基于机器学习的交通状态预测的时空相关建模:最先进的和超越的

IF 9.5 1区 工程技术 Q1 TRANSPORTATION Transport Reviews Pub Date : 2023-07-01 DOI:10.1080/01441647.2023.2171151
Haipeng Cui , Qiang Meng , Teck-Hou Teng , Xiaobo Yang
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引用次数: 0

摘要

交通状态预测因其现实意义而受到越来越多的关注。然而,现有文献缺乏从交通导向的角度来解决基于ml的交通状态预测模型中的时空相关性问题。因此,本研究旨在对基于ML的交通状态预测模型所采用的时空相关建模(STCM)方法进行全面和批判性的回顾,并基于交通导向特征和ML技术提供未来的研究方向。具体而言,我们研究了基于神经网络的交通状态预测模型,并通过提出的系统回顾框架来表征这些模型的STCM,该框架包括三个组成部分:(i)空间特征表示,展示了关于道路网络的空间信息是如何形成的;(ii)时间特征表示,说明了提取时间特征的各种方法;(iii)模型结构分析了模型布局,以同时解决空间相关性和时间相关性。最后,提出了将交通导向特征(如信号效应)与ML技术相结合的几个开放挑战,并提供了未来的研究方向。
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Spatiotemporal correlation modelling for machine learning-based traffic state predictions: state-of-the-art and beyond

Predicting traffic states has gained more attention because of its practical significance. However, the existing literature lacks a critical review regarding how to address the spatiotemporal correlation in the ML-based traffic state prediction models from a traffic-oriented perspective. Therefore, this study aims to comprehensively and critically review the spatiotemporal correlation modelling (STCM) approaches adopted for developing ML-based traffic state prediction models and provide future research directions based on traffic-oriented characteristics and ML techniques. Concretely, we investigate the neural network-based traffic state prediction models and characterise the STCM of these models by a proposed systematic review framework including three components: (i) spatial feature representation that demonstrates how the spatial information regarding road network is formulated, (ii) temporal feature representation that illustrates a variety of approaches to extract the temporal features, and (iii) model structure analyses the model layout to address the spatial correlations and temporal correlations simultaneously. Finally, several open challenges regarding incorporating traffic-oriented characteristics such as signal effects with ML techniques are put up with future research directions provided and discussed.

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来源期刊
Transport Reviews
Transport Reviews TRANSPORTATION-
CiteScore
17.70
自引率
1.00%
发文量
32
期刊介绍: Transport Reviews is an international journal that comprehensively covers all aspects of transportation. It offers authoritative and current research-based reviews on transportation-related topics, catering to a knowledgeable audience while also being accessible to a wide readership. Encouraging submissions from diverse disciplinary perspectives such as economics and engineering, as well as various subject areas like social issues and the environment, Transport Reviews welcomes contributions employing different methodological approaches, including modeling, qualitative methods, or mixed-methods. The reviews typically introduce new methodologies, analyses, innovative viewpoints, and original data, although they are not limited to research-based content.
期刊最新文献
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