基于DLP-WNN的高速铁路日客运量中期预测

Tangjian Wei, Xingqi Yang, Guangming Xu, Feng Shi
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引用次数: 0

摘要

本文旨在建立高速铁路(HSR)系统日客运量中期预测模型,预测连续多天(如120天)的日始发客运量。设计/方法/方法通过分析高铁系统日客运量历史数据的特点,设计确定数值范围的日期和节假日标签。根据高铁日客运量的自回归特征,建立了适用于高铁中期(约120 d)日客运量预测的双层平行小波神经网络(DLP-WNN)模型。DLP-WNN模型通过对两个子网的日输出值加权求和得到日预测结果。子网1反映近一段时间日客运量的总体趋势,子网2反映日客运量的每日波动情况,以保证中期预测的准确性。结果通过实例应用,将DLP-WNN模型用于4个不同距离的典型O-D对120天的日客运量中期预测,平均绝对百分比误差为7% ~ 12%,明显低于BP神经网络、极限学习机(ELM)、ELMAN神经网络、GRNN(广义回归神经网络)和VMD-GA-BP的预测结果。验证了DLP-WNN模型适用于高铁日客运量的中期预测。本文利用日期和节假日标签,结合小波神经网络,提出了高铁中期日客运量(120天左右)的双层并行结构预测模型。预测结果是高铁运营管理中支持线路规划、调度等决策的重要输入数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Medium-term forecast of daily passenger volume of high speed railway based on DLP-WNN
PurposeThis paper aims to propose a medium-term forecast model for the daily passenger volume of High Speed Railway (HSR) systems to predict the daily the Origin-Destination (OD) daily volume for multiple consecutive days (e.g. 120 days).Design/methodology/approachBy analyzing the characteristics of the historical data on daily passenger volume of HSR systems, the date and holiday labels were designed with determined value ranges. In accordance to the autoregressive characteristics of the daily passenger volume of HSR, the Double Layer Parallel Wavelet Neural Network (DLP-WNN) model suitable for the medium-term (about 120 d) forecast of the daily passenger volume of HSR was established. The DLP-WNN model obtains the daily forecast result by weighed summation of the daily output values of the two subnets. Subnet 1 reflects the overall trend of daily passenger volumes in the recent period, and subnet 2 the daily fluctuation of the daily passenger volume to ensure the accuracy of medium-term forecast.FindingsAccording to the example application, in which the DLP-WNN model was used for the medium-term forecast of the daily passenger volumes for 120 days for typical O-D pairs at 4 different distances, the average absolute percentage error is 7%-12%, obviously lower than the results measured by the Back Propagation (BP) neural network, the ELM (extreme learning machine), the ELMAN neural network, the GRNN (generalized regression neural network) and the VMD-GA-BP. The DLP-WNN model was verified to be suitable for the medium-term forecast of the daily passenger volume of HSR.Originality/valueThis study proposed a Double Layer Parallel structure forecast model for medium-term daily passenger volume (about 120 days) of HSR systems by using the date and holiday labels and Wavelet Neural Network. The predict results are important input data for supporting the line planning, scheduling and other decisions in operation and management in HSR systems.
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