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A multi-population genetic algorithm approach for PID controller auto-tuning

机译:PID控制器自整定的多种群遗传算法

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The present paper applies a multi-population genetic algorithm (MPGA) to the Proportional, Integral and Derivative (PID) controller tuning problem. Two control criteria were optimized, the integral of the time multiplied by the absolute error (ITAE), and the integral of the time multiplied by the absolute output (ITAY). The MPGA is compared with a standard genetic algorithms (SGA) already applied to the same control model. The control criteria are supplied by neural networks (NN) previously trained for this purpose. The control tuning and the corresponding responses were obtained using the MATLAB/SIMULNK environment. The computational results show a superior performance of the MPGA even when compared with the exact values found by dynamic simulation using gradient techniques.
机译:本文将多种群遗传算法(MPGA)应用于比例,积分和微分(PID)控制器调节问题。优化了两个控制标准,时间的积分乘以绝对误差(ITAE),时间的积分乘以绝对输出(ITAY)。将MPGA与已经应用于同一控制模型的标准遗传算法(SGA)进行比较。控制标准由事先为此目的训练的神经网络(NN)提供。使用MATLAB / SIMULNK环境可以获得控制调整和相应的响应。即使与通过使用梯度技术进行动态仿真得到的精确值进行比较,计算结果也显示了MPGA的出色性能。

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