自组织移动Ad Hoc网络控制器的神经进化

David B. Knoester, P. McKinley
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引用次数: 5

摘要

本文描述了一种利用神经进化来发现模拟移动自组织网络控制器的研究。神经进化是一种技术,利用进化算法产生人工神经网络来解决用户定义的任务。在这里,我们使用神经进化来研究一个通用的基于覆盖的问题,其中网络中的代理要最大化网络中最大连接组件所覆盖的区域。这项工作的一个示例应用是发现海洋监测移动网络的控制算法。虽然这对神经进化来说是一个具有挑战性的问题领域,但我们的实验结果揭示了使用这种方法时需要考虑的三个重要特征。具体来说,我们发现,隐式减少熵的方法,同时明确地解决自组织和可扩展性,能够发现保持稳定的行为,即使它们控制的网络大小不同,而不是在进化过程中评估。这一结果表明,神经进化可能是发现自组织多智能体系统控制器的一种可行策略。
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Neuroevolution of Controllers for Self-Organizing Mobile Ad Hoc Networks
This paper describes a study in the use of neuroevolution to discover controllers for a simulated mobile ad hoc network. Neuroevolution is a technique whereby an evolutionary algorithm is used to produce artificial neural networks that solve a user-defined task. Here, we use neuroevolution to study a generic coverage-based problem, where agents in the network are to maximize the area covered by the largest connected component of the network. An example application for this work is the discovery of control algorithms for an ocean-monitoring mobile network. While this is a challenging problem domain for neuroevolution, results of our experiments reveal three important characteristics to be considered when using such an approach. Specifically, we found that approaches that implicitly reduce entropy, while explicitly addressing self-organization and scalability, are capable of discovering behaviors that remain stable even when they control networks of different sizes than were evaluated during evolution. This result suggests that neuroevolution may be a viable strategy for discovering controllers for self-organizing multi-agent systems.
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