向昆虫学习增加多主体系统弹性:功能分解和转移以支持生物启发设计

Isabella V. Hernandez, B. C. Watson, M. Weissburg, B. Bras
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引用次数: 1

摘要

弹性是复杂系统的一种紧急属性,描述了从逆境中发现、响应和恢复的能力。现代世界的大部分由多个相互作用的独立代理(即多代理系统)组成。然而,提高多智能体系统弹性的过程并没有得到很好的理解。我们试图通过应用生物学启发设计来增加复杂系统的弹性来解决这一差距。群居昆虫群落是研究系统弹性的理想案例。虽然单个昆虫的计算能力较低,但它们的群体可以共同完成复杂的任务,并表现出弹性。因此,分析群居昆虫群体的关键因素可能为如何提高多智能体系统的弹性提供见解。然而,在将用于社会性昆虫的策略适用于多智能体系统之前,必须确定现有的研究并将其从生物科学领域转移到工程领域。这些转移通常会阻碍或限制生物学启发的设计。本文将个体昆虫和群体网络行为的生物学研究转化为可以测试的策略,以增加多智能体系统的弹性。这些策略是为应用于基于agent的建模而制定的。基于agent的建模已经应用于许多多agent系统,包括流行病学、交通管理和市场营销。这在类比设计过程中提供了一个关键步骤:从其原始上下文中识别和解码类比。在这项工作中提出的设计原则为未来的测试和最终实现多智能体系统提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning From Insects to Increase Multi-Agent System Resilience: Functional Decomposition and Transfer to Support Biologically Inspired Design
Resilience is an emergent property of complex systems that describes the ability to detect, respond, and recover from adversity. Much of the modern world consists of multiple, interacting, and independent agents (i.e. Multi-Agent Systems). However, the process of improving Multi-Agent System resilience is not well understood. We seek to address this gap by applying Biologically Inspired Design to increase complex system resilience. Eusocial insect colonies are an ideal case study for system resilience. Although individual insects have low computing power, the colonies collectively perform complex tasks and demonstrate resilience. Therefore, analyzing key elements of eusocial insect colonies may offer insight on how to increase Multi-Agent System resilience. Before the strategies used in eusocial insects can be adapted for Multi-Agent Systems, however, the existing research must be identified and transferred from the biological sciences to the engineering field. These transfers often hinder or limit biologically inspired design. This paper translates the biological investigation of individual insects and colony network behavior into strategies that can be tested to increase Multi-Agent System resilience. These strategies are formulated to be applied to Agent-Based Modeling. Agent-Based Modeling has been applied to many Multi-Agent Systems including epidemiology, traffic management, and marketing. This provides a key step in the design-by-analogy process: Identifying and decoding analogies from their original context. The design principles proposed in this work provide a foundation for future testing and eventual implementation into Multi-Agent Systems.
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