Coasting advice based on the analytical solutions of the train motion model

IF 2.6 Q3 TRANSPORTATION
Alex Cunillera , Harm H. Jonker , Gerben M. Scheepmaker , Wilbert H.T.J. Bogers , Rob M.P. Goverde
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引用次数: 0

Abstract

Supervision, data analysis and communication algorithms monitor trains, exploiting most of their available computational power. On-board eco-driving algorithms such as Driver Advisory Systems (DAS) are no exception, as the computational power available limits their complexity and features. This was the case of Roltijd, the in-house developed DAS based on coasting advice of NS, the main Dutch passenger railway undertaking. This platform calculated the coasting curves at every second by integrating the equations of motion numerically, assuming that the track is flat. However, generating more complex driving advice required replacing this coasting curve calculation by a more computationally-efficient algorithm. In this article we propose a new coasting advice algorithm based on the analytical solutions of the train motion model, assuming that gradients and speed limits are piecewise constant functions of the train location. We analyse the qualitative properties of these solutions using bifurcation theory, showing that bifurcations arise depending on the value of the gradient and the applied tractive effort. We validate the proposed algorithm, finding that our algorithm is accurate and can be 15 times faster than the previous method. This allowed NS to implement our algorithm on their trains, contributing daily to the sustainable mobility of 1.3 million passengers.

基于列车运动模型解析解的滑行建议
监控、数据分析和通信算法利用列车的大部分可用计算能力对列车进行监控。车载生态驾驶算法,如驾驶员咨询系统(DAS)也不例外,因为可用的计算能力限制了它们的复杂性和功能。Roltijd就是这样,它是根据荷兰主要客运铁路公司NS的滑行建议自行开发的DAS。该平台通过对运动方程进行数值积分来计算每秒的滑行曲线,假设轨道是平坦的。然而,生成更复杂的驾驶建议需要用计算效率更高的算法来代替这种滑行曲线计算。在本文中,我们基于列车运动模型的解析解提出了一种新的滑行建议算法,假设坡度和速度限制是列车位置的分段常数函数。我们使用分叉理论分析了这些解的定性性质,表明分叉的产生取决于梯度的值和施加的牵引力。我们验证了所提出的算法,发现我们的算法是准确的,并且可以比以前的方法快15倍。这使NS能够在其列车上实施我们的算法,每天为130万乘客的可持续出行做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.10
自引率
8.10%
发文量
41
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