Hybrid models toward traffic detector data treatment and data fusion

Yuh-Horng Wen, Tsu-Tian Lee, Hsun-Jung Cho
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引用次数: 17

Abstract

This paper develops a data processing with hybrid models toward data treatment and data fusion for traffic detector data on freeways. hybrid grey-theory-based pseudo-nearest neighbor method and grey time-series model are developed to recover spatial and temporal data failures. Both spatial and temporal patterns of traffic data are also considered in travel time data fusion. Two travel time data fusion models are presented using a speed-based link travel time extrapolation model for analytical travel time estimation and a recurrent neural network with grey-models for real-time travel time prediction. Field data from the Taiwan national freeway no. 1 were used as a case study for testing the proposed models. Study results shown that the data treatment models for faulty data recovery were accurate. The data fusion models were capable of accurately predicting travel times. The results indicated that the proposed hybrid data processing approaches can ensure the accuracy of travel time estimation with incomplete data sets.
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面向交通检测器数据处理和数据融合的混合模型
针对高速公路交通检测器数据的数据处理和数据融合,提出了一种混合模型的数据处理方法。提出了基于混合灰色理论的伪最近邻法和灰色时间序列模型来恢复时空数据故障。出行时间数据融合还考虑了交通数据的时空格局。提出了两种行程时间数据融合模型,一种是基于速度的路段行程时间外推模型,用于解析式行程时间估计;另一种是基于灰色模型的递归神经网络,用于实时行程时间预测。现场数据来自台湾国家高速公路。1被用作测试所提出模型的案例研究。研究结果表明,故障数据恢复的数据处理模型是准确的。数据融合模型能够准确预测飞行时间。结果表明,所提出的混合数据处理方法能够保证不完全数据集下的行程时间估计的准确性。
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