不确定条件下多智能体协同巡逻检测违规行为

A. Beynier
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引用次数: 3

摘要

近年来,多智能体在对抗领域的巡逻问题得到了广泛的研究。然而,巡逻人员之间的合作问题却很少受到重视。此外,现有的研究大多集中在一次性攻击上,并假设对手完全理性。然而,在边境巡逻、侦查非法捕鱼或偷猎时,安全部队面对的是几个可观察性和理性有限的对手,他们在时间和空间上采取了多种非法行动。在本文中,我们开发了一种合作方法来提高防守者在这种情况下的效率。我们提出了一种新的多智能体巡逻问题的形式化,允许防御者之间的有效合作。我们的工作解释了行动结果的不确定性和系统的部分可观察性。与现有的安全游戏不同,考虑了对手的通用模型,从而处理对手的有限可观察性和有限理性。然后,我们描述了一种学习机制,允许防御者利用他们对对手的观察来计算合作巡逻策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cooperative Multiagent Patrolling for Detecting Multiple Illegal Actions under Uncertainty
Multiagent patrolling in adversarial domains has been widely studied in recent years. However, little attention has been paid to cooperation issues between patrolling agents. Moreover, most existing works focus on one-shot attacks and assume full rationality of the adversaries. Nonetheless, when patrolling frontiers, detecting illegal fishing or poaching, security forces face several adversaries with limited observability and rationality, that perform multiple illegal actions spread in time and space. In this paper, we develop a cooperative approach to improve defenders efficiency in such settings. We propose a new formalization of multiagent patrolling problems allowing for effective cooperation between the defenders. Our work accounts for uncertainty on action outcomes and partial observability of the system. Unlike existing security games, a generic model of the opponents is considered thus handling limited observability and bounded rationality of the adversaries. We then describe a learning mechanism allowing the defenders to take advantage of their observations about the adversaries and to compute cooperative patrolling strategies consequently.
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