Abstract
Abstract. Annual burned areas in the United States have increased 2-fold during the past decades. With more large fires resulting in more emissions of fine particulate matter, an accurate prediction of fire emissions is critical for quantifying the impacts of fires on air quality, human health, and climate. This study aims to construct a machine learning (ML) model with game-theory interpretation to predict monthly fire emissions over the contiguous US (CONUS) and to understand the controlling factors of fire emissions. The optimized ML model is used to diagnose the process-based models in the Fire Modeling Intercomparison Project (FireMIP) to inform future development. Results show promising performance for the ML model, Community Land Model (CLM), and Joint UK Land Environment Simulator-Interactive Fire And Emission Algorithm For Natural Environments (JULES-INFERNO) in reproducing the spatial distributions, seasonality, and interannual variability of fire emissions over the CONUS. Regional analysis shows that only the ML model and CLM simulate the realistic interannual variability of fire emissions for most of the subregions (r>0.95 for ML and r=0.14∼0.70 for CLM), except for Mediterranean California, where all the models perform poorly (r=0.74 for ML and r<0.30 for the FireMIP models). Regarding seasonality, most models capture the peak emission in July over the western US. However, all models except for the ML model fail to reproduce the bimodal peaks in July and October over Mediterranean California, which may be explained by the smaller wind speeds of the atmospheric forcing data during Santa Ana wind events and limitations in model parameterizations for capturing the effects of Santa Ana winds on fire activity. Furthermore, most models struggle to capture the spring peak in emissions in the southeastern US, probably due to underrepresentation of human effects and the influences of winter dryness on fires in the models. As for extreme events, both the ML model and CLM successfully reproduce the frequency map of extreme emission occurrence but overestimate the number of months with extremely large fire emissions. Comparing the fire PM2.5 emissions from the ML model with process-based fire models highlights their strengths and uncertainties for regional analysis and prediction and provides useful insights into future directions for model improvements.
Highlights
Large fires have increased across the United States over the past 2 decades, especially in the western US
The results indicate the machine learning (ML) model can reproduce the interannual variability of fire emissions at 0.25◦ resolution over the contiguous US (CONUS), with a mean correlation of 0.58 and more than 70 % of the grids having correlations larger than 0.4
The ML model reproduces the interannual variability of fire emissions for the selected regions (r = 0.84–0.98)
Summary
Large fires have increased across the United States over the past 2 decades, especially in the western US. While the total area burned in 2020 increased by 51 % compared to the 10-year average for 2010–2019, the total number of fires in 2020 is smaller than the 10-year average. Fine particulate matter (PM2.5, particles with an aerodynamic diameter smaller than and equal to 2.5 μm) emitted from fires have negative impacts on human health and affect climate and ecosystems (Johnston et al, 2012; Ward et al, 2012; Rap et al, 2013; Kaulfus et al, 2017; Liu et al, 2018; Wang et al, 2018; Stowell et al, 2019). An accurate prediction of fire emissions is imperative for investigating the impacts of historical and future fires on air quality, human health, and climate
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