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Neural Network Model Predictive Control of Nonlinear Systems Using Genetic Algorithms

机译:遗传算法的非线性系统神经网络模型预测控制

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In this paper the synthesis of the predictive controller for control of the nonlinear object is considered. It is supposed that the object model is not known. The method is based on a digital recurrent network (DRN) model of the system to be controlled, which is used for predicting the future behavior of the output variables. The cost function which minimizes the difference between the future object outputs and the desired values of the outputs is formulated. The function ga of the Matlab’s Genetic Algorithm Optimization Toolbox is used for obtaining the optimum values of the control signals. Controller synthesis is illustrated for plants often referred to in the literature. Results of simulations show effectiveness of the proposed control system.
机译:本文考虑了用于非线性对象控制的预测控制器的综合。假定对象模型未知。该方法基于要控制系统的数字循环网络(DRN)模型,该模型用于预测输出变量的未来行为。制定了将未来目标输出与输出的期望值之间的差异最小化的成本函数。 Matlab的遗传算法优化工具箱的功能ga用于获得控制信号的最佳值。说明了通常在文献中提及的植物的控制器合成。仿真结果表明了所提出的控制系统的有效性。

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