HoLA Robots: Mitigating Plan-Deviation Attacks in Multi-Robot Systems with Co-Observations and Horizon-Limiting Announcements

Kacper Wardega, Max von Hippel, Roberto Tron, C. Nita-Rotaru, Wenchao Li
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Abstract

Emerging multi-robot systems rely on cooperation between humans and robots, with robots following automatically generated motion plans to service application-level tasks. Given the safety requirements associated with operating in proximity to humans and expensive infrastructure, it is important to understand and mitigate the security vulnerabilities of such systems caused by compromised robots who diverge from their assigned plans. We focus on centralized systems, where a *central entity* (CE) is responsible for determining and transmitting the motion plans to the robots, which report their location as they move following the plan. The CE checks that robots follow their assigned plans by comparing their expected location to the location they self-report. We show that this self-reporting monitoring mechanism is vulnerable to *plan-deviation attacks* where compromised robots don't follow their assigned plans while trying to conceal their movement by mis-reporting their location. We propose a two-pronged mitigation for plan-deviation attacks: (1) an attack detection technique leveraging both the robots' local sensing capabilities to report observations of other robots and *co-observation schedules* generated by the CE, and (2) a prevention technique where the CE issues *horizon-limiting announcements* to the robots, reducing their instantaneous knowledge of forward lookahead steps in the global motion plan. On a large-scale automated warehouse benchmark, we show that our solution enables attack prevention guarantees from a stealthy attacker that has compromised multiple robots.
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HoLA机器人:具有协同观察和水平限制公告的多机器人系统中减轻计划偏差攻击
新兴的多机器人系统依赖于人与机器人之间的合作,机器人遵循自动生成的运动计划来服务于应用级任务。考虑到与靠近人类和昂贵的基础设施相关的安全要求,理解和减轻这些系统的安全漏洞是很重要的,这些系统是由偏离指定计划的受损机器人造成的。我们专注于集中式系统,其中“中央实体”(CE)负责确定运动计划并将其传输给机器人,机器人在按照计划移动时报告其位置。CE通过比较机器人的预期位置和他们自己报告的位置来检查机器人是否遵循了分配的计划。我们表明,这种自我报告监控机制很容易受到“计划偏差攻击”的影响,在这种攻击中,受损的机器人不遵循指定的计划,同时试图通过错误报告自己的位置来隐藏自己的运动。我们提出了一种双管齐下的计划偏差攻击缓解方法:(1)一种攻击检测技术,利用机器人的局部感知能力来报告其他机器人的观察结果和由CE生成的“共同观察计划”;(2)一种预防技术,CE向机器人发出“地平线限制通知”,减少机器人对全局运动计划中向前展望步骤的瞬时知识。在大规模自动化仓库基准测试中,我们展示了我们的解决方案能够防止攻击者对多个机器人进行攻击。
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