首页> 外文会议>2013 16th International IEEE Conference on Intelligent Transportation Systems : Intelligent Transportation Systems for All Modes >GPU based Non-dominated Sorting Genetic Algorithm-II for multi-objective traffic light signaling optimization with agent based modeling
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GPU based Non-dominated Sorting Genetic Algorithm-II for multi-objective traffic light signaling optimization with agent based modeling

机译:基于GPU的非主导排序遗传算法II用于基于代理建模的多目标交通信号灯优化

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Micro-simulation becomes more and more important in the Intelligent Transportation Systems (ITS) research, because it can provide detailed descriptions of the system. For a multi-agent systems (MAS) modeling of an ITS, the computation burden is large, as it involves the computation of the state changing of all the agents. And, there are many multi-objective optimization problems in the ITS research. In this paper, we solve the traffic light signaling optimization problem and we take the average delay time and the average stop times as two objectives. We use a famous method of Non-dominated Sorting Genetic Algorithm II (NSGA-II). As NSGA-II can be viewed as an intelligent way of running a number of micro-simulations, usually the computation burden is huge. Graphics Processing Units (GPUs) have been a popular tool for parallel computing. The real transportation system runs in parallel and we think that a parallel tool is more suitable for the simulation and optimization of the system. We test GPU based NSGA-II method on a 4 intersection lattice road network, and on the 18 intersection road network of the Zhongguancun area of Beijing. Compared with the CPU version, the GPU version implementation achieves a speedup factor of 21.46 and 27.64 respectively.
机译:微观仿真在智能交通系统(ITS)研究中变得越来越重要,因为它可以提供系统的详细描述。对于ITS的多代理系统(MAS)建模,计算负担很大,因为它涉及所有代理的状态变化的计算。并且,在ITS研究中存在许多多目标优化问题。在本文中,我们解决了交通信号灯优化问题,并以平均延迟时间和平均停止时间为两个目标。我们使用著名的非支配排序遗传算法II(NSGA-II)。由于可以将NSGA-II视为运行大量微仿真的一种智能方式,因此通常计算量很大。图形处理单元(GPU)已成为流行的并行计算工具。实际的运输系统是并行运行的,我们认为并行工具更适合于系统的仿真和优化。我们在北京的中关村地区的4个交叉点格状道路网络和18个交叉点的道路网络上测试了基于GPU的NSGA-II方法。与CPU版本相比,GPU版本实现的加速因子分别为21.46和27.64。

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