Sánchez Paula, González Irene, Carrillo Carlos, Cortés Ana, Suppi Remo, Margalef Tomàs
Computer Architecture and Operating Systems Department, Universitat Autònoma de Barcelona, 08193, Cerdanyola del Vallès, Spain.
Sci Rep. 2025 Jul 1;15(1):22254. doi: 10.1038/s41598-025-06402-1.
Extreme wildfire events (EWE), although a rare natural hazard, account for a substantial portion of global wildfire damage, requiring proactive anticipation and mitigation due to their increasing occurrence. Wildfire spread simulators are crucial for reducing damage, but they rely heavily on accurate fuel maps, which are often outdated, have low resolution, or are unavailable in many regions. While land cover maps are more up-to-date, high-resolution globally, and widely available, there is no universally accepted method to convert land cover maps into fuel maps. In this work, an automatic methodology for generating high-resolution fuel maps from land cover maps called zone-adaptive fuel mapping (ZAFM) is proposed. ZAFM is a consistent local approach that makes use of public resources to create a fuel map. The proposed methodology has been tested using, as a study case, an EWE that occurred in the north-east of Spain during the summer of 2022. To assess the accuracy of the proposed fuel mapping method, we compared the fire spread forecast using the ZAFM fuel map with fire evolutions based on different fuel maps derived from the land cover map of the study area. The accuracy assessment, based on the F2-score metric, reveals that ZAFM achieves the highest F2-score of approximately 0.90, while the F2-scores for the other fuel maps range from 0.78 to 0.89, with no individual simulation reaching 0.90. ZAFM was also evaluated against other publicly available fuel maps covering Catalonia, and once again achieved higher F2-scores in the case study simulations. These results highlight the superior predictive performance of ZAFM and underscore the importance of using up-to-date, high-resolution data to improve wildfire spread forecasts. Furthermore, since ZAFM relies on open-access data maps, it can be applied worldwide with any available high-resolution land cover map.
极端野火事件(EWE)虽是一种罕见的自然灾害,但在全球野火造成的损失中占相当大的比例,鉴于其发生频率不断增加,需要积极进行预测和缓解。野火蔓延模拟器对于减少损失至关重要,但它们严重依赖准确的燃料地图,而这些地图往往过时、分辨率低或在许多地区无法获取。虽然土地覆盖地图更新程度更高、全球分辨率高且广泛可用,但尚无普遍接受的方法将土地覆盖地图转换为燃料地图。在这项工作中,提出了一种从土地覆盖地图生成高分辨率燃料地图的自动方法,称为区域自适应燃料映射(ZAFM)。ZAFM是一种一致的局部方法,利用公共资源创建燃料地图。以2022年夏季发生在西班牙东北部的一次极端野火事件为例,对所提出的方法进行了测试。为了评估所提出的燃料映射方法的准确性,我们将使用ZAFM燃料地图的火灾蔓延预测与基于从研究区域土地覆盖地图导出的不同燃料地图的火灾演变进行了比较。基于F2分数指标的准确性评估表明,ZAFM实现了约0.90的最高F2分数,而其他燃料地图的F2分数在0.78至0.89之间,没有单个模拟达到0.90。还将ZAFM与覆盖加泰罗尼亚的其他公开可用燃料地图进行了评估,在案例研究模拟中再次获得了更高的F2分数。这些结果突出了ZAFM卓越的预测性能,并强调了使用最新的高分辨率数据来改善野火蔓延预测的重要性。此外,由于ZAFM依赖开放获取的数据地图,它可以在全球范围内与任何可用的高分辨率土地覆盖地图一起应用。