Simulation and Implementation of a Sliding Mode Control for a Brushless DC Motor with RBFNN and Disturbance Observer

Hung-Khong Hoai, Seng-Chi Chen
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引用次数: 3

Abstract

In this paper, a Sliding Mode Control (SMC) was built to control a Brushless DC Motor (BLDC) with a Radial Basis Function Neural Network (RBFNN) for estimating the unknown and uncertain parameters. Otherwise, a disturbance observer was also designed to improve the robustness to external load with smaller control gain. And a logic rectifier for the equivalent of DC motor, it makes the commutation strategies easier for operating the BLDC in 4Q. To enhance the flexibility and integration in developing the algorithm for a motor control system, the real system was modeled in MATLAB Simulink and the speed control structure was built up so that it can be worked in both simulation and experiment. The system performance was verified in dynamic load condition by analyzing the transient specification, steady-state error for tracking response and by evaluating the speed reduction, recovery time for regulation response. The platform was implemented with the DSP F28379D LaunchPad.
基于RBFNN和扰动观测器的无刷直流电动机滑模控制仿真与实现
本文采用径向基函数神经网络(RBFNN)对无刷直流电动机的未知和不确定参数进行估计,建立了滑模控制(SMC)。此外,还设计了扰动观测器,以较小的控制增益提高系统对外部负载的鲁棒性。并为直流电机等效的逻辑整流器,使换相策略更容易在4Q操作无刷直流电机。为了提高电机控制系统算法开发的灵活性和集成度,在MATLAB Simulink中对实际系统进行了建模,并建立了速度控制结构,使其可以同时用于仿真和实验。通过分析系统的暂态参数、跟踪响应的稳态误差以及调节响应的减速和恢复时间,验证了系统在动态负载条件下的性能。该平台采用DSP F28379D LaunchPad实现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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