuzzy logic is a problem-solving control system methodology that lends itself to implementation in systems ranging from simple, small, embedded micro-controllers to large, networked, multi-channel PC or workstation-based data acquisition and control systems. It can be implemented in hardware, software, or a combination of both.

Inputs

Rules

Output

Page 14: Improving A PID Controller Using Fuzzy Logic

Fuzzy Precompensated PID

Membership Functions, and Fuzzy Rule Sets

Page 15: Improving A PID Controller Using Fuzzy Logic

Surface and Rule Sets

Page 16: Improving A PID Controller Using Fuzzy Logic

Fuzzy Precompensated PID Model

Page 17: Improving A PID Controller Using Fuzzy Logic

Fuzzy logic Equation for the fuzzy PI

Kp*X + Ki*Y = Z

The output for the fuzzy

Y example input for Ki

The gain for Ki

X example input for Kp

The gain for Kp

Page 18: Improving A PID Controller Using Fuzzy Logic

Membership functions for the PI component.

• (a) Input membership functions. • (b) Output membership functions.

L

A)

B)

Optical

HighLow

Page 19: Improving A PID Controller Using Fuzzy Logic

Fuzzy Logic Rules for the PI

• The P is Low and I is Low then output is –R

• The P is Low and I is Optimal then output is –(R+S)/2

• The P is Low and I is High then output is -S

• The P is Optimal and I is Low then output is (–R+S)/2

• The P is Optimal and I is Optimal then output is 0

• The P is Optimal and I is High then output is (R-S)/2

• The P is High and I is Low then output is S

• The P is High and I is optimal then output is (R+S)/2

• The P is High and I is High then output is R

Where R=L1*Ki+L2*Kp S=L2*Kp+L1*Ki

Page 20: Improving A PID Controller Using Fuzzy Logic

Linear Fuzzy PI Control Table

Output Low ( D) Optimal ( D ) High ( D )

Low ( P ) -R -(R+S)/2 -S

Optimal ( P ) -(R-S)/2 0 (R-S)/2

High ( P ) S (R+S)/2 R

Surface Viewer

Page 21: Improving A PID Controller Using Fuzzy Logic

Fuzzy PI Model

Page 22: Improving A PID Controller Using Fuzzy Logic

Fuzzy PD

Membership Functions

Page 23: Improving A PID Controller Using Fuzzy Logic

Fuzzy PD Model

Page 24: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsStep Response

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD

Page 25: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsStep Response with sine disturbance

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD

Page 26: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsStep Response with Gaussian Noise disturbance

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD

Page 27: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsSine Input

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD

Page 28: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsSine Input with sine disturbance

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD

Page 29: Improving A PID Controller Using Fuzzy Logic

Simulation ResultsSine Response with Gaussian Noise disturbance

PIDFuzzy

Precompensated

FuzzyPI

Fuzzy PD