Pascolini-Campbell Madeleine, Fisher Joshua B, Cawse-Nicholson Kerry, Lee Christine M, Stavros Natasha
NASA Jet Propulsion Laboratory, California Institute of Technology, Pasadena, CA, USA.
Chapman University, Orange, CA, USA.
Sci Rep. 2025 Jul 1;15(1):21504. doi: 10.1038/s41598-025-06814-z.
Wildfire prediction models that can be applied across diverse regions at fine scales (< 100 m) are critical for wildfire management. Remote sensing offers a path forward by providing heterogeneous and dynamic measurements of fuel load, type, and flammability. Machine learning methods such as random forests provide an empirical framework that are high-accuracy, computationally efficient, interpretable and able to model complex ecological relationships. Here we use high resolution (70 m, every 3-5 days) remote sensing observations of evapotranspiration and evaporative stress index, which represent plant water stress, from Ecosystem Spaceborne Thermal Radiometer on Space Station (ECOSTRESS), as well as topography and weather data, to predict burn severity and occurrence for 8 large wildfires that burned 3715 km from 2021 and 2022 in New Mexico, USA. These fires ranged from low to high burn intensity, and covered a diverse range of ecoregions (deserts, grasslands, forests), plant species, and topographies. We used a single model to predict the burn severity of all wildfires one week before occurrence. The prediction accuracy was greatest when using all predictors (ECOSTRESS, weather, topography) (R = 0.77). We assessed the role of spatial autocorrelation in driving model performance by: (1) increasing the sample spacing of our dataset, (2) introducing new predictors that represent spatial structure in the data, and (3) training our model on half the fires and predicting the other half of the fires. We found that after increasing sample spacing, model accuracy declined. However, we found declines in model accuracy were more impacted by decreased training set size compared to the distance spacing-indicating that the models are likely accurately capturing fine-scale processes. Scalability of random forest models was also found to be more challenging for regression problems but was accurate for classification of burned pixel occurrence (total pixel accuracy of 67%). These results provide promising results for application of random forest models to predict fine-scale fire severity and occurrence with applications for fire management.
能够在精细尺度(<100米)上应用于不同区域的野火预测模型对野火管理至关重要。遥感通过提供燃料负荷、类型和易燃性的异质动态测量提供了一条前进的道路。诸如随机森林等机器学习方法提供了一个高精度、计算高效、可解释且能够对复杂生态关系进行建模的经验框架。在这里,我们使用来自空间站生态系统星载热辐射计(ECOSTRESS)的高分辨率(70米,每3 - 5天一次)的蒸散和蒸发应力指数遥感观测数据,这些数据代表植物水分胁迫,以及地形和天气数据,来预测2021年和2022年在美国新墨西哥州燃烧了3715公里的8次大型野火的燃烧严重程度和发生情况。这些火灾的燃烧强度从低到高不等,覆盖了各种不同的生态区域(沙漠、草原、森林)、植物物种和地形。我们使用单一模型在野火发生前一周预测所有野火的燃烧严重程度。当使用所有预测因子(ECOSTRESS、天气、地形)时预测准确率最高(R = 0.77)。我们通过以下方式评估空间自相关在驱动模型性能中的作用:(1)增加数据集的样本间距,(2)引入代表数据中空间结构的新预测因子,以及(3)在一半的火灾上训练我们的模型并预测另一半火灾。我们发现增加样本间距后,模型准确率下降。然而,我们发现与距离间距相比,模型准确率的下降更多地受到训练集规模减小的影响——这表明模型可能准确地捕捉了精细尺度过程。还发现随机森林模型的可扩展性对于回归问题更具挑战性,但对于燃烧像素发生情况的分类是准确的(总像素准确率为67%)。这些结果为随机森林模型在预测精细尺度火灾严重程度和发生情况以及火灾管理应用方面提供了有前景的结果。