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Short-term Traffic Flow Forecasting based on the Improved Non-parametric Regression

机译:基于改进的非参数回归的短期交通流量预测

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In ITS field, short-term traffic flow forecasting is one of the key technologies for traffic control and guidance. One kind of short-term traffic flow prediction method based on the improved non-parametric regression model is proposed in this paper. In this method of distance metric criteria, the Dynamic time warping distance is used instead of the traditional Euclidean distance as the prediction method. Using the non-linear alignment of each point between two sequences to calculate the similar distance, it can overcome the matching problem caused by the expansion and contraction of time series in timeline, and get a better forecast result. The performed simulation based on the traffic data of Xiamen Lotus junction cross-section shows the lower prediction errors that indicates the feasibility of this method.
机译:在ITS领域,短期交通流量预测是交通控制和指导的关键技术之一。提出了一种基于改进的非参数回归模型的短期交通流量预测方法。在这种距离度量标准的方法中,使用动态时间规整距离代替了传统的欧几里得距离作为预测方法。利用两个序列之间每个点的非线性比对来计算相似的距离,可以克服时间轴上时间序列的伸缩引起的匹配问题,并得到较好的预测结果。根据厦门莲花路口断面交通数据进行的仿真表明,较低的预测误差表明了该方法的可行性。

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