包含外生天气数据的列车延误预测系统的高级分析

L. Oneto, Emanuele Fumeo, Giorgio Clerico, Renzo Canepa, Federico Papa, C. Dambra, N. Mazzino, D. Anguita
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引用次数: 31

摘要

最先进的列车延误预测系统既不利用列车运行的历史数据,也不利用可能影响铁路运行的现象的外生数据。相反,他们依赖于铁路基础设施专家基于经典单变量统计建立的静态规则。本文的目的是利用最新的分析工具构建一个数据驱动的列车延误预测系统。将列车延误预测问题映射为一个多元回归问题,并比较了核方法、集成方法和前馈神经网络的性能。首先,证明了仅基于列车运行的历史数据就可以建立可靠、鲁棒的数据驱动模型。此外,通过纳入来自外部来源的数据,特别是国家气象服务机构提供的天气信息,可以进一步改进该模式。来自意大利铁路网的真实数据的结果表明,本文的建议能够显着改善目前最先进的列车延误预测系统。此外,模拟结果表明,将天气数据纳入模式对其性能有显著的积极影响。
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Advanced Analytics for Train Delay Prediction Systems by Including Exogenous Weather Data
State-of-the-art train delay prediction systems neither exploit historical data about train movements, nor exogenous data about phenomena that can affect railway operations. They rely, instead, on static rules built by experts of the railway infrastructure based on classical univariate statistics. The purpose of this paper is to build a data-driven train delay prediction system that exploits the most recent analytics tools. The train delay prediction problem has been mapped into a multivariate regression problem and the performance of kernel methods, ensemble methods and feed-forward neural networks have been compared. Firstly, it is shown that it is possible to build a reliable and robust data-driven model based only on the historical data about the train movements. Additionally, the model can be further improved by including data coming from exogenous sources, in particular the weather information provided by national weather services. Results on real world data coming from the Italian railway network show that the proposal of this paper is able to remarkably improve the current state-of-the-art train delay prediction systems. Moreover, the performed simulations show that the inclusion of weather data into the model has a significant positive impact on its performance.
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