Task Allocation in Multi-Agent Systems with Grammar-Based Evolution

Dilini Samarasinghe, M. Barlow, E. Lakshika, Kathryn E. Kasmarik
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引用次数: 3

Abstract

This paper presents a grammar-based evolutionary model to facilitate autonomous emergence of task allocation for intelligent multi-agent systems. The approach adopts a context-free grammar to determine the behaviour rule syntax. This allows for flexibility in evolving task allocation under multiple and dynamic constraints without manual rule design and parameter tuning. Experimental evaluations conducted with a target discovery simulation illustrate that the grammar-based model performs successfully in both dynamic and non-dynamic conditions. A statistically significant performance improvement is shown compared to an algorithm developed with the broadcast of local eligibility mechanism and a genetic programming mechanism. Grammatical evolution can achieve near-optimal solutions under restrictions applied on the number of agents, targets and the time allowed. Further, analysis of the evolved rule structures shows that grammatical evolution can identify less complex rule structures for behaviours while maintaining the expected level of performance. The results infer that the proposed model is a promising alternative for dynamic task allocation with human interactions in complex real-world domains.
基于语法进化的多智能体系统任务分配
本文提出了一种基于语法的进化模型,以促进智能多智能体系统任务分配的自主出现。该方法采用与上下文无关的语法来确定行为规则语法。这允许在多个动态约束下灵活地发展任务分配,而无需手动设计规则和参数调优。通过目标发现仿真进行的实验评估表明,基于语法的模型在动态和非动态条件下都能成功地运行。与采用广播本地资格机制和遗传规划机制开发的算法相比,统计上有显著的性能改进。语法进化可以在限定代理、目标的数量和允许的时间的情况下获得接近最优的解决方案。此外,对进化规则结构的分析表明,语法进化可以识别出不太复杂的行为规则结构,同时保持预期的表现水平。结果表明,该模型对于复杂的现实领域中具有人机交互的动态任务分配是一种有希望的替代方案。
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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