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Prediction of Urban Rail Traffic Flow Based on Multiply Wavelet-ARIMA Model

机译:基于乘法小波 - Arima模型的城市轨道交通流量预测

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Passenger flow forecast is one of basic reference for the design and operational management of urban rail transit and has become an important procedure in the construction of urban rail transit. In the paper, the ARIMA-Wavelet prediction model was established by analyzing the temporal characteristics of the daily passenger flow change and the principle of the ARIMA model and the Wavelet model, and it was used to forecast the daily traffic flow of Beijing urban rail transit linel. By using the methods of threshold processing, denoising and reconstruction of the original data, it could be better to show the features of general law, then to model and predicate the results by using ARTMA time series model. The test and analysis results of daily prediction of Beijing subway linel traffic flow, which from November 2 to November 8 in 2015, indicted that Wavelet-ARIMA model was more accurate than ARIMA model. The Wavelet-ARIMA model received better prediction results.
机译:客流预测是城市轨道交通设计和运营管理的基本参考之一,已成为城市轨道交通建设中的重要程序。在本文中,通过分析日常客流变化的时间特征和Arima模型和小波模型的原理建立了Arima-小波预测模型,并用于预测北京城市轨道交通的日常交通流量衬垫。通过使用阈值处理的方法,去噪和重建原始数据,可以更好地展示一般法的特征,然后通过使用ARTMA时间序列模型来模拟和谓词。 2015年11月2日至11月8日从11月2日到11月8日开始的日常预测的试验和分析结果,阐述了小波 - Arima模型比Arima模型更准确。小波 - ARIMA模型得到了更好的预测结果。

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