Formal Controller Synthesis for Markov Jump Linear Systems with Uncertain Dynamics

Luke Rickard, Thom S. Badings, Licio Romao, N. Jansen, A. Abate
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引用次数: 2

Abstract

Automated synthesis of provably correct controllers for cyber-physical systems is crucial for deployment in safety-critical scenarios. However, hybrid features and stochastic or unknown behaviours make this problem challenging. We propose a method for synthesising controllers for Markov jump linear systems (MJLSs), a class of discrete-time models for cyber-physical systems, so that they certifiably satisfy probabilistic computation tree logic (PCTL) formulae. An MJLS consists of a finite set of stochastic linear dynamics and discrete jumps between these dynamics that are governed by a Markov decision process (MDP). We consider the cases where the transition probabilities of this MDP are either known up to an interval or completely unknown. Our approach is based on a finite-state abstraction that captures both the discrete (mode-jumping) and continuous (stochastic linear) behaviour of the MJLS. We formalise this abstraction as an interval MDP (iMDP) for which we compute intervals of transition probabilities using sampling techniques from the so-called 'scenario approach', resulting in a probabilistically sound approximation. We apply our method to multiple realistic benchmark problems, in particular, a temperature control and an aerial vehicle delivery problem.
不确定马尔可夫跳变线性系统的形式控制器综合
自动合成可证明正确的网络物理系统控制器对于在安全关键场景中部署至关重要。然而,混合特征和随机或未知行为使这个问题具有挑战性。我们提出了一种合成马尔可夫跳变线性系统(MJLSs)控制器的方法,使其可证明地满足概率计算树逻辑(PCTL)公式。MJLS由一组有限的随机线性动力学和这些动力学之间的离散跳跃组成,这些动力学由马尔可夫决策过程(MDP)控制。我们考虑这种MDP的转移概率在一定区间内已知或完全未知的情况。我们的方法是基于有限状态抽象,它捕获了MJLS的离散(跳模)和连续(随机线性)行为。我们将这种抽象形式化为间隔MDP (iMDP),我们使用所谓的“场景方法”中的采样技术计算过渡概率的间隔,从而得到概率上合理的近似。我们将该方法应用于多个现实基准问题,特别是温度控制和飞行器交付问题。
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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