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The Multi-Agent Data Collection in HLA-based Simulation System

机译:基于HLA的仿真系统中的多Agent数据收集

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The High Level Architecture (HLA) for distributed simulation was proposed by the Defense Modeling and Simulation Office of the Department of Defense (DOD) in order to support interoperability among simulations as well as reuse of simulation models. One aspect of reusability is to collect and analyze data generated in simulation exercises, including a record of events that occur during the execution, and the states of simulation objects. In order to improve the performance of existing data collection mechanisms in the HLA simulation system, the paper proposes a multi-agent data collection system. The proposed approach adopts the hierarchical data management/organization mechanism to achieve fast data access which is indispensable to the analysis of simulation exercise. Furthermore, the multi-agent data collection system adopts a formalization expression method to describe the system behavioral characteristics, and implements the hierarchy language supports to the description by combing the XML and Petri net. In addition, we propose an independent reinforcement learning algorithm to generate optimized joint recording program which guarantees that the data collection and query tasks can be rationally distributed among logging agents as well as efficiently utilize computational resource. The testing results indicate that the proposed approach, under the premise of complete collection of simulation data, not only reduces the network load imposed by data collection components, but also provides effective supports to the analysis of simulation exercise.
机译:国防部国防建模与仿真办公室(DOD)提出了用于分布式仿真的高级体系结构(HLA),以支持仿真之间的互操作性以及仿真模型的重用。可重用性的一个方面是收集和分析在模拟练习中生成的数据,包括执行期间发生的事件的记录以及模拟对象的状态。为了提高HLA仿真系统中现有数据收集机制的性能,提出了一种多主体数据收集系统。所提出的方法采用分层数据管理/组织机制来实现快速数据访问,这对于仿真演习的分析是必不可少的。此外,多主体数据收集系统采用形式化表达方法来描述系统的行为特征,并通过结合XML和Petri网来实现对描述的层次语言支持。此外,我们提出了一种独立的强化学习算法来生成优化的联合记录程序,该程序可以确保数据收集和查询任务可以在测井代理之间合理分配,并有效利用计算资源。测试结果表明,该方法在完整收集模拟数据的前提下,不仅减轻了数据收集组件带来的网络负荷,而且为模拟演练的分析提供了有效的支持。

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