基于人工蜂群算法的ATO推荐速度曲线优化

Fei Qiang, He Tao, Zhang Rui
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引用次数: 1

摘要

针对城市轨道交通中列车牵引能耗高的问题,将列车推荐速度曲线优化与ATO驾驶策略相结合,提出了一种基于人工蜂群算法的列车节能驾驶策略优化算法。首先,建立了列车推荐速度曲线优化模型。其次,基于驾驶员驾驶经验,提出了一种基于人工蜂群算法的列车推荐速度曲线优化计算方法。然后,设计了一种节能巡航驾驶策略,以改进ATO原有的驾驶策略。最后,用实际数据进行了仿真验证。仿真结果表明,在满足间隔运行时间约束的情况下,采用该算法控制车辆行驶,能耗降低6.9%,计算时间为18.25s。该算法收敛速度快,计算时间短,节能效果明显,对降低列车牵引能耗具有一定的现实意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ATO Recommended Speed Curve Optimization based on Artificial Bee Colony Algorithm
Aiming at the problem of high train traction energy consumption in urban rail transit, this paper combined the optimization of train recommended speed curve and ATO driving strategy, and proposed an optimization algorithm of train energy-saving driving strategy based on artificial bee swarm algorithm. Firstly, an optimization model of train recommended speed curve was established. Secondly, an optimization calculation method of train recommended speed curve based on artificial bee swarm algorithm was proposed based on driver's driving experience. Then, an energy-saving cruising driving strategy was designed to improve ATO's original driving strategy. Finally, the algorithm was verified by simulation with actual data. The simulation results show that when the algorithm is used to control the driving, the energy consumption can be reduced by 6.9% and the calculation time is 18.25s under the condition of meeting the constraints of interval running time. The algorithm has fast convergence speed, small calculation time and obvious energy-saving effect, which has certain practical significance for reducing the train traction energy consumption.
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