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Reinforcement Learning for Wildfire Mitigation in Simulated Disaster Environments

Published 27 Nov 2023 in cs.LG, cs.AI, cs.MA, and cs.SE | (2311.15925v1)

Abstract: Climate change has resulted in a year over year increase in adverse weather and weather conditions which contribute to increasingly severe fire seasons. Without effective mitigation, these fires pose a threat to life, property, ecology, cultural heritage, and critical infrastructure. To better prepare for and react to the increasing threat of wildfires, more accurate fire modelers and mitigation responses are necessary. In this paper, we introduce SimFire, a versatile wildland fire projection simulator designed to generate realistic wildfire scenarios, and SimHarness, a modular agent-based machine learning wrapper capable of automatically generating land management strategies within SimFire to reduce the overall damage to the area. Together, this publicly available system allows researchers and practitioners the ability to emulate and assess the effectiveness of firefighter interventions and formulate strategic plans that prioritize value preservation and resource allocation optimization. The repositories are available for download at https://github.com/mitrefireline.

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References (26)
  1. โ€œFourth national climate assessmentโ€ In Volume II: Impacts, Risks, and Adaptation in the United States, Report-in-Brief, 2019
  2. Omar Mouallem โ€œThe Impossible Fight to Stop Canadaโ€™s Wildfiresโ€ URL: https://www.wired.com/story/canada-wildfires-future/
  3. Katie Hoover and Laura A Hanson โ€œWildfire Statisticsโ€, 2023 URL: https://sgp.fas.org/crs/misc/IF10244.pdf
  4. National Interagency Fire Center โ€œSuppression Costsโ€, 2023 URL: https://www.nifc.gov/fire-information/statistics/suppression-costs
  5. Andrew Burchill โ€œAre wildfires bad?โ€ In Ask a Biologist Arizona State University, 2021 URL: https://askabiologist.asu.edu/explore/wildfires
  6. C.R. Rothermel โ€œA mathematical model for predicting fire spread in wildland fuelsโ€ In U.S. Department of Agriculture, Intermountain Forest and Range Experiment Station, 1972, pp. Res. Pap. INTโ€“115
  7. C. Lautenberger โ€œWildland fire modeling with an Eulerian level set method and automated calibrationโ€ In Fire Safety Journal, 2013, pp. Volume 62\bibrangessepPart C\bibrangessep289โ€“298 URL: https://doi.org/10.1016/j.firesaf.2013.08.014
  8. โ€œQUIC-fire: A fast-running simulation tool for prescribed fire planningโ€, 2020 URL: https://www.fs.usda.gov/research/treesearch/59686
  9. Ilkay AltinaลŸ โ€œBurnPro3Dโ€ URL: http://wifire.ucsd.edu/burnpro3d
  10. David Saah โ€œPyrecastโ€ URL: https://pyrecast.org
  11. Travis Hammond โ€œWildfire-Control-Pythonโ€ In GitHub URL: https://github.com/dashdeckers/Wildfire-Control-Python
  12. Emanuel Becerra Soto โ€œgym-cellular-automataโ€ In GitHub repository GitHub, https://github.com/elbecerrasoto/gym-cellular-automata, 2021
  13. โ€œLarge-Scale Wildfire Mitigation Through Deep Reinforcement Learningโ€ In Frontiers in Forests and Global Change 5, 2022
  14. Richard S. Sutton and Andrew G. Barto โ€œReinforcement Learning: An Introductionโ€ The MIT Press, 2018 URL: http://incompleteideas.net/book/the-book-2nd.html
  15. Richard Bellman โ€œA Markovian Decision Processโ€ In Journal of Mathematics and Mechanics 6.5 Indiana University Mathematics Department, 1957, pp. 679โ€“684 URL: http://www.jstor.org/stable/24900506
  16. LANDFIRE โ€œ13 Anderson Fire Behavior Fuel Models, Elevation, LANDFIRE 2.0.0,โ€ In U.S. Department of the Interior, Geological Survey, and U.S. Department of Agriculture, 2021 DOI: http://www.landfire/viewer
  17. Patricia L. Andrews โ€œThe Rothermel surface fire spread model and associated developments: A comprehensive explanationโ€ In Gen. Tech. Rep. RMRS-GTR-371. Fort Collins, CO: U.S. Department of Agriculture, Forest Service, Rocky Mountain Research Station, 2018, pp. p. 121
  18. Jos Stam โ€œReal-Time Fluid Dynamics for Gamesโ€ In Proceedings of the game developer conference, 2003, pp. Vol. 18\bibrangessepp. 25
  19. Robert E.Burgan Joe H.Scott โ€œStandard Fire Behavior Fuel Models: A Comprehensive Set for Use with Rothermelโ€™s Surface Fire Spread Modelโ€ https://www.nwcg.gov/sites/default/files/training/docs/s-290-usfs-standard-fire-behavior-fuel-models.pdf
  20. Pete Shinners โ€œPygameโ€ URL: https://www.pygame.org
  21. โ€œRLlib: Abstractions for Distributed Reinforcement Learningโ€, 2018 arXiv: https://docs.ray.io/en/latest/rllib/index.html
  22. Omry Yadan โ€œHydra - A framework for elegantly configuring complex applicationsโ€, Github, 2019 URL: https://github.com/facebookresearch/hydra
  23. โ€œPlaying Atari with Deep Reinforcement Learningโ€, 2013 arXiv:1312.5602 [cs.LG]
  24. National Wildland Fire Coordinating Group โ€œFire Line Production Tablesโ€ https://www.fs.usda.gov/t-d/nwcg/files/NWCG_production_tables_2021.pdf
  25. โ€œBurnMD: A Fire Projection and Mitigation Modeling Datasetโ€ In International Conference of Learning Representations, 2023
  26. โ€œGymnasiumโ€ Zenodo, 2023 DOI: 10.5281/zenodo.8127026
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