面对中断时公共交通的弹性:来自可解释机器学习的见解

IF 6.8 1区 工程技术 Q1 ECONOMICS
Benjamin Cottreau , Mehmet Güney Celbiş , Ouassim Manout , Louafi Bouzouina
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引用次数: 0

摘要

公共交通的中断会对乘客活动和服务的吸引力产生重大影响,特别是当它们没有被整个网络吸收时。本研究旨在利用可解释的机器学习技术,检测中断的存在,并评估现有替代公交或有轨电车站点对PT网络弹性的贡献。检测任务被制定为一个监督分类问题,使用随机森林(RF)对39个不同的地铁站执行,使用自动收费(AFC)数据和服务中断日志(SD-logs)。此外,采用SHapley加性解释(SHAP)解释方法,检索各备选止点对PT弹性贡献度的大小和方向。结果表明,所提出的建模框架具有较高的预测性能,可以最大限度地降低虚警率,并且可以在sd日志中提前5分钟预测到中断的发生。研究结果还表明需求在哪里被重新分配,从而得出5个不同的地铁站弹性集群。密度和连通性是弹性的两个主要属性,在中断管理(战术)和发展(战略)计划的设计中发挥着核心作用。所提出的方法已应用于里昂(法国)的PT网络,并且可以通过调整超参数来复制其他PT网络中观察到的使用情况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Resilience of public transport in the face of disruptions: Insights from explainable machine learning
Disruptions in public transport (PT) can have a major impact on passenger activities and on the attractiveness of the service, particularly when they are not absorbed by the network as a whole. The present study aims to detect the presence of disruption and assess the contribution of existing alternative bus or tramway stops to the resilience of the PT network, using explainable machine learning techniques. The detection task is formulated as a supervised classification problem performed using Random Forest (RF) for 39 different subway stations, using Automatic Fare Collection (AFC) data and Service Disruption logs (SD-logs). Furthermore, the SHapley Additive exPlanation (SHAP) interpretation method is implemented to retrieve the magnitude and the direction of each alternative stop’s contribution to PT resilience. Results show that the proposed modeling framework has high prediction performance, can minimize false alarm rates, and can foresee the occurrence of disruptions 5 min before their registered beginning in SD-logs. Findings also indicate where demand is reallocated, resulting in 5 different resilience clusters for subway stations. Density and connectivity emerge as two major attributes of resilience that have a central role in the design of disruption management (tactical) and development (strategical) plans. The proposed approach has been applied to the PT network of Lyon (France) and is replicable by adapting the hyperparameters to the observed use in other PT networks.
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来源期刊
CiteScore
13.20
自引率
7.80%
发文量
257
审稿时长
9.8 months
期刊介绍: Transportation Research: Part A contains papers of general interest in all passenger and freight transportation modes: policy analysis, formulation and evaluation; planning; interaction with the political, socioeconomic and physical environment; design, management and evaluation of transportation systems. Topics are approached from any discipline or perspective: economics, engineering, sociology, psychology, etc. Case studies, survey and expository papers are included, as are articles which contribute to unification of the field, or to an understanding of the comparative aspects of different systems. Papers which assess the scope for technological innovation within a social or political framework are also published. The journal is international, and places equal emphasis on the problems of industrialized and non-industrialized regions. Part A''s aims and scope are complementary to Transportation Research Part B: Methodological, Part C: Emerging Technologies and Part D: Transport and Environment. Part E: Logistics and Transportation Review. Part F: Traffic Psychology and Behaviour. The complete set forms the most cohesive and comprehensive reference of current research in transportation science.
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