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首页> 外文期刊>IEEE Transactions on Automatic Control >Analytic Expressions in Stochastic Max-Plus-Linear Algebra and their Application in Model Predictive Control
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Analytic Expressions in Stochastic Max-Plus-Linear Algebra and their Application in Model Predictive Control

机译:随机MAX-PLUS-LINELAL代数的分析表达及其在模型预测控制中的应用

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摘要

The class of max-plus-linear systems can model discrete event systems with synchronization but no choice. Model mismatch and/or disturbances can be characterized as stochastic uncertainties. In stochastic max-plus-linear systems one often needs to compute the expectation of a max-plus-scaling (MPS) function or the chance constraint of a MPS function. The algorithms available in literature are either computationally too expensive or only give an approximation. In this article, we derive an analytic expression for both the expectation and the chance constraint of a MPS function. Both can be written in the form of a piecewise polynomial function in the components of the control variables. The analytic function can be derived offline and can be evaluated online in a quick and efficient way. We also show how the expressions can be used in a model predictive control setting and show the efficiency of the proposed approach with a worked example.
机译:MAX-PLUS-LINEAR系统的类可以模拟具有同步但尚未选择的离散事件系统。模型不匹配和/或干扰可以表征为随机的不确定性。在随机MAX-Plus-Linear系统中,一个通常需要计算MAX-Plus-Scaling(MPS)功能的期望或MPS功能的机会约束。文献中可用的算法是计算地过于昂贵的或仅提供近似。在本文中,我们派生了对MPS功能的期望和机会限制的分析表达式。两者都可以用控制变量的组件中的分段多项式函数的形式写入。分析功能可以离线导出,可以以快速有效的方式在线进行评估。我们还展示了表达式如何在模型预测控制设置中使用,并显示所提出的方法的效率。

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