动态多目标分配与分散在线学习实现多个同步目标

D. Nguyen, Arvind Rajagopalan, Jijoong Kim, C. Lim, David Hubczenko
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引用次数: 0

摘要

在本文中,我们提出了一种多智能体执行合作任务的分散在线决策策略。我们的解决方案为智能体提供了动态选择最佳目标并以预先指定的角度同时到达目标位置的能力。此外,特工们能够在不影响任务目标的情况下处理遇到的任何障碍。该算法将博弈论的遗憾最小化与当前的最佳实践解决方案相结合,以满足复杂的任务要求。它是分散的,并且易于扩展到大量代理进行广域操作。仿真结果表明,该方法可以应用于复杂环境下的智能体团队,具有较快的收敛性和适应性。
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Dynamic Multi-Target Assignment with Decentralised Online Learning to Achieve Multiple Synchronised Goals
In this paper, we present a decentralised online decision-making strategy for multi-agents carrying out a cooperative mission. Our solution provides the capability for agents to dynamically choose their best targets and arrive at their target locations simultaneously at pre-specified angles. Additionally, the agents are able to cope with any obstacles encountered without compromising the mission goals. The algorithm combines game-theoretic regret minimisation with current best-practice solutions to satisfy complex mission requirements. It is decentralised and readily scalable to a large number of agents for wide area operations. Simulation results show it can be applied to teams of agents in challenging environments and exhibits fast convergence and adaptability.
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