Optimized PID and NN-based Speed Control of a Load-coupled DC Motor

Author:

Encalada-Dávila Ángel,Mohamed Ellithy Kareim,Salah AbdElhalim Mariam,Shalaby Raafat

Abstract

Abstract In this work, three control strategies are presented, compared, and discussed, applied on a load-coupled DC motor. The purpose is to control in an optimal way the motor speed in terms of the armature voltage. Two strategies are based on PID control, working on the classical PID controller and the optimized one by using particle swarm optimization (PSO) to tune the PID controller parameters. The other strategy is based on neural networks (NNs) where two NNs are built to model and control the system. Based on the results, all the strategies reach excellent performances, however, in terms of system response characteristics like rising time or settling time the PID-based controllers show faster responses than the NN controller. Moreover, by comparing these results with other studies that are working with an unloaded DC motor and even when the working system is more complex, the obtained results have a better performance.

Publisher

IOP Publishing

Reference14 articles.

1. “Torsional vibration control of the main drive system of a rolling mill based on an extended state observer and linear quadratic control”;Zhang;Journal of Vibration and Control,2006

2. “Computer-aided controller setting procedure for paper machine drive systems”;Valenzuela;IEEE Transactions on Industry Applications,2009

3. “Modeling and experimental verification of a flexible rotor/amb system”;Štimac;COMPEL-The international journal for computation and mathematics in electrical and electronic engineering,2013

4. “An effective sustainable control of brushless dc motor using firefly algorithm – artificial neural network based fopid controller”;Kommula;Sustainable Energy Technologies and Assessments,2022

5. “The use of digital filters in control systems of electric drives with complex mechanical structure”;Luczak;Poznań University of Technology: Poznań, Poland,2014

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