复杂适应系统突现的分散检测

E. O'Toole, Vivek Nallur, S. Clarke
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引用次数: 26

摘要

复杂自适应系统是由分布式、分散和自主的代理(软件组件、系统和人)组成的系统,并在这些代理之间表现出非确定性的相互作用。这些交互通常会导致系统级别出现“紧急”行为或属性。这些突发事件可能对系统或单个组件有害,但就其本质而言,不可能提前预测,因此必须在运行时检测到。这些系统的特点意味着,在运行时检测紧急情况是一项重大挑战,现有的方法依赖于具有系统状态全局视图的集中控制器,无法满足这一挑战。在本文中,我们提出了在复杂自适应系统中分散检测突现的重要一步。我们的方法是基于观察从系统级(宏观)到组件级(微观)自然产生的反馈的结果,当系统中出现紧急行为或属性时。这种反馈导致个体代理的内部变量与代理在其本地环境中检测到的属性之间出现相关性,而之前不存在相关性。在五个不同的多智能体系统的案例研究中,我们证明了报告这些相关性的智能体数量随着每个系统中的涌现而增加。这为组成代理提供了足够的信息,以便在系统级别协作检测紧急情况,而不需要集中的系统全局视图。
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Towards Decentralised Detection of Emergence in Complex Adaptive Systems
Complex Adaptive Systems are systems composed of distributed, decentralized and autonomous agents (software components, systems and people) and exhibit non-deterministic interactions between these agents. These interactions can often lead to the appearance of "emergent" behaviour or properties at the system level. These emergents can be harmful to the system or individual constituents, but are by their nature impossible to predict in advance and must therefore be detected at run-time. The characteristics of these systems mean that detecting emergence at run-time presents a significant challenge, one that cannot be met by existing methods that depend on a centralized controller with a global view of the system state. In this paper we present an important step towards decentralised detection of emergence in Complex Adaptive Systems. Our approach is based on observing the consequence of naturally arising feedback that occurs from the system level (macro) to the component level (micro) when emergent behaviour or properties appear in a system. This feedback results in the appearance of correlations, where none existed before, between the internal variables of individual agents and the properties that an agent detects in its local environment. In a case study of five different multi-agent systems we demonstrate that the number of agents that report these correlations increases as emergence occurs in each system. This provides the constituent agents with sufficient information to collaboratively detect when emergence has occurred at a system level without the need for a centralized, global view of the system.
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