A Framework for Conducting and Communicating Probabilistic Wildland Fire Forecasts

Author:

Coen Janice L.12ORCID,Johnson Gary W.3ORCID,Romsos J. Shane3ORCID,Saah David13ORCID

Affiliation:

1. Department of Environmental Science, University of San Francisco, San Francisco, CA 94117, USA

2. NSF National Center for Atmospheric Research, P.O. Box 3000, Boulder, CO 80307, USA

3. Spatial Informatics Group, 2529 Yolanda Ct., Pleasanton, CA 94566, USA

Abstract

Fire models predict fire behavior and effects. However, there is a need to know how confident users can be in forecasts. This work developed a probabilistic methodology based on ensemble simulations that incorporated uncertainty in weather, fuel loading, and model physics parameters. It provided information on the most likely forecast scenario, confidence levels, and potential outliers. It also introduced novel ways to communicate uncertainty in calculation and graphical representation and applied this to diverse wildfires using ensemble simulations of the CAWFE coupled weather–fire model ranging from 12 to 26 members. The ensembles captured many features but spread was narrower than expected, especially with varying weather and fuel inputs, suggesting errors may not be easily mitigated by improving input data. Varying physics parameters created a wider spread, including identifying an outlier, underscoring modeling knowledge gaps. Uncertainty was communicated using burn probability, spread rate, and heat flux, a fire intensity metric related to burn severity. Despite limited ensemble spread, maps of mean and standard deviation exposed event times and locations where fire behavior was more uncertain, requiring more management or observations. Interpretability was enhanced by replacing traditional hot–cold color palettes with ones that accommodate the vision-impaired and adhere to web accessibility standards.

Funder

USDA NIFA

National Science Foundation

NIST

California Energy Commission

NASA

U.S. National Science Foundation

Publisher

MDPI AG

Reference74 articles.

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5. National Wildfire Coordinating Group (2024, April 24). NWCG Standards for Prescribed Fire Planning and Implementation. May 2022. PMS 484. 47p. Available online: https://fs-prod-nwcg.s3.us-gov-west-1.amazonaws.com/s3fs-public/publication/pms484.pdf?VersionId=oC9h8HojgmacXiXrC9WFYZy3KNZwh84X.

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