Integrating hydrological parameters in wildfire risk assessment: a machine learning approach for mapping wildfire probability

被引:0
|
作者
Khodaee, Mahsa [1 ]
Easterday, Kelly [1 ]
Klausmeyer, Kirk [1 ]
机构
[1] Calif Program, Nat Conservancy, Sacramento, CA 95661 USA
来源
ENVIRONMENTAL RESEARCH LETTERS | 2024年 / 19卷 / 11期
关键词
wildfire probability; hydrology; actual evapotranspiration; recharge; random forest; ANTHROPOGENIC CLIMATE-CHANGE; MIXED-SEVERITY FIRE; SOUTHERN CALIFORNIA; SIERRA-NEVADA; IMPACTS; PRECIPITATION; MOISTURE; EXTREME; DROUGHT; WINDS;
D O I
10.1088/1748-9326/ad80ad
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The increasing occurrence of catastrophic wildfire across the globe threatens public health, community safety, ecosystem functioning, and biodiversity resilience. Wildfire risk is closely connected to shifting climatic trends and their impacts on fuel availability and flammability. Although previous research has explored the connection between meteorological conditions and wildfire probabilities, there remains a substantial gap in understanding the influence of hydrologic drivers, such as groundwater recharge, on wildfire dynamics. Both short- and long-term variations in these variables are crucial in shaping fuel conditions, and significant changes can create environments more prone to severe wildfires. This study focuses on Santa Barbara County to examine the connection between wildfire probability and various environmental factors, including meteorological and hydrological data from 1994 to 2021, topography, vegetation, and proximity to road. Using a random forest (RF) machine learning model and fine-scale data (270 m resolution) we achieved high predictive accuracy in identifying wildfire probability. Our findings confirm the important roles of short-term meteorological conditions, such as mean precipitation 12 months and relative humidity 1 month before a wildfire event, in predicting wildfire occurrence. In addition, our results emphasize the critical contribution of long-term hydrological components, such as mean deviation from the historical normal in actual evapotranspiration and recharge in the years preceding the fire, in influencing wildfire probability. Partial dependence plots from our RF model revealed that both positive and negative deviations of these hydrological variables can increase the likelihood of wildfire by controlling fuel water availability and productivity. These findings are particularly relevant given the increasing extreme weather patterns in southern California, significantly affecting water availability and fuel conditions. This study provides valuable insights into the complex interactions between wildfire occurrence and hydrometeorological conditions. Additionally, the resulting wildfire probability map, can aid in identifying high-risk areas, contributing to enhanced mitigation planning and prevention strategies.
引用
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页数:13
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