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Paratactic Spatial-temporal Tow Dimension Data Fusion for Traffic Volume Prediction

机译:基于策略的时空拖曳维数据融合用于交通量预测

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It is significant that to get accurate prediction of dynamic traffic flow for intelligent traffic system management and control. A traffic flow prediction model of spatial temporal 2D (2-dimension) data fusing based on SVM (Support Vector Machines) is put forward in this paper. The section flow results predicted by temporal SVM, spatial SVM and spatial-temporal 2D data fusing are all satisfied the precision requirement. However, the prediction precise is significantly improved by spatial-temporal 2Dimension data fusing. Moreover, from the comparison of the results with different samples, it is shown that the more the sample used in the prediction the lower the error will be. Especially, when there are unexpected situations (e.g. traffic jam, traffic accidents), the structural system error of onedimensional data fusion can be avoided to a large extent with the spatial temporal 2Dimension data fusing model proposed by this study.
机译:准确预测动态交通流量对于智能交通系统的管理和控制具有重要意义。提出了一种基于支持向量机的时空二维(二维)数据融合的交通流预测模型。通过时间支持向量机,空间支持向量机和时空二维数据融合预测的断面流量都满足精度要求。但是,通过时空二维数据融合显着提高了预测精度。而且,从与不同样本的结果比较中可以看出,预测中使用的样本越多,误差将越低。尤其是在发生意外情况(例如交通拥堵,交通事故)时,使用本研究提出的时空二维数据融合模型可以在很大程度上避免一维数据融合的结构系统错误。

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