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Decentralised coordination of mobile robots for target tracking with learnt utility models

机译:使用学习过的实用新型进行目标跟踪的移动机器人的分散协调

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This paper addresses the coordination of a decentralised robot team for target tracking. In many approaches to coordination, robots jointly plan their actions through negotiation, which incurs communication costs. Previous work examined the use of learning to reduce the need for negotiations in a network of static robots. Robots incrementally learn how each team member impacts the team utility and can thus make coordinated, team-wide decisions. In this paper, we extend the concept of learning utility models to a team of mobile robots. We also propose a mechanism by which robots switch between negotiating and using the learnt model. This mechanism reduces the communications required for coordination whilst maintaining the same level of tracking performance. Hardware experiments demonstrated that our approach resulted in coordinated behaviours while only negotiating intermittently. Simulation results show that our approach reduced the data communicated for negotiations by up to 70%, without making a statistically significant impact on the tracking performance.
机译:本文涉及分散机器人团队进行目标跟踪的协调。在许多协调方法中,机器人通过谈判共同规划他们的行动,从而引发了沟通成本。以前的工作审查了使用学习,减少静态机器人网络中谈判的必要性。机器人逐步了解每个团队成员如何影响团队实用程序,从而可以协调,团队范围内的决策。在本文中,我们将学习实用新型的概念扩展到移动机器人团队。我们还提出了一种机器人,机器人在协商和使用学习模型之间切换。该机制减少了协调所需的通信,同时保持相同的跟踪性能水平。硬件实验表明,我们的方法导致了协调的行为,同时只间歇地谈判。仿真结果表明,我们的方法将通信的数据减少了高达70%的谈判,而不对跟踪性能产生统计显着影响。

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