Broad Learning Aided Model Predictive Control With Application to Continuous Stirred Tank Heater

Mo Tao, Tianyi Gao, Xianling Li, Kuan Li
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Abstract

This paper presents a data-driven predictive controller based on the broad learning algorithm without any prior knowledge of the system model. The predictive controller is realized by regressing the predictive model using online process data and the incremental broad learning algorithm. The proposed model predictive control (MPC) approach requires less online computational load compared to other neural network based MPC approaches. More importantly, the precision of the predictive model is enhanced with reduced computational load by operating an appropriate approximation of the predictive model. The approximation is proved to have no influence on the convergence of the predictive control algorithm. Compared with the partial form dynamic linearization aided model free control (PFDL-MFC), the control performance of the proposed predictive controller is illustrated through the continuous stirred tank heater (CSTH) benchmark.
广义学习辅助模型预测控制及其在连续搅拌槽加热器中的应用
本文提出了一种基于广义学习算法的数据驱动预测控制器,该控制器不需要任何系统模型的先验知识。预测控制器是通过使用在线过程数据和增量广义学习算法对预测模型进行回归来实现的。与其他基于神经网络的MPC方法相比,所提出的模型预测控制(MPC)方法需要更少的在线计算负载。更重要的是,通过操作预测模型的适当近似,预测模型的精度随着计算负载的减少而提高。证明了该近似对预测控制算法的收敛性没有影响。与部分形式动态线性化辅助无模型控制(PFDL-MFC)相比,通过连续搅拌槽加热器(CSTH)基准,说明了所提出的预测控制器的控制性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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