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Icing detection over East Asia from geostationary satellite data using machine learning approaches

Title
Icing detection over East Asia from geostationary satellite data using machine learning approaches
Authors
Sim S.Im J.Park S.Park H.Ahn M.H.Chan P.
Ewha Authors
안명환
SCOPUS Author ID
안명환scopus
Issue Date
2018
Journal Title
Remote Sensing
ISSN
2072-4292JCR Link
Citation
Remote Sensing vol. 10, no. 4
Keywords
COMSGeostationary satellite dataHimawari-8Icing detectionMachine learning
Publisher
MDPI AG
Indexed
SCIE; SCOPUS WOS scopus
Document Type
Article
Abstract
Even though deicing or airframe coating technologies continue to develop, aircraft icing is still one of the critical threats to aviation. While the detection of potential icing clouds has been conducted using geostationary satellite data in the US and Europe, there is not yet a robust model that detects potential icing areas in East Asia. In this study, we proposed machine-learning-based icing detection models using data from two geostationary satellites-the Communication, Ocean, and Meteorological Satellite (COMS) Meteorological Imager (MI) and the Himawari-8 Advanced Himawari Imager (AHI)-over Northeast Asia. Two machine learning techniques-random forest (RF) and multinomial log-linear (MLL) models-were evaluated with quality-controlled pilot reports (PIREPs) as the reference data. The machine-learning-based models were compared to the existing models through five-fold cross-validation. The RF model for COMS MI produced the best performance, resulting in a mean probability of detection (POD) of 81.8%, a mean overall accuracy (OA) of 82.1%, and mean true skill statistics (TSS) of 64.0%. One of the existing models, flight icing threat (FIT), produced relatively poor performance, providing a mean POD of 36.4%, a mean OA of 61.0, and a mean TSS of 9.7%. The Himawari-8 based models also produced performance comparable to the COMS models. However, it should be noted that very limited PIREP reference data were available especially for the Himawari-8 models, which requires further evaluation in the future with more reference data. The spatio-temporal patterns of the icing areas detected using the developed models were also visually examined using time-series satellite data. © 2018 by the authors.
DOI
10.3390/rs10040631
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일반대학원 > 대기과학공학과 > Journal papers
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