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Multi-robot adversarial patrolling: Handling sequential attacks

机译:多机器人对抗巡逻:处理顺序攻击

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Robot teams are commonly used for security tasks, where they are required to repeatedly monitor an area in order to prevent penetrations, initiated by an adversary. Current research in this field focuses mainly on detecting penetration attempts, but not on responding. Requiring the robots to also inspect and handle the penetrations has a significant impact on the patrol, as each penetration attempt also influences the robots' behavior, making them vulnerable to multiple attacks. Moreover, a knowledgeable adversary can initiate two sequential attacks, where the second attempt exploits the vulnerable points caused by the requirement that a robot handle the first penetration attempt. In this work, we consider the problem of sequential attacks and examine different robot policies against such adversarial behavior. We provide an optimal patrol strategy for various penetration attempt patterns. Our novel approach considers a full history-length policy, while previous work only handled very limited lengths of history. The use of a longer history improves the results. Moreover, we show how to significantly reduce, in practice, the exponential space state of the problem, while maintaining the optimality of the solution. (C) 2019 Elsevier B.V. All rights reserved.
机译:机器人团队通常用于安全任务,在这种情况下,他们需要反复监视区域以防止由对手发起的渗透。当前在该领域的研究主要集中在检测渗透尝试上,而不是在响应上。要求机器人也检查并处理渗透情况对巡逻有重大影响,因为每次渗透尝试也都会影响机器人的行为,从而使其容易受到多次攻击。此外,知识渊博的对手可以发起两次连续攻击,其中第二次尝试利用由机器人处理第一次渗透尝试的要求而导致的脆弱点。在这项工作中,我们考虑了顺序攻击的问题,并针对这种对抗行为检查了不同的机器人策略。我们为各种渗透尝试模式提供了最佳的巡逻策略。我们的新颖方法考虑了完整的历史记录长度策略,而以前的工作仅处理了非常有限的历史记录长度。使用较长的历史记录可以改善结果。此外,我们展示了如何在实践中显着减少问题的指数空间状态,同时保持解决方案的最优性。 (C)2019 Elsevier B.V.保留所有权利。

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