首页> 外文会议>IEEE International Conference on Data Science and Advanced Analytics >Large-Scale Railway Networks Train Movements: A Dynamic, Interpretable, and Robust Hybrid Data Analytics System
【24h】

Large-Scale Railway Networks Train Movements: A Dynamic, Interpretable, and Robust Hybrid Data Analytics System

机译:大型铁路网络的列车运动:动态,可解释且健壮的混合数据分析系统

获取原文

摘要

We investigate the problem of analyzing the train movements in Large-Scale Railway Networks for the purpose of understanding and predicting their behaviour. We focus on different important aspects: the Running Time of a train between two stations, the Dwell Time of a train in a station, the Train Delay, and the Penalty Costs associated to a delay. Two main approaches exist in literature to study these aspects. One is based on the knowledge of the network and the experience of the operators. The other one is based on the analysis of the historical data about the network with advanced data analytics methods. In this paper, we will propose an hybrid approach in order to address the limitations of the current solutions. In fact, experience-based models are interpretable and robust but not really able to take into account all the factors which influence train movements resulting in low accuracy. From the other side, Data-Driven models are usually not easy to interpret, nor robust to infrequent events, and require a representative amount of data which is not always available if the phenomenon under examination changes too fast. Results on real world data coming from the Italian railway network will show that the proposed solution outperforms both state-of-the-art experience and Data-Driven based systems in terms of interpretability, robustness, ability to handle non recurrent events and changes in the behaviour of the network, and ability to consider complex and exogenous information.
机译:为了了解和预测其行为,我们研究了分析大型铁路网络中火车运动的问题。我们专注于不同的重要方面:两个站点之间火车的运行时间,一个站点中火车的停留时间,火车延误以及与延误相关的罚款成本。文献中存在两种主要方法来研究这些方面。一种是基于网络的知识和运营商的经验。另一个基于高级数据分析方法对网络历史数据的分析。在本文中,我们将提出一种混合方法,以解决当前解决方案的局限性。实际上,基于经验的模型是可解释且强大的,但实际上并不能考虑所有影响火车运动从而导致准确性降低的因素。另一方面,“数据驱动”模型通常不容易解释,也不易发生偶发事件,并且需要有代表性的数据量,如果所检查的现象变化太快,这些数据就不总是可用的。来自意大利铁路网的真实世界数据的结果表明,在可解释性,鲁棒性,处理非经常性事件和更改方面的能力方面,所提出的解决方案优于最新的经验和基于数据驱动的系统。网络的行为以及考虑复杂和外来信息的能力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号