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[混合效应模型在森林火灾预测中的适用性]

[Applicability of mixed effect model in the prediction of forest fire].

作者信息

Zhang Zhen, Yang Song, Zhu He, Wang Guang-Yu, Guo Fu-Tao, Sun Shuai-Chao

机构信息

College of Forestry, Fujian Agricultural and Forestry University, Fuzhou 350002, China.

3S Technology and Resource Optimization Utilization Key Laboratory of Fujian Universities, Fuzhou 350002, China.

出版信息

Ying Yong Sheng Tai Xue Bao. 2022 Jun;33(6):1547-1554. doi: 10.13287/j.1001-9332.202206.026.

Abstract

Fire is an important influencing factor in forest ecosystems. Establishing an accurate forest fire forecasting model is important for forest fire management. We used different meteorological factors as predictors to construct a forest fire prediction model in Fujian Province, based on Logistic regression and generalized linear mixed effect model. We compared the fitness and prediction accuracy of the two models, judged the applicability of the mixed effect model in forest fire forecasting. The results showed that the AUC and accuracy values of the Logistic base model were 0.664 and 60.4%, respectively. Models considering random effects gave better fitting and validating statistics. Among them, the two-level mixed model containing both area and altitude difference effects performed best, with increases of 0.057 and 6.0% for the AUC and accuracy values, respectively. By applying the model to predict the probability of forest fires in Fujian Province, we found that the middle-incidence and high-incidence areas of forest fires distributed in northwest and south Fujian, whereas the low-incidence areas of forest fires distributed in southwest and east Fujian, which was consistent with the observed data. The data fitting and forest fire prediction of the mixed effects model was better than those of the Logistic basic model. Therefore, it could be used as an important tool for forest fire prediction and management.

摘要

火灾是森林生态系统中的一个重要影响因素。建立准确的森林火灾预测模型对于森林火灾管理至关重要。我们基于逻辑回归和广义线性混合效应模型,使用不同的气象因素作为预测变量,构建了福建省的森林火灾预测模型。我们比较了这两种模型的拟合优度和预测准确性,判断了混合效应模型在森林火灾预测中的适用性。结果表明,逻辑基本模型的AUC和准确率值分别为0.664和60.4%。考虑随机效应的模型给出了更好的拟合和验证统计量。其中,包含面积和海拔差异效应的二级混合模型表现最佳,AUC和准确率值分别提高了0.057和6.0%。通过应用该模型预测福建省森林火灾发生的概率,我们发现森林火灾的中高发生率地区分布在闽西北和闽南,而森林火灾的低发生率地区分布在闽西南和闽东,这与观测数据一致。混合效应模型的数据拟合和森林火灾预测效果优于逻辑基本模型。因此,它可以作为森林火灾预测和管理的重要工具。

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