ITM Web of Conferences (Jan 2017)

Short-term Forecast Model of Vehicles Volume Based on ARIMA Seasonal Model and Holt-Winters

  • Wang Zhi-Hui,
  • Lu Chen-Yang,
  • Pu Bin,
  • Li Gui-Wen,
  • Guo Zhen-Jiang

DOI
https://doi.org/10.1051/itmconf/20171204028
Journal volume & issue
Vol. 12
p. 04028

Abstract

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In order to alleviate the urban traffic congestion and ensure traffic safety, we need to do a good job in urban road traffic safety planning, make the real-time analysis and forecast of urban traffic flow to detect changes of current traffic flow in time, make scientific planning of roads and improve the road service ability and the transport efficiency of freight vehicles. The data of short-term vehicles volume is characterized by uncertainty and timing correlation series. Given this, the ARIMA seasonal model and the Holt-Winters model are used to establish a forecasting model for the short-term vehicles volume of the city. Finally, we compare the model with predictions.