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A Fully Distributed Collection Technology for Mass Simulation Data

机译:海量仿真数据的全分布式收集技术

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Massive data have been generated in large-scale distributed simulation based on HLA. The data collection in passively subscribing way cannot meet the requirements of data integrity and simulation scalability. Based on the analysis of existing problems, a new fully distributed collection method was proposed. Two collection architectures were presented corresponding to the post event and near real time data analysis. By adopting the big data processing framework called Hadoop, most of the collected data were processed at local and need not to gather the whole data together from distributed nodes. As a result the network traffic was saved at simulation runtime and the simulation resources could be reused for post analysis. Furthermore, the multileveled memory buffer and resource scheduling based on fuzzy reasoning were used to reduce the impact on performance of federate application. Finally, the testing results on prototype demonstrated that the proposed approach is effective and efficient.
机译:在基于HLA的大规模分布式仿真中已经生成了大量数据。被动订阅的数据收集方式不能满足数据完整性和仿真可扩展性的要求。在分析现有问题的基础上,提出了一种新的完全分布式收集方法。提出了两种收集架构,分别对应于事后事件和近实时数据分析。通过采用称为Hadoop的大数据处理框架,大部分收集的数据在本地进行处理,而无需从分布式节点中收集整个数据。结果,在模拟运行时节省了网络流量,并且可以将模拟资源重新用于后期分析。此外,使用了基于模糊推理的多级内存缓冲区和资源调度来减少对联邦应用程序性能的影响。最后,对原型的测试结果表明该方法是有效的。

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