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利用融合深度学习和城市级交通违法数据对事故肇事司机出险频率进行中期预测。

Mid-term prediction of at-fault crash driver frequency using fusion deep learning with city-level traffic violation data.

机构信息

Department of Civil Engineering, National Taiwan University, Taipei, 106, Taiwan.

Department of Civil Engineering, National Taiwan University, Taipei, 106, Taiwan.

出版信息

Accid Anal Prev. 2021 Feb;150:105910. doi: 10.1016/j.aap.2020.105910. Epub 2020 Dec 8.

DOI:10.1016/j.aap.2020.105910
PMID:33302233
Abstract

Traffic violations and improper driving are behaviors that primarily contribute to traffic crashes. This study aimed to develop effective approaches for predicting at-fault crash driver frequency using only city-level traffic enforcement predictors. A fusion deep learning approach combining a convolution neural network (CNN) and gated recurrent units (GRU) was developed to compare predictive performance with one econometric approach, two machine learning approaches, and another deep learning approach. The performance comparison was conducted for (1) at-fault crash driver frequency prediction tasks and (2) city-level crash risk prediction tasks. The proposed CNN-GRU achieved remarkable prediction accuracy and outperformed other approaches, while the other approaches also exhibited excellent performances. The results suggest that effective prediction approaches and appropriate traffic safety measures can be developed by considering both crash frequency and crash risk prediction tasks. In addition, the accumulated local effects (ALE) plot was utilized to investigate the contribution of each traffic enforcement activity on traffic safety in a scenario of multicollinearity among predictors. The ALE plot illustrated a complex nonlinear relationship between traffic enforcement predictors and the response variable. These findings can facilitate the development of traffic safety measures and serve as a good foundation for further investigations and utilization of traffic violation data.

摘要

交通违法行为和不当驾驶是导致交通事故的主要行为。本研究旨在开发仅使用城市级交通执法预测因子预测有责事故驾驶员频率的有效方法。采用卷积神经网络(CNN)和门控循环单元(GRU)相结合的融合深度学习方法,与一种计量经济学方法、两种机器学习方法和另一种深度学习方法进行了预测性能比较。性能比较分别针对(1)有责事故驾驶员频率预测任务和(2)城市级事故风险预测任务进行。所提出的 CNN-GRU 实现了出色的预测准确性,优于其他方法,而其他方法也表现出了优异的性能。结果表明,通过考虑事故频率和事故风险预测任务,可以开发有效的预测方法和适当的交通安全措施。此外,在预测因子之间存在多重共线性的情况下,还利用累积局部效应(ALE)图来研究每个交通执法活动对交通安全的贡献。ALE 图说明了交通执法预测因子与响应变量之间复杂的非线性关系。这些发现可以促进交通安全措施的制定,并为进一步调查和利用交通违法行为数据提供良好的基础。

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