Area of Ecology, Faculty of Biological and Environmental Sciences, University of León, 24071, León, Spain.
Department of Organisms and Systems Biology (BOS, Ecology Unit) and Research Unit of Biodiversity (UMIB; UO-CSIC-PA), University of Oviedo, Oviedo, Mieres, Spain.
J Environ Manage. 2021 Jun 15;288:112462. doi: 10.1016/j.jenvman.2021.112462. Epub 2021 Apr 7.
The design and implementation of pre-fire management strategies in heterogeneous landscapes requires the identification of the ecological conditions contributing to the most adverse effects of wildfires. This study evaluates which features of pre-fire vegetation structure, estimated through broadband land surface albedo and Light Detection and Ranging (LiDAR) data fusion, promote high wildfire damage across several fire-prone ecosystems dominated by either shrub (gorse, heath and broom) or tree species (Pyrenean oak and Scots pine). Topography features were also considered since they can assist in the identification of priority areas where vegetation structure needs to be managed. The case study was conducted within the scar of a mixed-severity wildfire that occurred in the Western Mediterranean Basin. Burn severity was estimated using the differenced Normalized Burn Ratio index computed from Sentinel-2 multispectral instrument (MSI) Level 2 A at 10 m of spatial resolution and validated in the field using the Composite Burn Index (CBI). Ordinal regression models were implemented to evaluate high burn severity outcome based on three groups of predictors: topography, pre-fire broadband land surface albedo computed from Sentinel-2 and pre-fire LiDAR metrics. Models were validated both by 10-fold cross-validation and external validation. High burn severity was largely ecosystem-dependent. In oak and pine forest ecosystems, severe damage was promoted by a high canopy volume (model accuracy = 79%) and a low canopy base height (accuracy = 82%), respectively. Land surface albedo, which is directly related to aboveground biomass and vegetation cover, outperformed LiDAR metrics to predict high burn severity in ecosystems with sparse vegetation. This is the case of gorse and broom shrub ecosystems (accuracy of 80% and 77%, respectively). The effect of topography was overwhelmed by that of the vegetation structure portion of the fire triangle behavior, except for heathlands, in which warm and steep slopes played a key role in high burn severity outcome together with horizontal and vertical fuel continuity (accuracy = 71%). The findings of this study support the fusion of LiDAR and satellite albedo data to assist forest managers in the development of ecosystem-specific management actions aimed at reducing wildfire damage and promote ecosystem resilience.
在异质景观中设计和实施预火管理策略需要确定导致野火最不利影响的生态条件。本研究评估了通过宽带地表反照率和光探测和测距 (LiDAR) 数据融合估计的预火植被结构的哪些特征促进了几个火灾多发生态系统中的高野火破坏,这些生态系统主要由灌木(金雀花、石南花和金雀花)或树木物种(比利牛斯山橡木和苏格兰松)组成。还考虑了地形特征,因为它们可以帮助确定需要管理植被结构的优先区域。该案例研究在发生在地中海西部的混合严重度野火的疤痕内进行。使用从 Sentinel-2 多光谱仪器 (MSI) 以 10 m 空间分辨率计算的差分归一化烧伤比指数估算烧伤严重程度,并在现场使用综合烧伤指数 (CBI) 进行验证。实施有序回归模型,根据三组预测因子评估高烧伤严重程度的结果:地形、从 Sentinel-2 计算的预火宽带地表反照率和预火 LiDAR 指标。模型通过 10 倍交叉验证和外部验证进行验证。高烧伤严重程度在很大程度上取决于生态系统。在橡树和松树森林生态系统中,高树冠体积(模型准确性= 79%)和低树冠基部高度(准确性= 82%)分别促进了严重破坏。地表反照率与地上生物量和植被覆盖直接相关,在植被稀疏的生态系统中优于 LiDAR 指标来预测高烧伤严重程度。这是金雀花和金雀花灌丛生态系统的情况(准确性分别为 80%和 77%)。除了石南花外,地形的影响被火灾三角行为的植被结构部分所淹没,在石南花中,温暖陡峭的斜坡与水平和垂直燃料连续性一起在高烧伤严重程度结果中发挥了关键作用(准确性= 71%)。本研究的结果支持融合 LiDAR 和卫星反照率数据,以帮助森林管理者制定针对特定生态系统的管理行动,旨在减少野火破坏并提高生态系统的恢复力。