J Environ Manage. 2020 Jun 15;264:110449. doi: 10.1016/j.jenvman.2020.110449. Epub 2020 Mar 26.
Understanding the characteristics of wildfire-affected communities and the importance of particular factors of different dimensions, is paramount to improve prevention and mitigation strategies, tailored to people's needs and abilities. In this study, we explored different combinations of biophysical and social factors to characterize wildfire-affected areas in Portugal. By means of machine-learning methods based on classification trees, we assessed the predictive ability of various models to discriminate different levels of wildfire incidence at the local scale. The model with the best performance included a reduced set of both biophysical and social variables and we found that, oveall, the exclusion of specific variables improved prediction rates of group classification. The most important variables were related to landcover; the civil parishes covered by more than 20% of shrublands were more fire-prone, whereas those parishes with at least 40% of agricultural land were less affected by wildfires. Regarding social variables, the most-affected parishes showed a lower proportion of foreign residents and lower purchasing power, conditions likely associated with the socioeconomic context of inland low-density rural areas, where rural abandonment, depopulation and ageing trends have been observed in the last decades. Further research is needed to investigate how other particular parameters representing the social context, and its evolution, can be integrated in wildfire occurrence modelling, and how these interact with the biophysical conditions over time.
了解受野火影响社区的特征以及不同维度特定因素的重要性,对于改进针对人们需求和能力的预防和缓解策略至关重要。在这项研究中,我们探索了生物物理和社会因素的不同组合,以描述葡萄牙受野火影响的地区。我们使用基于分类树的机器学习方法,评估了各种模型在当地尺度上区分不同野火发生率水平的预测能力。表现最佳的模型包含一组经过简化的生物物理和社会变量,我们发现总体而言,排除特定变量可以提高群体分类的预测率。最重要的变量与土地覆盖有关;覆盖超过 20%灌木地的民政教区更容易发生火灾,而至少有 40%农业用地的教区则较少受到野火影响。关于社会变量,受灾最严重的教区的外国居民比例较低,购买力也较低,这可能与内陆低密度农村地区的社会经济背景有关,在过去几十年中,这些地区已经出现了农村废弃、人口减少和老龄化趋势。需要进一步研究如何将代表社会背景及其演变的其他特定参数纳入野火发生模型中,以及这些参数如何随时间与生物物理条件相互作用。