Machine Learning for Big Data Analytics in Development of Wildfire Prediction Models

Chan-Ho Lee, Mooyoung Lim, Yohan Lee
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引用次数: 0

Abstract

This study aims to develop a model that predicts domestic forest fire occurrences during fire outbreaks using machine learning techniques. For the modeling methods, logistic regression analysis and ensemble techniques, such as gradient boost and random forest, were used while the oversampling technique was utilized to address the imbalance problem of the forest fire data. The model developed in this study predicted 239 out of 333 forest fire occurrences during the nationwide forest fire period in 2020 with a prediction accuracy of approximately 71.8%. Forest fires that occur during such periods are highly influenced by different factors affecting the climate, such as temperature, humidity, and precipitation. In Gangwon-do, in addition to these factors, a high correlation between farmland density and stem volume per hectare has also been associated with increased forest fire occurrences. The significance of this study lies in the fact that it presents a customized wildfire occurrence prediction model that can be used in the administrative parts, which serve as the basic centers for wildfire prevention, of provinces and cities across the country.
野火预测模型开发中的大数据分析机器学习
本研究旨在开发一个模型,利用机器学习技术预测火灾爆发期间国内森林火灾的发生情况。在建模方法上,采用logistic回归分析和梯度增强、随机森林等集成技术,并利用过采样技术解决森林火灾数据的不平衡问题。本研究开发的模型预测了2020年全国森林火灾期间333起森林火灾中的239起,预测精度约为71.8%。在这种时期发生的森林火灾受到影响气候的不同因素的高度影响,例如温度、湿度和降水。在江原道,除了这些因素外,农田密度和每公顷茎体积之间的高度相关性也与森林火灾发生率增加有关。本研究的意义在于提出了一种可用于全国各省市作为野火防治基础中心的行政区域的定制化野火发生预测模型。
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