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Dynamic spatial-temporal feature optimization with ERI big data for Short-term traffic flow prediction

机译:动态空间 - 时间特征优化与ERI大数据进行短期交通流量预测

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Accurate short-term traffic flow prediction is an important basis of intelligent transportation systems (ITS) such as transportation operations and urban planning applications. However, due to the lack of complete directly measured data on urban traffic flow, existing studies cannot adequately mine the dynamic spatial-temporal correlations characterizing traffic flows in urban road networks. Electronic registration identification (ERI), which is an emerging technology for uniquely identifying a vehicle, can help collect the travel records of all vehicles. This inspires us to employ ERI big data for traffic flow prediction. In this paper, we propose a dynamic spatial-temporal feature optimization method with ERI big data for shortterm traffic flow prediction based on a gradient-boosted regression tree, called DSTO-GBRT. Firstly, the framework of DSTO-GBRT is built. Secondly, we analyze the dynamic spatial-temporal correlations among the current prediction point and upstream correlative points using the Pearson correlation coefficient (PCC). Thirdly, to eliminate the linear correlations among features, we exploit principal component analysis (PCA) to optimize the original training data and obtain optimized training data. In the experiment, real-world ERI big data from Chongqing are employed for the proposed DSTO-GBRT method. Compared with ST-GBRT, ARIMA, DSTO-BPNN and DSTO-SVM, the results demonstrate that DSTOGBRT can provide timely and adaptive prediction even in rush hour, when traffic conditions change rapidly. Furthermore, compared with DSO-GBRT and DTO-GBRT, the results show that the proposed DSTO-GBRT method is more accurate. (c) 2020 Elsevier B.V. All rights reserved.
机译:准确的短期交通流量预测是智能交通系统(其)的重要基础,如运输运输和城市规划应用。然而,由于缺乏完整的直接测量数据的城市交通流量,现有研究不能充分挖掘特征城市道路网络中交通流量的动态空间时间相关性。电子注册识别(ERI)是一种用于唯一识别车辆的新兴技术,可以帮助收集所有车辆的旅行记录。这激励我们使用ERI大数据进行交通流量预测。在本文中,我们提出了一种动态空间 - 时间特征优化方法,其基于梯度升压回归树的STRI大数据,称为DSTO-GBRT。首先,建造了DSTO-GBRT的框架。其次,我们使用Pearson相关系数(PCC)分析电流预测点和上游相关点之间的动态空间时间相关性。第三,为了消除特征之间的线性相关性,我们利用主成分分析(PCA)来优化原始培训数据并获得优化的培训数据。在实验中,重庆的现实世界ERI大数据用于提出的DSTO-GBRT方法。与ST-GBRT,ARIMA,DSTO-BPNN和DSTO-SVM相比,结果表明,当交通状况迅速变化时,DSTogbrt即使在高峰时段也可以提供及时和自适应预测。此外,与DSO-GBRT和DTO-GBRT相比,结果表明,所提出的DSTO-GBRT方法更准确。 (c)2020 Elsevier B.v.保留所有权利。

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