Department of Earth and Ocean Sciences, University of North Carolina Wilmington, 601 South College Rd., Wilmington, North Carolina, 28403, USA.
Rocky Mountain Research Station, USDA Forest Service, 240 W. Prospect Road, Fort Collins, Colorado, 80526, USA.
J Environ Manage. 2024 Nov;370:122705. doi: 10.1016/j.jenvman.2024.122705. Epub 2024 Oct 2.
Projected increases in wildfire frequency, size, and severity may further stress already scarce firefighting resources in the western United States that are in high demand. Machine learning is a promising field with the ability to model firefighting resource usage without compromising dataset size or complexity. In this study, the Categorical Boosting (CatBoost) model was used with historical (2012-2020) wildfire data to train three models that calculate predicted daily counts of 1) total assigned personnel (total personnel), 2) assigned personnel that are at the fire (ground personnel), and 3) assigned personnel that either work with aircraft or in management (air/overhead personnel) based on daily wildfire characteristics. The main drivers behind personnel assignment under current management practices included structures threatened, acres burned, point of fire origin, and fire priority. While contextual variables such as preparedness level and the presence of other large fires were among the least important, the importance of fire priority reveals that factors beyond the features of the fire itself are influential in personnel assignment. CatBoost model predictions provide an historical context to firefighting resource assignment and could also be used to inform decision-makers and managers about future issues facing firefighting resources in the western United States given projected changes in climate.
野火发生频率、规模和严重程度的预计增加可能会进一步加剧美国西部本已稀缺的消防资源的压力,这些资源的需求很高。机器学习是一个很有前途的领域,它能够在不影响数据集大小或复杂性的情况下对消防资源使用情况进行建模。在这项研究中,使用分类提升(CatBoost)模型对 2012 年至 2020 年的历史野火数据进行训练,建立了三个模型,用于计算每日总分配人员(总人员)、在火灾现场的分配人员(地面人员)和分配人员的预测日计数。这些分配人员可用于飞机或管理工作(空中/高空人员),其依据是每日野火特征。在当前管理实践下,人员分配的主要驱动因素包括受威胁的建筑物、燃烧面积、火灾起源点和火灾优先级。而准备水平等上下文变量和其他大型火灾的存在是最不重要的因素之一,火灾优先级的重要性表明,除了火灾本身的特征之外,其他因素也会对人员分配产生影响。CatBoost 模型预测为消防资源分配提供了历史背景,并且可以根据预测的气候变化对美国西部消防资源面临的未来问题,为决策者和管理者提供信息。