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A Survey of Traffic Prediction: from Spatio-Temporal Data to Intelligent Transportation

机译:交通预测调查:从时空数据到智能交通

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Intelligent transportation (e.g., intelligent traffic light) makes our travel more convenient and efficient. With the development of mobile Internet and position technologies, it is reasonable to collect spatio-temporal data and then leverage these data to achieve the goal of intelligent transportation, and here, traffic prediction plays an important role. In this paper, we provide a comprehensive survey on traffic prediction, which is from the spatio-temporal data layer to the intelligent transportation application layer. At first, we split the whole research scope into four parts from bottom to up, where the four parts are, respectively, spatio-temporal data, preprocessing, traffic prediction and traffic application. Later, we review existing work on the four parts. First, we summarize traffic data into five types according to their difference on spatial and temporal dimensions. Second, we focus on four significant data preprocessing techniques: map-matching, data cleaning, data storage and data compression. Third, we focus on three kinds of traffic prediction problems (i.e., classification, generation and estimation/forecasting). In particular, we summarize the challenges and discuss how existing methods address these challenges. Fourth, we list five typical traffic applications. Lastly, we provide emerging research challenges and opportunities. We believe that the survey can help the partitioners to understand existing traffic prediction problems and methods, which can further encourage them to solve their intelligent transportation applications.
机译:智能交通(例如,智能交通灯)使我们的旅行更方便,高效。随着移动互联网和位置技术的发展,收集时空数据是合理的,然后利用这些数据来实现智能运输的目标,在这里,交通预测发挥着重要作用。在本文中,我们对交通预测提供了全面的调查,这是从时空数据层到智能运输应用层的综合调查。首先,我们将整个研究范围分成了从下到上的四个部分,其中四个部分分别为时空数据,预处理,流量预测和流量应用。后来,我们在四部分审查了现有的工作。首先,我们将交通数据总结为五种类型,根据它们对空间和时间尺寸的差异。其次,我们专注于四种重要数据预处理技术:地图匹配,数据清洁,数据存储和数据压缩。第三,我们专注于三种交通预测问题(即,分类,生成和估计/预测)。特别是,我们总结了挑战,并讨论现有方法如何解决这些挑战。第四,我们列出了五个典型的流量应用程序。最后,我们提供了新兴的研究挑战和机遇。我们相信调查可以帮助分区理解现有的交通预测问题和方法,这进一步鼓励他们解决智能运输应用。

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