Travel time prediction for an intelligent transportation system based on a data-driven feature selection method considering temporal correlation

Q1 Engineering Transportation Engineering Pub Date : 2024-09-07 DOI:10.1016/j.treng.2024.100272
Amirreza Kandiri , Ramin Ghiasi , Maria Nogal , Rui Teixeira
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Abstract

Travel-time prediction is a critical component of Intelligent Transportation Systems (ITS), offering vital information for tasks such as accident detection, congestion management, and traffic flow optimisation. Accurate predictions are highly dependent on the selection of relevant features. In this study, a two-stage methodology is proposed which consists of two layers of Optimisation Algorithm and one Data-Driven method (OA2DD) to enhance the accuracy and efficiency of travel-time prediction. The first stage involves an offline process where interconnected optimisation algorithms are employed to identify the optimal set of features and determine the most effective machine learning model architecture. In the second stage, the real-time process utilises the optimised model to predict travel times using new data from previously unseen parts of the dataset. The proposed OA2DD method was applied to a case study on the M50 motorway in Dublin. Results show that OA2DD improves the convergence curve and reduces the number of selected features by up to 50 %, leading to a 56 % reduction in computational costs. Furthermore, using the selected features from OA2DD, reduced the prediction error by up to 29 % compared to the full feature set and other feature selection methods, demonstrating the method's effectiveness and robustness.

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基于考虑时间相关性的数据驱动特征选择方法的智能交通系统旅行时间预测
行车时间预测是智能交通系统(ITS)的重要组成部分,可为事故检测、拥堵管理和交通流优化等任务提供重要信息。准确的预测在很大程度上取决于相关特征的选择。本研究提出了一种由两层优化算法和一层数据驱动方法(OA2DD)组成的两阶段方法,以提高旅行时间预测的准确性和效率。第一阶段是离线过程,采用相互关联的优化算法来确定最佳特征集,并确定最有效的机器学习模型架构。在第二阶段,实时过程利用优化后的模型,使用数据集中以前未见过的部分的新数据来预测旅行时间。建议的 OA2DD 方法被应用于都柏林 M50 高速公路的案例研究。结果表明,OA2DD 改善了收敛曲线,并将所选特征的数量最多减少了 50%,从而将计算成本降低了 56%。此外,与完整特征集和其他特征选择方法相比,使用 OA2DD 所选特征最多可将预测误差减少 29%,这证明了该方法的有效性和稳健性。
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来源期刊
Transportation Engineering
Transportation Engineering Engineering-Automotive Engineering
CiteScore
8.10
自引率
0.00%
发文量
46
审稿时长
90 days
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