FLC and NN Based Alpha Compensation OF Three Phase Controlled Rectifier FED DC-Motor Drive (original) (raw)

Neuro-Fuzzy Controller Design for a Dc Motor Drive

This paper presents a neuro-fuzzy controller design for speed control of DC motor. The most commonly used controller for the speed control of dc motor is the conventional Proportional -Integral-Derivative (PID) controller. The PID controller has some disadvantages like: high overshoot, sensitivity to controller gains and slow response. Fuzzy control and neuro-fuzzy control are proposed in this study. The performances of the two controllers are compared with PID controller performance. In this paper, neural networks are used in a novel way to solve the problem of tuning a fuzzy logic controller. The neuro fuzzy controller uses neural network learning techniques to tune membership functions. For the speed control of dc motor drives, it is observed that neuro -fuzzy controller gives a better response compared to other controllers.

A Comparative Study of PI , IP , Fuzzy and Neuro-Fuzzy Controllers for Speed Control of DC Motor Drive

2010

This paper presents a comparative study of various controllers for the speed control of DC motor. The most commonly used controller for the speed control of dc motor is ProportionalIntegral (P-I) controller. However, the P-I controller has some disadvantages such as: the high starting overshoot, sensitivity to controller gains and sluggish response due to sudden disturbance. So, the relatively new Integral-Proportional (I-P) controller is proposed to overcome the disadvantages of the P-I controller. Further, two Fuzzy logic based controllers namely; Fuzzy control and Neuro-fuzzy control are proposed and the performance these controllers are compared with both P-I and I-P controllers. Simulation results are presented and analyzed for all the controllers. It is observed that fuzzy logic based controllers give better responses than the traditional P-I as well as I-P controller for the speed control of dc motor drives. Keywords—Proportional-Integral (P-I) controller, IntegralProportiona...

Modeling and simulation of Adaptive Neuro-Fuzzy controller for Chopper-Fed DC Motor Drive

2011

The classical controllers algorithm is both simple and reliable, and has been applied to thousands of control loops in various industrial applications over the past 60 years (89%-90% of applications). This paper presents the neuro-fuzzy controller incorporates fuzzy logic algorithm with a five-layer artificial neural network (ANN) structure. The conventional controller is replaced by Adaptive Neuro-Fuzzy Inference System (ANFIS) before that made the identification process of ANFIS controller by the data base of classical controller to be consider as initial condition for controlling process with this system. The simulation of the design is achieved by using Matlab Ver. 2010a. Chopper-Fed DC Motor Drive (Continuous / Discrete) are consider as case study. Satisfactory results are obtained explaining the ability of ANFIS controller to control with the dynamic high nonlinear system and can be get very good results by tunes the fuzzy controller.

Simulation of Fuzzy Inductance Motor using PI Control Application

2013

Fuzzy control has been widely used in industrial controls, particularly in situations where conventional control design techniques have been difficult to apply. Number of fuzzy rules is very important for real time fuzzy control applications. This study is motivated by the increasing need in the industry to design highly reliable, efficiency and low complexity controllers. The proposed fuzzy controller is constructed by several fuzzy controllers with less fuzzy rules to carry out control tasks. Performances of the proposed fuzzy controller are investigated and compared to those obtained from the conventional fuzzy controller. Fuzzy logic control method has the ability to handle errors in control operation with system nonlinearity and its performance is less affected by system parameter variations.

Neural and Fuzzy Logic Control of Drives and Power Systems

2002

neural and fuzzy logic control of drives and power systems neural and fuzzy logic control of drives and power systems neural and fuzzy logic control of drives and power systems neural and fuzzy logic control of drives and power systems neural and fuzzy logic control of drives power systems neural and fuzzy logic control of drives and power systems neural and fuzzy logic control of drives and power systems chapter 8 fuzzy logic and neural network applications in fuzzy logic applications to power electronics and drives expert system, fuzzy logic, and neural network speed control of dc motor using fuzzy logic technique dynamic fuzzy-neural network controller for induction neural and fuzzy logic control of drives and power systems advanced fuzzy systems design and applications khbd adaptive neural fuzzy inference systems controller for induction motor drive using fuzzy logic citeseerx embedded fuzzy controller for industrial applications direct torque control of induction motor using fu...