Forest Fire Risk Prediction Based on Stacking Ensemble Learning for Yunnan Province of China

Fire Pub Date : 2023-12-28 DOI:10.3390/fire7010013
Yanzhi Li, Guohui Li, Kaifeng Wang, Zumin Wang, Yanqiu Chen
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Abstract

Forest fire risk prediction is essential for building a forest fire defense system. Ensemble learning methods can avoid the problem of difficult model selection for disaster susceptibility prediction and can significantly improve modeling accuracy. This study introduces a stacking ensemble learning model for predicting forest fire risks in Yunnan Province by integrating various data types, such as meteorological, topographic, vegetation, and human activity factors. A total of 70,274 fire points and an equal number of randomly selected nonfire points were used to develop the model, with 70% of the data allocated for training and the remaining 30% for testing. The stacking model combined four diverse machine learning methods: random forest (RF), extreme gradient boosting (XGBoost), light gradient boosting machine (LightGBM), and multilayer perceptron (MLP). We evaluated the model’s predictive performance using metrics like accuracy, area under the characteristic curve (AUC), and fire density (FD). The results demonstrated that the stacking fusion model exhibited remarkable accuracy with an AUC of 0.970 on the test set, significantly surpassing the performance of individual machine learning models, which had AUC values ranging from 0.935 to 0.953. Furthermore, the stacking fusion model effectively captured the maximum fire density in extremely high susceptibility areas, demonstrating enhanced generalization capabilities.
基于堆叠集合学习的中国云南省森林火灾风险预测
森林火灾风险预测对于建立森林火灾防御系统至关重要。集合学习方法可以避免灾害易感性预测中模型选择困难的问题,并能显著提高建模精度。本研究通过整合气象、地形、植被、人类活动等多种数据类型,建立了云南省森林火险预测的堆叠集合学习模型。该模型共使用了 70274 个火灾点和相同数量的随机选取的非火灾点,其中 70% 的数据用于训练,其余 30% 用于测试。堆叠模型结合了四种不同的机器学习方法:随机森林(RF)、极梯度提升(XGBoost)、轻梯度提升机(LightGBM)和多层感知器(MLP)。我们使用准确率、特征曲线下面积(AUC)和火灾密度(FD)等指标评估了模型的预测性能。结果表明,堆叠融合模型在测试集上的 AUC 值为 0.970,大大超过了 AUC 值在 0.935 到 0.953 之间的单个机器学习模型,表现出了非凡的准确性。此外,堆叠融合模型还有效地捕捉到了极易发生火灾地区的最大火灾密度,显示出更强的泛化能力。
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