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Nonlinear vector auto-regression neural network for forecasting air passenger flow

  • Shaolong Sun
  • , Hongxu Lu
  • , Kwok-Leung Tsui
  • , Shouyang Wang*
  • *Corresponding author for this work

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

Abstract

Forecasting air passenger flows is receiving increasing attention, especially due to its intrinsic difficulties and wide applications. Total passengers are used as a proxy for air transport demand. However, the time series of air passenger flows usually has complicated behavior with high volatility and irregularity. This paper proposes a MIV-based nonlinear vector auto-regression neural network (NVARNN) approach to forecast air passenger flows. In the proposed MIV-NVARNN learning approach, (1) a method of mean impact value (MIV) based on neural network is used for identifying and extracting input variables; (2) NVARNN is firstly proposed to deal with the irregularity and volatility of the time series of air passenger flows. To illustrate and verify the effectiveness of the proposed approach, we tested its directional and level forecasting accuracy using the time series of Beijing International Airport's passenger flows. The results of out-of-sample forecasting performance show that the proposed MIV-NVARNN approach consistently outperforms single models and other hybrid approaches in terms of level forecasting accuracy, directional forecasting accuracy and robustness analysis.
Original languageEnglish
Pages (from-to)54-62
JournalJournal of Air Transport Management
Volume78
DOIs
Publication statusPublished - Jul 2019

Research Keywords

  • Air passenger flow forecasting
  • Competition over resources algorithm
  • Mean impact value
  • Multilayer perceptron neural network
  • Nonlinear vector auto-regression

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