Predictive Understanding of Links Between Vegetation and Soil Burn Severities Using Physics‐Informed Machine Learning

Author:

Seydi Seyd Teymoor1,Abatzoglou John T.2,AghaKouchak Amir34ORCID,Pourmohamad Yavar1,Mishra Ashok5ORCID,Sadegh Mojtaba16ORCID

Affiliation:

1. Department of Civil Engineering Boise State University Boise ID USA

2. Management of Complex Systems Department University of California Merced CA USA

3. Department of Civil and Environmental Engineering University of California Irvine CA USA

4. Department of Earth System Science University of California Irvine CA USA

5. Zachry Department of Civil and Environmental Engineering Texas A&M University College Station TX USA

6. United Nations University Institute for Water Environment and Health Hamilton ON Canada

Abstract

AbstractBurn severity is fundamental to post‐fire impact assessment and emergency response. Vegetation Burn Severity (VBS) can be derived from satellite observations. However, Soil Burn Severity (SBS) assessment—critical for mitigating hydrologic and geologic hazards—requires costly and laborious field recalibration of VBS maps. Here, we develop a physics‐informed Machine Learning model capable of accurately estimating SBS while revealing the intricate relationships between soil and vegetation burn severities. Our SBS classification model uses VBS, as well as climatological, meteorological, ecological, geological, and topographical wildfire covariates. This model demonstrated an overall accuracy of 89% for out‐of‐sample test data. The model exhibited scalability with additional data, and was able to extract universal functional relationships between vegetation and soil burn severities across the western US. VBS had the largest control on SBS, followed by weather (e.g., wind, fire danger, temperature), climate (e.g., annual precipitation), topography (e.g., elevation), and soil characteristics (e.g., soil organic carbon content). The relative control of processes on SBS changes across regions. Our model revealed nuanced relationships between VBS and SBS; for example, a similar VBS with lower wind speeds—that is, higher fire residence time—translates to a higher SBS. This transferrable model develops reliable and timely SBS maps using satellite and publicly accessible data, providing science‐based insights for managers and diverse stakeholders.

Funder

Joint Fire Science Program

Publisher

American Geophysical Union (AGU)

Reference60 articles.

1. 3D Elevation Program 10‐Meter Resolution Digital Elevation Model. (2020).3D elevation program 10‐meter resolution digital elevation model. [Raster]. Retrieved fromhttps://developers.google.com/earth‐engine/datasets/catalog/USGS_3DEP_10m

2. Development of gridded surface meteorological data for ecological applications and modelling

3. Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI)

4. How do natural hazards cascade to cause disasters?

5. Warming enabled upslope advance in western US forest fires

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