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Real time eco-driving of high speed trains by simulation-based dynamic multi-objective optimization

机译:基于仿真的动态多目标优化的高速列车实时生态驱动

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Eco-driving is a traffic operation measure that may lead to important energy savings in high speed railway systems. Eco-driving optimization has been applied offline in the design of commercial services. However, the benefits of the efficient driving can also be applied on-line in the regulation stage to recover train delays or in general, to adapt the driving to the changing conditions in the line. In this paper the train regulation problem is stated as a dynamic multi-objective optimization model to take advantage in real time of accurate results provided by detailed train simulation. If the simulation model is realistic, the railway operator will be confident on the fulfillment of punctuality requirements. The aim of the optimization model is to find the Pareto front of the possible speed profiles and update it during the train travel. It continuously calculates a set of optimal speed profiles and, when necessary, one of them is used to substitute the nominal driving. The new speed profile is energy efficient under the changing conditions of the problem. The dynamic multi-objective optimization algorithms DNSGA-II and DMOPSO combined with a detailed simulation model are applied to solve this problem. The performance of the dynamic algorithms has been analyzed in a case study using real data from a Spanish high speed line. The results show that dynamic algorithms are faster tracking the Pareto front changes than their static versions. In addition, the chosen algorithms have been compared with the typical delay recovery strategy of drivers showing that DMOPSO provides 7.8% of energy savings. (C) 2018 Elsevier B.V. All rights reserved.
机译:生态驾驶是一种交通运营措施,可能导致高速铁路系统的重要节能。在商业服务设计中,生态驾驶优化已脱机。然而,高效驾驶的益处也可以在调节阶段在线施加,以回收火车延迟或通常,以使驱动器适应线路的变化条件。在本文中,列车调节问题被称为动态的多目标优化模型,以便在详细的列车模拟提供的准确结果时利用。如果仿真模型是现实的,铁路运营商将对履行准时要求充满信心。优化模型的目的是找到可能的速度配置文件的帕累托,并在火车旅行期间更新。它连续计算一组最佳速度型材,并且在必要时,其中一个用于替换标称驾驶。新速度轮廓在问题的变化条件下是节能。动态多目标优化算法DNSGA-II和DMOPSO与详细的仿真模型相结合,以解决这个问题。在使用西班牙高速线的实际数据的情况下,在案例研究中分析了动态算法的性能。结果表明,动态算法更快地跟踪Pareto正面变化而不是静态版本。此外,已选择的算法与司机的典型延迟恢复策略进行了比较,显示DMOPSO提供7.8%的节能。 (c)2018 Elsevier B.v.保留所有权利。

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