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Nonlinear Decoupling PID Control Using Neural Networks and Multiple Models

机译:基于神经网络和多种模型的非线性解耦PID控制

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摘要

For a class of complex industrial processes with strong nonlinearity, serious coupling and uncertainty, a nonlinear decoupling proportional-integral-differential (PID) controller is proposed, which consists of a traditional PID controller, a decoupling compensator and a feedforward compensator for the unmodeled dynamics. The parameters of such controller is selected based on the generalized minimum variance control law. The unmodeled dynamics is estimated and compensated by neural networks, a switching mechanism is introduced to improve tracking performance, then a nonlinear decoupling PID control algorithm is proposed. All signals in such switching system are globally bounded and the tracking error is convergent. Simulations show effectiveness of the algorithm.
机译:针对一类具有强非线性,严重耦合和不确定性的复杂工业过程,提出了一种非线性去耦比例积分微分(PID)控制器,该控制器由传统的PID控制器,去耦补偿器和前馈补偿器组成,用于未建模的动力学。 。基于广义最小方差控制律来选择这种控制器的参数。利用神经网络对未建模的动力学进行估计和补偿,引入切换机制提高跟踪性能,提出了非线性解耦PID控制算法。这样的交换系统中的所有信号都是全局有界的,跟踪误差是收敛的。仿真表明了该算法的有效性。

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