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Constrained generalised minimum variance controller design using projection-based recurrent neural network

机译:基于投影的递归神经网络的约束广义最小方差控制器设计

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摘要

In this study, a generalised minimum variance control (GMVC) method using the projection-based recurrent neural network (PRNN) is proposed to minimise the error variance in the output of the non-linear plant. One the main drawbacks of the conventional GMVC approaches is the lack of a systematic procedure to deal with the input constraints. In this study, the PRNN is employed for incorporating the input constraints to the minimum variance index. This network is based on the optimality conditions of a constrained problem and is designed using projection theorem. To formulate the proposed approach, by considering an ARMAX model of the system and converting the cost function to a quadratic programming problem, the dynamics and output equations of the PRNN is obtained. The stability and global convergence of the PRNN is analytically shown. Moreover, suitable conditions for the weighting matrices of the cost function are determined to ensure the closed-loop stability. The proposed control method is applied to the non-linear quadruple tank and a comparative analysis between MVC, GMVC and the proposed approach is performed.
机译:在这项研究中,提出了一种基于投影的递归神经网络(PRNN)的广义最小方差控制(GMVC)方法,以最小化非线性工厂输出中的误差方差。常规GMVC方法的主要缺点之一是缺乏处理输入约束的系统程序。在这项研究中,PRNN用于将输入约束合并到最小方差指标中。该网络基于约束问题的最优条件,并使用投影定理进行设计。为了制定提出的方法,通过考虑系统的ARMAX模型并将成本函数转换为二次规划问题,获得PRNN的动力学和输出方程。分析显示了PRNN的稳定性和全局收敛性。此外,确定用于成本函数的加权矩阵的合适条件以确保闭环稳定性。将所提出的控制方法应用于非线性四缸储罐,并对MVC,GMVC和所提出的方法进行了比较分析。

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