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A hybrid stochastic approach for offline train trajectory reconstruction

机译:离线列车轨迹重建的混合随机方法

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摘要

The next generation of railway systems will require more and more accurate information for the planning of rail operation. These are essential for the introduction of automatic processes of an optimized traffic planning, the optimal use of infrastructure capacity and energy, and, overall, the introduction of data-driven approaches into rail operation. Train trajectories collection constitutes a primary source of information for offline procedures such as timetable generation, driving behaviour analysis and models' calibration. Unfortunately, current train trajectory data are often affected by measurement errors, missing data and, in many cases, incongruence between dependent variables. To overcome this problem, a trajectory reconstruction problem must be solved, before using trajectories for any further purpose. In the present paper, a new hybrid stochastic trajectory reconstruction is proposed. On-board monitoring data on train position and velocity (kinematics) are combined with data on power used for traction and feasible acceleration values (dynamics). A fusion of those two types of information is performed by considering the stochastic characteristics of the data, via smoothing techniques. A promising potential use is seen especially in those cases where information on continuous train positions is not available or unreliable (e.g. tunnels, canyons, etc.).
机译:下一代铁路系统将需要越来越准确的信息来规划铁路运营。这些对于引入优化交通规划的自动化流程、基础设施容量和能源的最佳利用以及总体上将数据驱动的方法引入铁路运营至关重要。列车轨迹收集是离线程序的主要信息来源,例如时间表生成、驾驶行为分析和模型校准。不幸的是,当前的列车轨迹数据经常受到测量误差、数据缺失以及许多因变量之间不一致的影响。为了克服这个问题,在将轨迹用于任何进一步目的之前,必须解决轨迹重建问题。该文提出了一种新的混合随机轨迹重建方法。列车位置和速度(运动学)的车载监控数据与用于牵引的功率数据和可行的加速度值(动力学)相结合。通过平滑技术考虑数据的随机特征,可以对这两种类型的信息进行融合。特别是在那些连续列车位置信息不可用或不可靠的情况下(例如隧道、峡谷等),看到了一个有前途的潜在用途。

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