Efficient graph-based dynamic load-balancing for parallel large-scale agent-based traffic simulation

Yadong Xu, Wentong Cai, Heiko Aydt, M. Lees
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引用次数: 18

Abstract

One of the issues of parallelizing large-scale agent-based traffic simulations is partitioning and load-balancing. Traffic simulations are dynamic applications where the distribution of workload in the spatial domain constantly changes. Dynamic load-balancing at run-time has shown better efficiency than static partitioning in many studies. However, existing work has only focused on geographic partitioning methods which do not consider the minimization of communication overhead. In this paper, a graph-based dynamic load-balancing mechanism which minimizes the communication overhead during load-balancing operations is developed. Its efficiency is investigated in the agent-based traffic simulator SEMSim Traffic using real world traffic data. Experiment results show that it has significantly better performance than static graph partitioning methods in improving the overall speed of the simulation.
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基于高效图的并行大规模智能体交通仿真动态负载均衡
并行化大规模基于代理的流量模拟的问题之一是分区和负载平衡。交通仿真是一种动态应用,其工作负载在空间域中的分布是不断变化的。许多研究表明,运行时动态负载均衡比静态分区效率更高。然而,现有的工作只集中在地理分区方法上,没有考虑到通信开销的最小化。本文提出了一种基于图的动态负载均衡机制,使负载均衡过程中的通信开销最小化。利用真实世界的交通数据,在基于智能体的交通模拟器SEMSim traffic中对其有效性进行了研究。实验结果表明,该方法在提高整体仿真速度方面明显优于静态图划分方法。
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