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首页> 外文期刊>Automatica >A dynamic game approach to distributionally robust safety specifications for stochastic systems
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A dynamic game approach to distributionally robust safety specifications for stochastic systems

机译:随机系统分布鲁棒安全规范的动态游戏方法

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摘要

This paper presents a new safety specification method that is robust against errors in the probability distribution of disturbances. Our proposed distributionally robust safe policy maximizes the probability of a system remaining in a desired set for all times, subject to the worst possible disturbance distribution in an ambiguity set. We propose a dynamic game formulation of constructing such policies and identify conditions under which a non-randomized Markov policy is optimal. Based on this existence result, we develop a practical design approach to safety-oriented stochastic controllers with limited information about disturbance distributions. However, an associated Bellman equation involves infinite-dimensional minimax optimization problems since the disturbance distribution may have a continuous density. To alleviate computational issues, we propose a duality-based reformulation method that converts the infinite-dimensional minimax problem into a semi-infinite program that can be solved using existing convergent algorithms. We prove that there is no duality gap, and that this approach thus preserves optimality. The results of numerical tests confirm that the proposed method is robust against distributional errors in disturbances, while a standard stochastic safety verification tool is not. (C) 2018 Elsevier Ltd. All rights reserved.
机译:本文介绍了一种新的安全规范方法,对干扰概率分布的误差是鲁棒的。我们所提出的分布稳健的安全政策最大化了剩余的系统中剩余的系统的概率,而始终以歧义集中的最差可能的干扰分布。我们提出了一个动态的游戏制定,构建了这种政策,并确定了非随机马尔可夫政策是最佳的条件。基于这种存在的结果,我们开发了一种具有有关干扰分布信息的有限的面向安全的随机控制器的实用设计方法。然而,相关的Bellman方程涉及无限尺寸的最小值优化问题,因为扰动分布可以具有连续的密度。为了减轻计算问题,我们提出了一种基于二元的重构方法,该方法将无限维MIMIMAX问题转换为可以使用现有收敛算法解决的半无限程序。我们证明没有二元间隙,并且这种方法因此保留了最优性。数值测试的结果证实,该方法是对干扰的分布误差的强大,而标准随机安全验证工具不是。 (c)2018年elestvier有限公司保留所有权利。

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