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Machine learning techniques to predict reactionary delays and other associated key performance indicators on British railway network

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posted on 2020-12-31, 23:50 authored by Panukorn Taleongpong, Simon Hu, Zhoutong Jiang, Chao Wu, Sunday Popo-Ola, Ke Han
<p>Reactionary delays that propagate from a primary source throughout train journeys are an immediate concern for British railway systems. Complex non-linear interactions between various spatiotemporal variables govern the propagation of these delays which can avalanche throughout railway network causing further severe disruptions. This paper introduces several machine learning (ML) techniques alongside data mining processes to create a framework that predicts key performance indicators (KPIs), reactionary arrival delay, reactionary departure delay, dwell time and travel time. The frameworks in this paper provide greater accuracy in predicting KPIs through state-of-the-art ML models compared to existing delay prediction systems. Further discussion on the improvements, applicability and scalability of this framework are also provided in this paper.</p>

Funding

The work is supported by the key program project by Ministry of Science and Technology, China [grant no. 2018YFB1600500], National Key Research and Development Project of China [grant No. 2018AAA0101900], National Natural Science Foundation of China (U19B2042), Zhejiang University and Cybervein Joint Research Lab, Zhejiang Natural Science Foundation (LY19F020051) and also supported in part by the Zhejiang University/University of Illinois at Urbana-Champaign Institute and was led by Principal Supervisor Simon Hu.

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