Prediction and driving factors of forest fire occurrence in Jilin Province, China

IF 3.4 2区 农林科学 Q1 FORESTRY Journal of Forestry Research Pub Date : 2023-12-16 DOI:10.1007/s11676-023-01663-w
Bo Gao, Yanlong Shan, Xiangyu Liu, Sainan Yin, Bo Yu, Chenxi Cui, Lili Cao
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Abstract

Forest fires are natural disasters that can occur suddenly and can be very damaging, burning thousands of square kilometers. Prevention is better than suppression and prediction models of forest fire occurrence have developed from the logistic regression model, the geographical weighted logistic regression model, the Lasso regression model, the random forest model, and the support vector machine model based on historical forest fire data from 2000 to 2019 in Jilin Province. The models, along with a distribution map are presented in this paper to provide a theoretical basis for forest fire management in this area. Existing studies show that the prediction accuracies of the two machine learning models are higher than those of the three generalized linear regression models. The accuracies of the random forest model, the support vector machine model, geographical weighted logistic regression model, the Lasso regression model, and logistic model were 88.7%, 87.7%, 86.0%, 85.0% and 84.6%, respectively. Weather is the main factor affecting forest fires, while the impacts of topography factors, human and social-economic factors on fire occurrence were similar.

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中国吉林省森林火灾发生的预测和驱动因素
森林火灾是一种自然灾害,它可能突然发生,并可能造成数千平方公里的严重破坏。预防胜于扑救,根据吉林省 2000 年至 2019 年的历史森林火灾数据,从逻辑回归模型、地理加权逻辑回归模型、拉索回归模型、随机森林模型和支持向量机模型中建立了森林火灾发生的预测模型。本文介绍了这些模型以及分布图,为该地区的森林火灾管理提供理论依据。现有研究表明,两种机器学习模型的预测精度高于三种广义线性回归模型。随机森林模型、支持向量机模型、地理加权逻辑回归模型、Lasso 回归模型和逻辑模型的准确率分别为 88.7%、87.7%、86.0%、85.0% 和 84.6%。天气是影响森林火灾的主要因素,而地形因素、人为因素和社会经济因素对火灾发生的影响相似。
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来源期刊
CiteScore
7.30
自引率
3.30%
发文量
2538
期刊介绍: The Journal of Forestry Research (JFR), founded in 1990, is a peer-reviewed quarterly journal in English. JFR has rapidly emerged as an international journal published by Northeast Forestry University and Ecological Society of China in collaboration with Springer Verlag. The journal publishes scientific articles related to forestry for a broad range of international scientists, forest managers and practitioners.The scope of the journal covers the following five thematic categories and 20 subjects: Basic Science of Forestry, Forest biometrics, Forest soils, Forest hydrology, Tree physiology, Forest biomass, carbon, and bioenergy, Forest biotechnology and molecular biology, Forest Ecology, Forest ecology, Forest ecological services, Restoration ecology, Forest adaptation to climate change, Wildlife ecology and management, Silviculture and Forest Management, Forest genetics and tree breeding, Silviculture, Forest RS, GIS, and modeling, Forest management, Forest Protection, Forest entomology and pathology, Forest fire, Forest resources conservation, Forest health monitoring and assessment, Wood Science and Technology, Wood Science and Technology.
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