基于GIS的森林火险制图的HHO-RSCDT集成学习方法

IF 2.4 Q2 GEOSCIENCES, MULTIDISCIPLINARY
Truong Tran Xuan, Phuong Doan Thi Nam, Nghi Le Thanh, Nhu Viet-Ha, D. Tien Bui
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引用次数: 0

摘要

准确的森林火险空间预测模型在森林火灾预测中发挥着至关重要的作用,有助于预防和减轻森林火灾的有害影响。本研究旨在建立一种新的能够准确预测森林火情空间格局的集成学习模型HHO-RSCDT。HHO- rscdt方法结合了三个不同的组成部分,即随机子空间(RS)、可信度决策树(CDT)和哈里斯鹰优化器(HHO)。其中,RS生成一系列子空间数据集,这些子空间数据集随后用于生成单个CDT分类器。然后,HHO对集成模型进行优化,使模型具有更高的预测性能。该模型使用越南富颜省数据集进行训练和验证。该数据集包括研究省份的306个森林火灾地点和10个影响因素。结果表明,HHO-RSCDT模型预测森林火险的准确率为83.7%,kappa统计量为0.674,AUC为0.911。将HHO-RSCDT模型与支持向量机(SVM)和随机森林(RF)两种最先进的机器学习方法进行比较,表明HHO-RSCDT模型具有更好的性能,是森林火险建模的重要工具。使用这种新模型制作的森林火灾危险地图可以成为富颜省地方当局的新工具,帮助他们管理和保护森林生态系统。通过提供最容易发生森林火灾的地区的详细概况,该地图可以帮助当局制定有针对性和有效的森林管理战略,例如侧重于高燃料负荷地区或实施控制燃烧计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel HHO-RSCDT ensemble learning approach for forest fire danger mapping using GIS
Accurate prediction models for spatial prediction of forest fire danger play a vital role in predicting forest fires, which can help prevent and mitigate the detrimental effects of such disasters. This research aims to develop a new ensemble learning model, HHO-RSCDT, capable of accurately predicting spatial patterns of forest fire danger. The HHO-RSCDT method combines three distinct components, namely Random Subspace (RS), Credal Decision Tree (CDT), and Harris Hawks Optimizer (HHO). Herein, RS generates a series of subspace datasets, which are subsequently utilized to produce individual CDT classifiers. Then, HHO optimizes the ensemble model, enabling the model to achieve higher predictive performance. The model was trained and validated using a Phu Yen province, Vietnam dataset. The dataset includes 306 forest fire locations and ten influencing factors from the study province. The results showed the capability of the HHO-RSCDT model in predicting forest fire danger, with an accuracy rate of 83.7%, a kappa statistic of 0.674, and an AUC of 0.911. A comparison between the HHO-RSCDT model and two state-of-the-art machine learning methods, i.e., support vector machine (SVM) and random forest (RF), indicated that the HHO-RSCDT model could perform better, making it a valuable tool for modeling forest fire danger. The forest fire danger map produced using this novel model could be a new tool for local authorities in the Phu Yen province, assisting them in managing and protecting the forest ecosystem. By providing a detailed overview of the are as most susceptible to forest fires, the map can help authorities to develop targeted and effective forest management strategies, such as focusing on areas with high fuel loads or implementing controlled burning programs.
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来源期刊
VIETNAM JOURNAL OF EARTH SCIENCES
VIETNAM JOURNAL OF EARTH SCIENCES GEOSCIENCES, MULTIDISCIPLINARY-
CiteScore
3.60
自引率
20.00%
发文量
0
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