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Model predictive control for uncertain max-min-plus-scaling systems

机译:最大-最小+缩放系统的模型预测控制

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In this paper we extend the classical min-max model predictive control framework to a class of uncertain discrete event systems that can be modelled using the operations maximization, minimization, addition and scalar multiplication, and that we call max-min-plus-scaling (MMPS) systems. Provided that the stage cost is an MMPS expression and considering only linear input constraints then the open-loop min-max model predictive control problem for MMPS systems can be transformed into a sequence of linear programming problems. Hence, the min-max model predictive control problem for MMPS systems can be solved efficiently, despite the fact that the system is non-linear. A min-max feedback model predictive control approach using disturbance feedback policies is also presented, which leads to improved performance compared to the open-loop approach.
机译:在本文中,我们将经典的最小-最大模型预测控制框架扩展到一类不确定的离散事件系统,可以使用操作最大化,最小化,加法和标量乘法对其进行建模,我们将其称为最大-最小+定标( MMPS)系统。假设阶段成本是MMPS表达式,并且仅考虑线性输入约束,则可以将MMPS系统的开环最小-最大模型预测控制问题转换为一系列线性规划问题。因此,尽管系统是非线性的,但是可以有效地解决用于MMPS系统的最小-最大模型预测控制问题。还提出了使用扰动反馈策略的最小-最大反馈模型预测控制方法,与开环方法相比,该方法可提高性能。

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