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MuRoCo: A Framework for Capability- and Situation-Aware Coalition Formation in Cooperative Multi-Robot Systems

机译:MuRoCo:协作多机器人系统中能力和情境联盟形成的框架

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摘要

One problem in cooperative multi-robot systems is to reach a group agreement on the distribution of tasks among the robots, known as multi-robot task allocation problem. In case the tasks require a tight cooperation among the robots the formation of adequate subteams, so-called coalitions, is needed which is known to be a NP-complete problem. Here the MuRoCo framework is presented, which solves the coalition formation problem for cooperative heterogeneous multi-robot systems. MuRoCo yields a lower increase of the worst-case complexity compared to previous solutions, while still guaranteeing optimality for sequential multi-robot task assignments. These include also the, in related work often neglected, optimal subtask assignment. In order to reduce the average complexity, which is commonly more relevant in the practical operation, pruning strategies are used that consider system-specific characteristics to reduce the number of potential solutions already in an early phase. To ensure a robust operation in dynamic environments, MuRoCo takes potential disturbances and the environmental uncertainty explicitly into account. This way MuRoCo yields capability- and situation-aware solutions for real world systems. The framework is theoretically analyzed and is practically validated in a cooperative service scenario, showing its suitability to complex applications, its robustness to environmental changes and its ability to recover from failures. Finally a benchmark evaluation shows the realizable problem sizes of the current implementation.
机译:协作式多机器人系统中的一个问题是就机器人之间的任务分配达成集体协议,这被称为多机器人任务分配问题。如果任务需要机器人之间的紧密合作,则需要形成足够的子团队,即所谓的联盟,这是一个NP完全问题。这里提出了MuRoCo框架,该框架解决了协作异构多机器人系统的联盟形成问题。与以前的解决方案相比,MuRoCo降低了最坏情况的复杂性,同时仍保证了连续多机器人任务分配的最优性。这些还包括在相关工作中经常被忽略的最佳子任务分配。为了减少通常在实际操作中更相关的平均复杂度,使用了修剪策略,这些策略考虑了特定于系统的特性,以减少早期已经存在的潜在解决方案的数量。为了确保在动态环境中的稳定运行,MuRoCo明确考虑了潜在的干扰和环境不确定性。这样,MuRoCo可以为现实世界的系统提供功能和情况感知解决方案。从理论上分析了该框架,并在合作服务场景中对其进行了实践验证,显示了该框架对复杂应用的适用性,对环境变化的鲁棒性以及从故障中恢复的能力。最后,基准评估显示了当前实现的可实现的问题大小。

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