云中基于智能体的模拟进化

James Decraene, Y. Cheng, M. Low, Suiping Zhou, Wentong Cai, Chwee Seng Choo
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引用次数: 17

摘要

不断发展的基于智能体的模拟使人们能够自动化复杂自适应系统建模的困难迭代过程,以展示预先指定/期望的行为。然而,这种新兴技术结合了基于代理的建模/仿真和进化计算的研究进展,需要大量的计算资源(即高性能计算设施)来评估跨大型搜索空间的仿真模型。此外,这种实验通常以不经常的方式进行,并且可能在计算设施不完全可用时进行。因此,用户可能会面临限制使用这些“可进化模拟”技术的计算预算。我们建议使用云计算范式来解决这些预算和灵活性问题。为了协助这项研究,我们利用了一个模块化的进化框架,该框架创造了CASE(复杂自适应系统进化器),它能够使用自然启发的搜索算法来进化基于智能体的模型。在本文中,我们提出了支持云计算范式的该框架的改编。给出了一个进化实验的例子,该实验检验了用基于智能体的仿真平台MANA建模的简化军事场景。该实验涉及自动化红队:国防分析人员用于研究作战行动(这里被视为复杂的自适应系统)的脆弱性评估工具。实验结果表明,利用云计算范式支持计算密集型可进化模拟实验具有很大的研究潜力。最后,我们讨论了对我们的云计算兼容案例的额外扩展,其中我们建议合并分布式进化方法,例如,基于岛屿的模型,以进一步优化进化搜索。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving agent-based simulations in the clouds
Evolving agent-based simulations enables one to automate the difficult iterative process of modeling complex adaptive systems to exhibit pre-specified/desired behaviors. Nevertheless this emerging technology, combining research advances in agent-based modeling/simulation and evolutionary computation, requires significant computing resources (i.e., high performance computing facilities) to evaluate simulation models across a large search space. Moreover, such experiments are typically conducted in an infrequent fashion and may occur when the computing facilities are not fully available. The user may thus be confronted with a computing budget limiting the use of these “evolvable simulation” techniques. We propose the use of the cloud computing paradigm to address these budget and flexibility issues. To assist this research, we utilize a modular evolutionary framework coined CASE (for complex adaptive system evolver) which is capable of evolving agent-based models using nature-inspired search algorithms. In this paper, we present an adaptation of this framework which supports the cloud computing paradigm. An example evolutionary experiment, which examines a simplified military scenario modeled with the agent-based simulation platform MANA, is presented. This experiment refers to Automated Red Teaming: a vulnerability assessment tool employed by defense analysts to study combat operations (which are regarded here as complex adaptive systems). The experimental results suggest promising research potential in exploiting the cloud computing paradigm to support computing intensive evolvable simulation experiments. Finally, we discuss an additional extension to our cloud computing compliant CASE in which we propose to incorporate a distributed evolutionary approach, e.g., the island-based model to further optimize the evolutionary search.
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