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A Runge-Kutta MLP Neural Network Based Control Method for Nonlinear MIMO Systems

机译:基于Runge-Kutta MLP神经网络的非线性MIMO系统控制方法

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In this paper, Runge-Kutta MLP based self-adaptive controller (SAC) is proposed for nonlinear multi-input multi output (MIMO) systems. The controller parameters are optimized by considering K-step ahead future behavior of the controlled system. The adjustment mechanism is composed of an online Runge-Kutta identification block which estimates a forward model of the system, an adaptive multi-input multi-output (MIMO) proportional-integral-derivative (PID) controller and an adjustment mechanism realized by separate online Runge-Kutta MLP neural networks to identify the dynamics of each tunable controller parameter. The performance of the introduced adjustment mechanism has been examined on a nonlinear three tank system for different cases, and the obtained results indicate that the RK-MLP-NN based adjustment mechanism and Runge-Kutta model acquire good control and identification performances.
机译:本文针对非线性多输入多输出(MIMO)系统,提出了一种基于Runge-Kutta MLP的自适应控制器(SAC)。通过考虑受控系统提前K步的未来行为来优化控制器参数。调整机制由估计系统正向模型的在线Runge-Kutta识别块,自适应多输入多输出(MIMO)比例积分微分(PID)控制器和通过单独在线实现的调整机制组成Runge-Kutta MLP神经网络可识别每个可调控制器参数的动态。在不同情况下,在非线性三缸系统上对所引入的调节机构的性能进行了研究,结果表明基于RK-MLP-NN的调节机构和Runge-Kutta模型具有良好的控制和识别性能。

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