An Integrated Grassland Fire-Danger-Assessment System for a Mountainous National Park Using Geospatial Modelling Techniques

Fire Pub Date : 2024-02-19 DOI:10.3390/fire7020061
Olga D. Mofokeng, S. Adelabu, Colbert M. Jackson
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Abstract

Grasslands are key to the Earth’s system and provide crucial ecosystem services. The degradation of the grassland ecosystem in South Africa is increasing alarmingly, and fire is regarded as one of the major culprits. Globally, anthropogenic climate changes have altered fire regimes in the grassland biome. Integrated fire-risk assessment systems provide an integral approach to fire prevention and mitigate the negative impacts of fire. However, fire risk-assessment is extremely challenging, owing to the myriad of factors that influence fire ignition and behaviour. Most fire danger systems do not consider fire causes; therefore, they are inadequate in validating the estimation of fire danger. Thus, fire danger assessment models should comprise the potential causes of fire. Understanding the key drivers of fire occurrence is key to the sustainable management of South Africa’s grassland ecosystems. Therefore, this study explored six statistical and machine learning models—the frequency ratio (FR), weight of evidence (WoE), logistic regression (LR), decision tree (DT), random forest (RF), and support vector machine (SVM) in Google Earth Engine (GEE) to assess fire danger in an Afromontane grassland protected area (PA). The area under the receiver operating characteristic curve results (ROC/AUC) revealed that DT showed the highest precision on model fit and success rate, while the WoE was used to record the highest prediction rate (AUC = 0.74). The WoE model showed that 53% of the study area is susceptible to fire. The land surface temperature (LST) and vegetation condition index (VCI) were the most influential factors. Corresponding analysis suggested that the fire regime of the study area is fuel-dominated. Thus, fire danger management strategies within the Golden Gate Highlands National Park (GGHNP) should include fuel management aiming at correctly weighing the effects of fuel in fire ignition and spread.
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利用地理空间建模技术为山区国家公园建立草原火灾危险综合评估系统
草原是地球系统的关键,提供着重要的生态系统服务。南非草原生态系统的退化正在以惊人的速度加剧,而火灾被认为是罪魁祸首之一。在全球范围内,人为气候变化改变了草原生物群落的火灾机制。综合火灾风险评估系统为火灾预防和减轻火灾的负面影响提供了一个整体方法。然而,由于影响火灾燃点和行为的因素众多,火灾风险评估极具挑战性。大多数火险系统都没有考虑火灾原因,因此不足以验证对火险的估计。因此,火险评估模型应包括火灾的潜在原因。了解火灾发生的主要驱动因素是南非草原生态系统可持续管理的关键。因此,本研究在谷歌地球引擎 (GEE) 中探索了六种统计和机器学习模型--频率比 (FR)、证据权重 (WoE)、逻辑回归 (LR)、决策树 (DT)、随机森林 (RF) 和支持向量机 (SVM),以评估非洲蒙地草原保护区 (PA) 的火灾危险性。接收器工作特征曲线下面积结果(ROC/AUC)显示,DT 在模型拟合精度和成功率方面最高,而 WoE 的预测率最高(AUC = 0.74)。WoE 模型显示,53% 的研究区域易受火灾影响。地表温度(LST)和植被状况指数(VCI)是影响最大的因素。相应的分析表明,研究区域的火灾机制以燃料为主。因此,金门高地国家公园(GGHNP)的火险管理策略应包括燃料管理,目的是正确权衡燃料在火灾发生和蔓延过程中的影响。
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