OAK

Deep Learning Provides Substantial Improvements to County-Level Fire Weather Forecasting Over the Western United States

Metadata Downloads
Author(s)
Son, RackhunMa, Po-LunWang, HailongRasch, Philp J.Wang, Shih-Yu (Simon)Kim, HyungjunJeong, Jee-HoonLim, Kyo-Sun SunnyYoon, Jin-Ho
Type
Article
Citation
JOURNAL OF ADVANCES IN MODELING EARTH SYSTEMS, v.14, no.10
Issued Date
2022-10
Abstract
The recent wildfires in the western United States during 2018 and 2020 caused record-breaking fire damage and casualties. Despite remarkable advances in fire modeling and weather forecasting, it remains challenging to anticipate catastrophic wildfire events and associated damage. One key missing component is a fire weather prediction system with sufficiently long lead time capable of providing useful regional details. Here, we develop a hybrid prediction model of wildfire danger called CFS with super resolution (CFS-SR) as a proof of concept to fill that void. The CFS-SR model is constructed by integrating the Climate Forecast System version 2 with a deep learning (DL) technique from Single Image Super Resolution, a method widely used in enhancing image resolution. We show that for the 2018-2019 fire season, the CFS-SR model significantly improves accuracy in forecasting fire weather at lead times of up to 7 days with an enhanced spatial resolution up to 4 km. This level of high resolution provides county-level fire weather forecast, making it more practical for allocating resources to mitigate wildfire danger. Our study demonstrates that a proper combination of ensemble climate predictions with DL techniques can boost predictability at finer spatial scales, increasing the utility of fire weather forecasts for practical applications.
Publisher
AMER GEOPHYSICAL UNION
ISSN
1942-2466
DOI
10.1029/2022MS002995
URI
https://scholar.gist.ac.kr/handle/local/10576
공개 및 라이선스
  • 공개 구분공개
파일 목록
  • 관련 파일이 존재하지 않습니다.

Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.