Machine Learning and VIIRS Satellite Retrievals for Skillful Fuel Moisture Content Monitoring in Wildfire Management

Author:

Schreck John S.1ORCID,Petzke William2,Jiménez Pedro A.2,Brummet Thomas2ORCID,Knievel Jason C.2ORCID,James Eric34ORCID,Kosović Branko2ORCID,Gagne David John1ORCID

Affiliation:

1. Computational and Information Systems Laboratory, National Center for Atmospheric Research (NCAR), Boulder, CO 80307, USA

2. Research Applications Laboratory, National Center for Atmospheric Research (NCAR), Boulder, CO 80307, USA

3. Cooperative Institute for Research in Environmental Sciences (CIRES), University of Colorado, Boulder, CO 80309, USA

4. Global Systems Laboratory, National Oceanic and Atmospheric Administration (NOAA), Boulder, CO 80305, USA

Abstract

Monitoring the fuel moisture content (FMC) of 10 h dead vegetation is crucial for managing and mitigating the impact of wildland fires. The combination of in situ FMC observations, numerical weather prediction (NWP) models, and satellite retrievals has facilitated the development of machine learning (ML) models to estimate 10 h dead FMC retrievals over the contiguous US (CONUS). In this study, ML models were trained using variables from the National Water Model, the High-Resolution Rapid Refresh (HRRR) NWP model, and static surface properties, along with surface reflectances and land surface temperature (LST) retrievals from the Visible Infrared Imaging Radiometer Suite (VIIRS) instrument on the Suomi-NPP satellite system. Extensive hyper-parameter optimization resulted in skillful FMC models compared to a daily climatography RMSE (+44%) and an hourly climatography RMSE (+24%). Notably, VIIRS retrievals played a significant role as predictors for estimating 10 h dead FMC, demonstrating their importance as a group due to their high band correlation. Conversely, individual predictors within the HRRR group exhibited relatively high importance according to explainability techniques. Removing both HRRR and VIIRS retrievals as model inputs led to a significant decline in performance, particularly with worse RMSE values when excluding VIIRS retrievals. The importance of the VIIRS predictor group reinforces the dynamic relationship between 10 h dead fuel, the atmosphere, and soil moisture. These findings underscore the significance of selecting appropriate data sources when utilizing ML models for FMC prediction. VIIRS retrievals, in combination with selected HRRR variables, emerge as critical components in achieving skillful FMC estimates.

Funder

JPSS

Publisher

MDPI AG

Subject

General Earth and Planetary Sciences

Reference45 articles.

1. Congressional Budget Office (2023, June 30). CBO Publication 57970: Wildfires, Available online: https://www.cbo.gov/publication/57970.

2. County, B. (Boulder County News Releases, 2022). Boulder County releases updated list of structures damaged and destroyed in the Marshall Fire, Boulder County News Releases.

3. Flynn, C. (KDVR Fox 31, 2022). Marshall Fire devastation cost: More than $2 billion, KDVR Fox 31.

4. Zialcita, P. (CPR News, 2022). Identity of final person missing from Marshall fire confirmed as investigators uncover bone fragments, CPR News.

5. WRF-Fire: Coupled weather–wildland fire modeling with the weather research and forecasting model;Coen;J. Appl. Meteorol. Climatol.,2013

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