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Optimal PID parametric auto-adjustment for BLDC motor control systems based on artificial intelligence

机译:基于人工智能的BLDC电机控制系统最优PID参数自动调整

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This paper considers the comparison performance and effectiveness of the PID controller auto-tuning for brushless DC motor (BLDC motor) by applying artificial intelligence (AI) algorithm and the classical method of PID parameters tuning. Neural network algorithm (NN) and genetic algorithm (GA) are among the well-known artificial intelligences algorithm existing todays while the classical method is Ziglor-Nichol method (ZN). To compare the performances of the controller, the convergence rate and the transient response analysis is examined by considering a criterial evaluated performance of the overshoot, the steady state error and the rise time. From the BLDC motor simulation results, it is found that the NN has given the better transient response than the GA and the ZN when evaluated in the convergence rate and the transient response analysis.
机译:本文通过应用人工智能(AI)算法和PID参数调整的经典方法,考虑PID控制器自动调整的PID控制器自动调整的比较性能和有效性。神经网络算法(NN)和遗传算法(GA)是当今众所周知的人工智能算法,而经典方法是Ziglor-Nichol方法(Zn)。为了比较控制器的性能,通过考虑过冲的标准评估性能,稳态误差和上升时间来检查收敛速率和瞬态响应分析。从BLDC电动机仿真结果中发现,当在收敛速率和瞬态响应分析中评估时,NN在评估时,NN具有比GA和Zn更好的瞬态响应。

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