Resilient Team Formation with Stabilisability of Agent Networks for Task Allocation

Jose Barambones, Florian Richoux, R. Imbert, Katsumi Inoue
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引用次数: 1

Abstract

Team formation (TF) faces the problem of defining teams of agents able to accomplish a set of tasks. Resilience on TF problems aims to provide robustness and adaptability to unforeseen events involving agent deletion. However, agents are unaware of the inherent social welfare in these teams. This article tackles the problem of how teams can minimise their effort in terms of organisation and communication considering these dynamics. Our main contribution is twofold: first, we introduce the Stabilisable Team Formation (STF) as a generalisation of current resilient TF model, where a team is stabilisable if it possesses and preserves its inter-agent organisation from a graph-based perspective. Second, our experiments show that stabilisability is able to reduce the exponential execution time in several units of magnitude with the most restrictive configurations, proving that communication effort in subsequent task allocation problems are relaxed compared with current resilient teams. To do so, we developed SBB-ST, a branch-and-bound algorithm based on Distributed Constrained Optimisation Problems (DCOP) to compute teams. Results evidence that STF improves their predecessors, extends the resilience to subsequent task allocation problems represented as DCOP, and evidence how Stabilisability contributes to resilient TF problems by anticipating decisions for saving resources and minimising the effort on team organisation in dynamic scenarios.
具有任务分配稳定性的Agent网络弹性团队
团队形成(TF)面临着定义能够完成一组任务的代理团队的问题。TF问题的弹性旨在提供涉及代理删除的不可预见事件的鲁棒性和适应性。然而,代理人没有意识到这些团队中固有的社会福利。本文解决的问题是,考虑到这些动态,团队如何在组织和沟通方面最小化他们的努力。我们的主要贡献有两个方面:首先,我们引入了稳定团队形成(STF)作为当前弹性团队形成模型的概括,从基于图的角度来看,如果一个团队拥有并保持其代理间组织,那么它就是稳定的。其次,我们的实验表明,在最严格的配置下,稳定性能够在几个量级上减少指数级的执行时间,这证明了与当前弹性团队相比,后续任务分配问题中的沟通努力是宽松的。为此,我们为计算团队开发了SBB-ST,这是一种基于分布式约束优化问题(DCOP)的分支定界算法。结果证明,STF改进了它们的前辈,将弹性扩展到后续的任务分配问题,即DCOP,并证明稳定性如何通过预测在动态场景中节省资源和最小化团队组织努力的决策来促进弹性TF问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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