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A Multi-Step Model Predictive Control Method Based on Recurrent BP Neural Network

机译:一种基于反复性BP神经网络的多步模型预测控制方法

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摘要

Model Predictive Control is a kind of computer control method which was widely applied in industry process control. The classic model predictive controllers are all based on linear predictive model, and unfit for the objects which have strong nonlinearity and several set-points. This paper used recurrent BP neural network to construct a nonlinear multi-step predictive model, and designed the optimization strategy to form a nonlinear multi-step model predictive controller with constraints. The simulation result show that the model predictive controller proposed in this paper can trace several set-points perfectly.
机译:模型预测控制是一种计算机控制方法,广泛应用于工业过程控制。经典模型预测控制器全部基于线性预测模型,并且不适用于具有强烈非线性和几个设定点的物体。本文使用了经常性BP神经网络构建非线性多步预测模型,并设计了具有约束的非线性多步模型预测控制器的优化策略。仿真结果表明,本文提出的模型预测控制器可以完美地追踪多个设定点。

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