Design and Simulation of a PID Neural Network Controller for PMDC Motor Speed and Position Control

Rahaf SHEIKH DEBES, T. Kara
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Abstract

Direct current (DC) motors have many difficulties when controlling angular velocity in a variety of applications. The perfect controller cannot be carried out by traditional control alone due to the nonlinear properties of DC motors, design constraints, and mechanical variations caused by the operation conditions. This study proposes a design for an artificial neural network based PID controller (ANNPID) to control the speed of a permanent magnet DC motor (PMDC) in two methods. A detailed analysis is performed based on the simulation results of both methods. The proposed controllers are numerically simulated for various test conditions including; set-point changes, step changes in the load torque, and parameter variations, then the suggested techniques were compared in a comparative study with a traditional PID controller based on the transient response specifications and the performance indices to validate the performance of the controllers. The simulation results demonstrated that the controllers have improved dynamics, static performance, and less overshoot. The methods described here achieve control more effectively than the conventional control approaches under both nominal and disturbed test conditions over different operating ranges.
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PMDC电机速度位置PID神经网络控制器的设计与仿真
在各种应用中,直流电机在控制角速度方面存在许多困难。由于直流电动机的非线性特性、设计约束以及运行条件引起的机械变化等因素,单靠传统的控制方法无法实现理想的控制器。本研究提出一种基于人工神经网络的PID控制器(ANNPID),以两种方式控制永磁直流电动机(PMDC)的速度。根据两种方法的仿真结果进行了详细的分析。提出的控制器在各种测试条件下进行了数值模拟,包括;然后,根据暂态响应规范和性能指标,将所提方法与传统PID控制器进行了对比研究,验证了控制器的性能。仿真结果表明,该控制器具有较好的动态、静态性能和较小的超调量。在不同的工作范围内,在标称和干扰试验条件下,本文描述的方法比传统的控制方法更有效地实现控制。
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