Learning from wildfires: A scalable framework to evaluate treatment effects on burn severity

Published Article

Washington

Publication date: December 2, 2024

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This study presents a repeatable remote‑sensing framework to assess fuel treatment effectiveness in western U.S. wildfires. Applied to two 2021 fires, results show prescribed burning most effectively reduced burn severity, while thinning alone was less effective, supporting scalable, data‑driven fire management under climate change.

Subject Tags

  • Data Science and Artificial Intelligence
  • Fire management
  • Forest

Abstract

Interruption of frequent burning in dry forests across western North America and the continued impacts of anthropogenic climate change have resulted in increases in fire size and severity compared to historical fire regimes. Recent legislation, funding, and planning have emphasized increased implementation of mechanical thinning and prescribed burning treatments to decrease the risk of undesirable ecological and social outcomes due to fire. As wildfires and treatments continue to interact, managers require consistent approaches to evaluate treatment effectiveness at moderating burn severity. In this study, we present a repeatable, remote sensing–based, analytical framework for conducting fire-scale assessments of treatment effectiveness that informs local management while also supporting cross-fire comparisons. We demonstrate this framework on the 2021 Bootleg Fire in Oregon and the 2021 Schneider Springs Fire in Washington. Our framework used (1) machine learning to identify key bioclimatic, topographic, and fire weather drivers of burn severity in each fire, (2) standardized workflows to statistically sample untreated control units, and (3) spatial regression modeling to evaluate the effects of treatment type and time since treatment on burn severity. The application of our framework showed that, in both fires, recent prescribed burning treatments were the most effective at reducing burn severity relative to untreated controls. In contrast, thinning-only treatments only produced low/moderate-severity effects under the more moderate fire weather conditions in the Schneider Springs Fire. Our framework offers a robust approach for evaluating treatment effects on burn severity at the scale of individual fires, which can be scaled up to assess treatment effectiveness across multiple fires. As climate change brings increased uncertainty to dry forest ecosystems of western North America, our framework can support more strategic management actions to reduce wildfire risk and foster resilience.

Citation

Chamberlain, C.P., Meigs, G.W., Churchill, D.J., Kane, J.T., Sanna, A., Begley, J.S., Prichard, S.J., Kennedy, M.C., Bienz, C., Haugo, R.D. and Smith, A.C., 2024. Learning from wildfires: A scalable framework to evaluate treatment effects on burn severity. Ecosphere15(12), p.e70073.  https://esajournals.onlinelibrary.wiley.com/doi/10.1002/ecs2.70073

TNC Authors

  • Ryan Haugo
    Director of Conservation and Science in Oregon
    The Nature Conservancy
    Email: rhaugo@tnc.org