Dynamic prediction of traffic incident duration on urban expressways: A deep learning approach based on LSTM and MLP

Weiwei Zhu;Jinglin Wu;Ting Fu;Junhua Wang;Jie Zhang;Qiangqiang Shangguan
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引用次数: 26

Abstract

Purpose - Efficient traffic incident management is needed to alleviate the negative impact of traffic incidents. Accurate and reliable estimation of traffic incident duration is of great importance for traffic incident management. Previous studies have proposed models for traffic incident duration prediction; however, most of these studies focus on the total duration and could not update prediction results in real-time. From a traveler's perspective, the relevant factor is the residual duration of the impact of the traffic incident. Besides, few (if any) studies have used dynamic traffic flow parameters in the prediction models. This paper aims to propose a framework to fill these gaps. Design/methodology/approach - This paper proposes a framework based on the multi-layer perception (MLP) and long short-term memory (LSTM) model. The proposed methodology integrates traffic incident-related factors and real-time traffic flow parameters to predict the residual traffic incident duration. To validate the effectiveness of the framework, traffic incident data and traffic flow data from Shanghai Zhonghuan Expressway are used for modeling training and testing. Findings - Results show that the model with 30-min time window and taking both traffic volume and speed as inputs performed best. The area under the curve values exceed 0.85 and the prediction accuracies exceed 0.75. These indicators demonstrated that the model is appropriate for this study context. The model provides new insights into traffic incident duration prediction. Research limitations/implications - The incident samples applied by this study might not be enough and the variables are not abundant. The number of injuries and casualties, more detailed description of the incident location and other variables are expected to be used to characterize the traffic incident comprehensively. The framework needs to be further validated through a sufficiently large number of variables and locations. Practical implications - The framework can help reduce the impacts of incidents on the safety of efficiency of road traffic once implemented in intelligent transport system and traffic management systems in future practical applications. Originality/value - This study uses two artificial neural network methods, MLP and LSTM, to establish a framework aiming at providing accurate and time-efficient information on traffic incident duration in the future for transportation operators and travelers. This study will contribute to the deployment of emergency management and urban traffic navigation planning.
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城市快速路交通事故时长的动态预测:一种基于LSTM和MLP的深度学习方法
目的-需要有效的交通事故管理来减轻交通事故的负面影响。准确可靠地估计交通事故持续时间对交通事故管理具有重要意义。先前的研究提出了交通事故持续时间预测模型;然而,这些研究大多集中在总持续时间上,无法实时更新预测结果。从旅行者的角度来看,相关因素是交通事故影响的剩余持续时间。此外,很少(如果有的话)研究在预测模型中使用动态交通流参数。本文旨在提出一个填补这些空白的框架。设计/方法/方法-本文提出了一个基于多层感知(MLP)和长短期记忆(LSTM)模型的框架。所提出的方法综合了交通事件相关因素和实时交通流参数来预测剩余交通事件持续时间。为了验证该框架的有效性,使用上海至中环高速公路的交通事件数据和交通流量数据进行建模训练和测试。研究结果-结果显示,以交通量和速度为输入的30分钟时间窗口模型表现最好。曲线下面积值超过0.85,预测精度超过0.75。这些指标表明,该模型适用于本研究背景。该模型为交通事故持续时间预测提供了新的见解。研究局限性/影响-本研究应用的事件样本可能不够,变量也不丰富。伤亡人数、事件地点的更详细描述和其他变量有望用于全面描述交通事件。该框架需要通过足够多的变量和位置进行进一步验证。实际意义-一旦在未来的实际应用中在智能交通系统和交通管理系统中实施,该框架可以帮助减少事故对道路交通安全和效率的影响。独创性/价值-本研究使用两种人工神经网络方法,MLP和LSTM,建立了一个框架,旨在为交通运营商和旅行者提供关于未来交通事故持续时间的准确和时效信息。这项研究将有助于应急管理和城市交通导航规划的部署。
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Front Cover Contents Advancements and Prospects in Multisensor Fusion for Autonomous Driving Extracting Networkwide Road Segment Location, Direction, and Turning Movement Rules From Global Positioning System Vehicle Trajectory Data for Macrosimulation Decision Making and Control of Autonomous Vehicles Under the Condition of Front Vehicle Sideslip
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