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Multiobjective Optimization for Train Speed Trajectory in CTCS High-Speed Railway With Hybrid Evolutionary Algorithm

机译:基于混合进化算法的CTCS高速铁路列车速度轨迹多目标优化

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A speed trajectory profile indicating the authorized train speed at each position can be used to guide the driver or the automatic train operation (ATO) system to operate the train more efficiently, which is the most important part of the Chinese Train Control System (CTCS) and will decide the safety and efficiency of train operation. The efforts produced by the train to follow the speed trajectory will directly affect the evaluation of train operation. This paper studies the optimization approach for the speed trajectory of high-speed train in a single section. First, we take the energy consumption as the measure of satisfaction of the railway company, and the trip time is being regarded as the passenger satisfaction criterion; then, we present optimal speed trajectory searching strategies under different track characteristics by dividing the section into some subsections according to different speed limitations. After that, we develop a multiobjective optimization model for the speed trajectory, which is subject to the constraints such as safety requirement, track profiles, passenger comfort, and the dynamic performance. For obtaining the Pareto frontier of train speed trajectory, which has equal satisfaction degree on all the objects, a hybrid evolutionary algorithm is designed and applied to solve the model based on the differential evolution and simulating annealing algorithms. By showing some numerical results of simulations, the efficiency of the proposed model and solution methodology is illustrated.
机译:指示每个位置的授权火车速度的速度轨迹曲线可用于指导驾驶员或自动火车操作(ATO)系统,以更有效地操作火车,这是中国火车控制系统(CTCS)的最重要部分并决定列车运行的安全性和效率。火车沿着速度轨迹所做的努力将直接影响火车运行的评估。本文研究了单节高速列车速度轨迹的优化方法。首先,我们将能耗作为铁路公司满意度的衡量标准,将出行时间作为旅客满意度标准;然后,根据不同的速度限制,将路段分为几个小节,提出了在不同轨道特征下的最优速度轨迹搜索策略。之后,我们针对速度轨迹开发了一个多目标优化模型,该模型受诸如安全要求,轨道轮廓,乘客舒适度和动态性能等约束条件的约束。为了获得在所有目标上具有相等满意度的列车速度轨迹的帕累托边界,设计了一种混合进化算法,并基于微分进化和模拟退火算法对模型进行求解。通过显示一些数值模拟结果,说明了所提出模型和求解方法的效率。

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