Airport Express Passenger Flow Prediction Based on “Time-Feature” Cooperative Attention

Authors

  • Wenbo Du
  • Wanjun Shi
  • Shengshi Liao
  • Xi Zhu

DOI:

https://doi.org/10.59782/aai.v1i2.286

Keywords:

Airport Express, time series, passenger flow prediction, "time-feature" collaborative attention, long short-term memory network

Abstract

Accurate prediction of airport express passenger flow is the basis for realizing intelligent, refined and efficient management and control of the airport rail transit system, and is of great significance to improving airport service levels and operational efficiency. Due to the numerous influencing factors that overlap with each other, and the complex mechanism of factors affecting passenger flow timing, accurate prediction of airport express passenger flow is extremely challenging. This paper proposes an airport express rail passenger flow prediction model based on the "time-feature" collaborative attention mechanism, which achieves accurate capture of the impact of multi-dimensional factors on airport express rail passenger flow in different time series. Experiments were conducted based on actual passenger flow data of the Beijing Capital International Airport Express Rail Link, and the results showed the effectiveness of the proposed method.

How to Cite

Du, W., Shi, W., Liao, S., & Zhu, X. (2024). Airport Express Passenger Flow Prediction Based on “Time-Feature” Cooperative Attention. Journal of Applied Artificial Intelligence, 1(2), 1–11. https://doi.org/10.59782/aai.v1i2.286

Issue

Section

Articles