Geophysical Research Letters (Mar 2024)

Prediction of Atmospheric Profiles With Machine Learning Using the Signature Method

  • M. Fujita,
  • N. Sugiura,
  • S. Kouketsu

DOI
https://doi.org/10.1029/2023GL106403
Journal volume & issue
Vol. 51, no. 6
pp. n/a – n/a

Abstract

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Abstract An array of atmospheric profile observations consists of three‐dimensional vectors representing pressure, temperature, and humidity, with each profile forming a continuous curve in this three‐dimensional space. In this paper, the Signature method, which can quantify a profile's curve, was adopted for the atmospheric profiles, and the accuracy of profile representations was investigated. The description of profiles by the signature was confirmed with adequate accuracy. The machine‐learning‐based model, developed using the signature, exhibited a high level of annual accuracy with minimal absolute mean differences in temperature and water vapor mixing ratio (<2.0 K or g kg−1). Notably, the model successfully captured the vertical structure and atmospheric instability, encompassing drastic variations in water vapor and temperature, even during intense rainfall. These results indicate the Signature method can comprehensively describe the vertical profile with information on how ordered values are correlated. This concept would potentially improve the representation of the atmospheric vertical structure.

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