Development of an Attention Mechanism for Task-Adaptive Heterogeneous Robot Teaming

AI Pub Date : 2024-04-23 DOI:10.3390/ai5020029
Yibei Guo, Chao Huang, Rui Liu
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Abstract

The allure of team scale and functional diversity has led to the promising adoption of heterogeneous multi-robot systems (HMRS) in complex, large-scale operations such as disaster search and rescue, site surveillance, and social security. These systems, which coordinate multiple robots of varying functions and quantities, face the significant challenge of accurately assembling robot teams that meet the dynamic needs of tasks with respect to size and functionality, all while maintaining minimal resource expenditure. This paper introduces a pioneering adaptive cooperation method named inner attention (innerATT), crafted to dynamically configure teams of heterogeneous robots in response to evolving task types and environmental conditions. The innerATT method is articulated through the integration of an innovative attention mechanism within a multi-agent actor–critic reinforcement learning framework, enabling the strategic analysis of robot capabilities to efficiently form teams that fulfill specific task demands. To demonstrate the efficacy of innerATT in facilitating cooperation, experimental scenarios encompassing variations in task type (“Single Task”, “Double Task”, and “Mixed Task”) and robot availability are constructed under the themes of “task variety” and “robot availability variety.” The findings affirm that innerATT significantly enhances flexible cooperation, diminishes resource usage, and bolsters robustness in task fulfillment.
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为任务自适应异构机器人团队开发注意力机制
团队规模和功能多样性的诱惑促使异构多机器人系统(HMRS)在灾难搜救、现场监控和社会安全等复杂的大规模行动中大有可为。这些系统协调不同功能和数量的多个机器人,面临的重大挑战是如何准确组建机器人团队,以满足任务在规模和功能方面的动态需求,同时保持最小的资源支出。本文介绍了一种名为 "内在注意力"(innerATT)的开创性自适应合作方法,该方法可根据不断变化的任务类型和环境条件动态配置异构机器人团队。innerATT 方法是通过将创新的注意力机制整合到多机器人行为批判强化学习框架中,对机器人能力进行战略分析,从而有效组建团队,满足特定任务需求。为了证明 innerATT 在促进合作方面的功效,我们以 "任务多样性 "和 "机器人可用性多样性 "为主题,构建了包含不同任务类型("单一任务"、"双重任务 "和 "混合任务")和机器人可用性的实验场景。研究结果表明,内在 ATT 显著增强了灵活合作,减少了资源使用,并提高了任务完成的稳健性。
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