风对列车节能控制的影响

IF 2.1 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Alessio Trivella, Pengling Wang, Francesco Corman
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引用次数: 0

摘要

节能列车轨道对应于列车在两个车站之间的速度分布,在尊重预定到达时间和运行约束(如速度限制)的情况下,最大限度地减少能源消耗。在运筹学和运输文献中,确定这一轨道是一个众所周知的问题,但迄今为止的研究都没有考虑到随机变量,如天气条件或火车负载,这些随机变量在每次旅行中都是不同的。这些变量对列车阻力产生影响,进而影响能量消耗。在本文中,我们关注风的变化,并提出了一个列车阻力方程,该方程明确地考虑了风速和风向对列车运动的影响。基于这个方程,我们利用列车出发前可用的风知识,即风的测量和预测,计算出节能的速度剖面。具体而言,我们:(i)构建了一个基于新的非线性速度值离散化的距离-速度网络,并嵌入了根据风数据更新的列车物理运动关系;(ii)将线搜索框架与动态规划最短路径算法相结合,计算出节能轨迹。大量的数值实验表明,与不考虑任何风信息的传统速度曲线相比,我们的“风感知”列车轨迹呈现出不同的形状,并减少了能源消耗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The impact of wind on energy-efficient train control

An energy-efficient train trajectory corresponds to the speed profile of a train between two stations that minimizes energy consumption while respecting the scheduled arrival time and operational constraints such as speed limits. Determining this trajectory is a well-known problem in the operations research and transport literature, but has so far been studied without accounting for stochastic variables like weather conditions or train load that in reality vary in each journey. These variables have an impact on the train resistance, which in turn affects the energy consumption. In this paper, we focus on wind variability and propose a train resistance equation that accounts for the impact of wind speed and direction explicitly on the train motion. Based on this equation, we compute the energy-efficient speed profile that exploits the knowledge of wind available before train departure, i.e., wind measurements and forecasts. Specifically, we: (i) construct a distance-speed network that relies on a new non-linear discretization of speed values and embeds the physical train motion relations updated with the wind data, and (ii) compute the energy-efficient trajectory by combining a line-search framework with a dynamic programming shortest path algorithm. Extensive numerical experiments reveal that our “wind-aware” train trajectories present different shape and reduce energy consumption compared to traditional speed profiles computed regardless of any wind information.

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来源期刊
CiteScore
4.60
自引率
0.00%
发文量
24
审稿时长
129 days
期刊介绍: The EURO Journal on Transportation and Logistics promotes the use of mathematics in general, and operations research in particular, in the context of transportation and logistics. It is a forum for the presentation of original mathematical models, methodologies and computational results, focussing on advanced applications in transportation and logistics. The journal publishes two types of document: (i) research articles and (ii) tutorials. A research article presents original methodological contributions to the field (e.g. new mathematical models, new algorithms, new simulation techniques). A tutorial provides an introduction to an advanced topic, designed to ease the use of the relevant methodology by researchers and practitioners.
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