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Adaptive data-driven error detection in swarm robotics with statistical classifiers

机译:具有统计分类器的群体机器人中的自适应数据驱动错误检测

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摘要

Swarm robotics is an example of a complex system with interactions among distributed autonomous robots as well with the environment. Within the swarm there is no centralised control, behaviour emerges from interactions between agents within the swarm. Agents within the swarm exhibit time varying behaviour in dynamic environments, and are subject to a variety of possible anomalies. The focus within our work is on specific faults in individual robots that can affect the global performance of the robotic swarm. We argue that classical approaches for achieving tolerance through implicit redundancy is insufficient in some cases and additional measures should be explored. Our contribution is to demonstrate that tolerance through explicit detection with statistical techniques works well and is suitable due to its lightweight computation.
机译:群体机器人技术是一个复杂系统的示例,该系统具有分布式自主机器人之间以及与环境之间的相互作用。在群内没有集中控制,行为是由群内代理之间的交互产生的。群体中的代理在动态环境中表现出随时间变化的行为,并且会受到各种可能的异常影响。我们工作的重点是单个机器人上的特定故障,这些故障可能会影响机器人群的整体性能。我们认为,在某些情况下,通过隐式冗余来实现容忍的经典方法是不够的,应探索其他措施。我们的贡献是证明通过统计技术进行显式检测的容忍效果很好,并且由于其轻量级计算而适用。

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