通过机器学习和自然语言处理分析铁路事故

IF 2.6 Q3 TRANSPORTATION
Raj Bridgelall , Denver D. Tolliver
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引用次数: 0

摘要

铁路系统不断发展的复杂性也增加了人为失误导致故障的可能性。本研究比较了两个工作流程的结果,这两个流程采用了 11 种不同的机器学习技术,以识别通常与人为事故相关的铁路运营特征。第一个工作流程从大型铁路事故数据库的固定属性字段中提取特征,第二个工作流程应用自然语言处理技术从非结构化事故叙述中提取特征。两个工作流程都应用了 Shapely 博弈论模型,根据特征对预测事故原因的边际贡献来排列特征的重要性。在几个有趣的发现中,最出人意料的是人为事故通常与列车高速行驶或脱轨类型的事故无关,而且推车比拉车更危险。这项研究的这些发现和其他发现可以为管理决策、规划和政策提供参考,从而最大限度地降低人为事故的风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Railroad accident analysis by machine learning and natural language processing

The evolving complexities of railroad systems also increase their vulnerability to failure from human error. This study compared the outcomes of two workflows that incorporated 11 different machine learning techniques to identify characteristics of railroad operations that are generally associated with human-caused accidents. The first workflow engineered features from the fixed attribute fields of a large railroad accident database and the second applied natural language processing to extract features from the unstructured accident narratives. Both workflows applied a Shapely game-theoretic model to rank the importance of features based on their marginal contribution towards predicting accident cause. Among several interesting findings, some of the most unexpected were that human-caused accidents are generally not associated with high train speeds nor derailment type accidents, and that shoving cars is riskier than pulling cars. Those, and other findings, from this study can inform management decisions, planning, and policies to minimize the risk of human-caused accidents.

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CiteScore
7.10
自引率
8.10%
发文量
41
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