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Incident Duration Modeling Using Flexible Parametric Hazard-Based Models

机译:使用基于可变参数危害的模型进行事件持续时间建模

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摘要

Assessing and prioritizing the duration time and effects of traffic incidents on major roads present significant challenges for road network managers. This study examines the effect of numerous factors associated with various types of incidents on their duration and proposes an incident duration prediction model. Several parametric accelerated failure time hazard-based models were examined, including Weibull, log-logistic, log-normal, and generalized gamma, as well as all models with gamma heterogeneity and flexible parametric hazard-based models with freedom ranging from one to ten, by analyzing a traffic incident dataset obtained from the Incident Reporting and Dispatching System in Beijing in 2008. Results show that different factors significantly affect different incident time phases, whose best distributions were diverse. Given the best hazard-based models of each incident time phase, the prediction result can be reasonable for most incidents. The results of this study can aid traffic incident management agencies not only in implementing strategies that would reduce incident duration, and thus reduce congestion, secondary incidents, and the associated human and economic losses, but also in effectively predicting incident duration time.
机译:评估交通事故的持续时间和对主要道路的影响并确定其优先级,这对道路网络管理人员构成了重大挑战。这项研究检查了与各种类型的事件相关的众多因素对其持续时间的影响,并提出了事件持续时间预测模型。研究了几种基于参数加速故障时间的基于风险的模型,包括Weibull,对数逻辑,对数正态和广义伽玛,以及所有具有伽玛异质性的模型和基于参数风险的灵活模型,自由度介于1到10之间,通过对2008年北京市事故报告与调度系统的交通事故数据集进行分析。结果表明,不同的因素对不同的事故发生时间阶段有显着影响,其最佳分布是多样的。给定每个事件时间阶段基于最佳危害的模型,对于大多数事件,预测结果可能是合理的。这项研究的结果不仅可以帮助交通事故管理机构实施减少事故持续时间,从而减少交通拥堵,继发事故以及相关的人员和经济损失的策略,而且可以有效地预测事故持续时间。

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