具有一般概率分布的跳跃马尔可夫不确定线性系统的控制

Patrick Flüs, O. Stursberg
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引用次数: 1

摘要

本文介绍了一类具有不确定连续状态初始化且受扰动影响的跳变马尔可夫线性系统的控制方法。这两种类型的不确定性都被建模为随机过程,具有任意选择的概率分布,然而,期望值和(协)方差是已知的。本文阐述了利用连续控制将不确定系统导向目标集的控制任务,而马尔可夫链的所有可能状态序列都必须满足机会约束。该方法采用一种随机模型预测控制方法,在限定约束下对有限时间范围内的运动进行预测,以达到给定置信度的控制目标。该过程的关键步骤是:(i)利用Chebyshev不等式对概率可达集进行过逼近,(ii)将原始约束的收紧版本嵌入优化问题中,以获得满足规范的控制策略。对于任意马尔可夫链序列,通过适当的状态协方差矩阵边界,得到了概率可达集的收敛性。本文介绍了该方法的主要步骤,讨论了其性质,并举例说明了其原理。
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Control of Jump Markov Uncertain Linear Systems With General Probability Distributions
This paper introduces a method to control a class of jump Markov linear systems with uncertain initialization of the continuous state and affected by disturbances. Both types of uncertainties are modeled as stochastic processes with arbitrarily chosen probability distributions, for which however, the expected values and (co-)variances are known. The paper elaborates on the control task of steering the uncertain system into a target set by use of continuous controls, while chance constraints have to be satisfied for all possible state sequences of the Markov chain. The proposed approach uses a stochastic model predictive control approach on moving finite-time horizons with tailored constraints to achieve the control goal with prescribed confidence. Key steps of the procedure are (i) to over-approximate probabilistic reachable sets by use of the Chebyshev inequality, and (ii) to embed a tightened version of the original constraints into the optimization problem, in order to obtain a control strategy satisfying the specifications. Convergence of the probabilistic reachable sets is attained by suitable bounding of the state covariance matrices for arbitrary Markov chain sequences. The paper presents the main steps of the solution approach, discusses its properties, and illustrates the principle for a numeric example.
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