Applied Sciences (Jul 2020)

Event Detection and Spatio-temporal Analysis of Low-Altitude Unstable Approach

  • Huabo Sun,
  • Jiayi Xie,
  • Yang Jiao,
  • Rongshun Huang,
  • Binbin Lu

DOI
https://doi.org/10.3390/app10144934
Journal volume & issue
Vol. 10, no. 14
p. 4934

Abstract

Read online

Low-altitude unstable approach (UA) is one of the crucial risks that threaten flight safety. In this study, we proposed a technical program for detecting low-altitude UA events. The detection logic was to optimize the step-wise regression model with iterative surveys with more than 20 experienced pilots. Accordingly, the frequencies of UA events occurring around each airport in January 2018 were calculated for all the airports within mainland China. Finally, the spatial distribution characteristics of UA events were analyzed via exploratory spatial data analysis. In addition, Pearson’s correlation coefficient and the geographically weighted correlation coefficient were used to explore the correlations between UA frequency and the altitude elevation, wind level, and bad weather. The experimental results revealed that the proposed method can accurately detect the occurrence of low-altitude UA and quantitatively characterize risks. It was found that UA exhibits obvious differences in spatial distribution. Moreover, significantly strong correlations were found between UA and altitude elevation, wind level, and bad weather, and correlation differences were also reflected in different regions in China.

Keywords