Traffic crash prediction model in Kano State, Nigeria: a multivariate LSTM approach

IF 1 4区 工程技术 Q4 ENGINEERING, CIVIL Proceedings of the Institution of Civil Engineers-Transport Pub Date : 2024-05-06 DOI:10.1680/jtran.24.00003
Muwaffaq Safiyanu Labbo, Xinguo Jiang, Gatesi Jean de Dieu
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Abstract

Accurate traffic crash prediction is crucial for implementing effective road safety measures. This study compares the performance of Long Short-Term Memory (LSTM) and Multivariate LSTM (MLSTM) models in forecasting total crash count data in Kano State, Nigeria. Human and vehicle factors, including speed violation, tire burst, brake failure, sign light violation, and phone use while driving, are incorporated as covariates in the MLSTM model. An ARIMAX model is employed to investigate the effects of the covariates. The MLSTM model outperforms both the basic LSTM model and individual covariate models, emphasizing the synergistic effect of considering a broad range of factors. The ARIMAX model results reveal that speed violation is significantly positively correlated with total crashes, while other covariates show positive correlations but do not reach the statistical significance. The findings underscore the importance of a multivariate approach in enhancing traffic crash prediction. The MLSTM model's superior performance highlights the value of considering a comprehensive range of factors that influence crash occurrence to achieve more accurate predictions. Practical applications of these models could involve leveraging them for proactive traffic safety measures, which include increased enforcement of traffic rules, targeted driver education and campaigns, and improvements to road infrastructure.
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尼日利亚卡诺州交通事故预测模型:多变量 LSTM 方法
准确的交通事故预测对于实施有效的道路安全措施至关重要。本研究比较了长短期记忆(LSTM)和多变量 LSTM(MLSTM)模型在预测尼日利亚卡诺州车祸总数数据方面的性能。在 MLSTM 模型中,人和车辆因素(包括超速、爆胎、刹车失灵、违反标志灯规定和驾驶时使用手机)被作为协变量纳入模型。采用 ARIMAX 模型研究协变量的影响。MLSTM 模型优于基本 LSTM 模型和单个协变量模型,强调了考虑广泛因素的协同效应。ARIMAX 模型的结果显示,超速违规行为与总碰撞事故显著正相关,而其他协变量显示正相关,但未达到统计显著性。这些发现强调了多变量方法在加强交通事故预测方面的重要性。MLSTM 模型的卓越性能凸显了综合考虑影响交通事故发生的各种因素以实现更准确预测的价值。这些模型的实际应用包括利用这些模型采取积极主动的交通安全措施,其中包括加强交通规则的执行力度、开展有针对性的驾驶员教育和宣传活动以及改善道路基础设施。
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来源期刊
CiteScore
2.60
自引率
0.00%
发文量
42
审稿时长
5 months
期刊介绍: Transport is essential reading for those needing information on civil engineering developments across all areas of transport. This journal covers all aspects of planning, design, construction, maintenance and project management for the movement of goods and people. Specific topics covered include: transport planning and policy, construction of infrastructure projects, traffic management, airports and highway pavement maintenance and performance and the economic and environmental aspects of urban and inter-urban transportation systems.
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