Wildfire univariate and bivariate characteristics simulation based on multiple machine learning models and applicability analysis of wildfire models

IF 2.6 Q3 ENVIRONMENTAL SCIENCES Progress in Disaster Science Pub Date : 2023-11-07 DOI:10.1016/j.pdisas.2023.100301
Ke Shi , Yoshiya Touge , Yanhong Dou
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引用次数: 0

Abstract

Wildfires can significantly impact regional and global climate, human health, and ecosystems, making it necessary to model their behavior and predict their outcomes. With increasing global temperatures and changing precipitation patterns due to climate change, the frequency and intensity of wildfires are expected to increase, heightening the requirement for accurate wildfire simulation models to support wildfire management and mitigation efforts. However, the interactions between the causative variables of wildfires and the wildfire bivariate characteristics have not been explored in wildfire modeling. Therefore, the copula function was applied to solve the complicated and nonlinear relationship of the dependence structure in wildfire statistics and the relationship between wildfire causative variables. Subsequently, we modeled wildfire characteristics globally using six machine learning models and compared the performances of the models. Specifically, the main conclusions were obtained as follows: (1) among the six machine learning models, long short-term memory had the best applicability in simulating wildfire characteristics; (2) when there were 4 predictors, the accuracy of wildfire characteristic simulation reached the average level; and (3) long short-term memory achieved excellent model performance within 56% of the global climate sub-regions. Overall, this analysis provides a reference to better understand wildfire and contributes to wildfire management.

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基于多机器学习模型的野火单变量和双变量特征模拟及野火模型的适用性分析
野火可以对区域和全球气候、人类健康和生态系统产生重大影响,因此有必要对其行为进行建模并预测其结果。随着气候变化导致的全球气温升高和降水模式的变化,预计野火的频率和强度将增加,从而提高了对精确野火模拟模型的需求,以支持野火管理和减灾工作。然而,野火的成因变量与野火双变量特征之间的相互作用尚未在野火模型中得到探讨。因此,运用copula函数来解决野火统计中依赖结构与野火成因变量之间复杂的非线性关系。随后,我们使用六种机器学习模型对野火特征进行了全球建模,并比较了模型的性能。具体而言,得出的主要结论如下:(1)在6种机器学习模型中,长短期记忆模型对模拟野火特征的适用性最好;(2)当有4个预测因子时,野火特征模拟精度达到平均水平;(3)长短期记忆在56%的全球气候分区内取得了优异的模型性能。总的来说,这一分析为更好地了解野火提供了参考,并有助于野火管理。
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来源期刊
Progress in Disaster Science
Progress in Disaster Science Social Sciences-Safety Research
CiteScore
14.60
自引率
3.20%
发文量
51
审稿时长
12 weeks
期刊介绍: Progress in Disaster Science is a Gold Open Access journal focusing on integrating research and policy in disaster research, and publishes original research papers and invited viewpoint articles on disaster risk reduction; response; emergency management and recovery. A key part of the Journal's Publication output will see key experts invited to assess and comment on the current trends in disaster research, as well as highlight key papers.
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