Hotspot Classification for Forest Fire Prediction using C5.0 Algorithm

Andi Nurkholis, Styawati, Debby Alita, Adi Sucipto, Muchammad Chanafy, Zahrina Amalia
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引用次数: 4

Abstract

Forest and land fires impact the destruction of ecosystems and destroy flora and fauna. Forest fires haze can also disrupt the transportation sector, especially aviation transportation. Forest fire is a recurring disaster problem in Indonesia, especially on Sumatra island. That requires solutions to overcome it, one of which is the monitoring hotspot. A hotspot is an object on the earth's surface represented in a point with certain coordinates that have relatively higher temperatures than its surrounding areas. This study classified hotspots using the C5.0 algorithm to generate forest fire prediction model. The dataset is divided into two categories, namely the explanatory factors representing four region characteristics (cities, river, road, and land cover) and three climate data (rainfall, temperature, and wind speed), and the target class representing the hotspot class (true/false) in the study area, namely Indragiri Hulu Regency, Riau Province, Indonesia. The result is forest fire prediction model that obtained an accuracy of 98.47% on training data, while on test data of 98.68%. The resulting rules are 80 rules excluding three attributes, river, road, and wind speed. The rules can be used as information on preventing forest fires based on the characteristics of the land and the weather of an area.
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基于C5.0算法的森林火灾预测热点分类
森林和土地火灾对生态系统和动植物造成破坏。森林火灾雾霾也会扰乱交通运输部门,尤其是航空运输。森林火灾在印度尼西亚是一个反复发生的灾害问题,尤其是在苏门答腊岛。这需要解决方案来克服它,其中之一是监测热点。热点是地球表面上的一个物体,用特定的坐标表示一个点,这个点的温度相对高于它周围的区域。本研究采用C5.0算法对热点进行分类,生成森林火灾预测模型。数据集分为两类,即代表四个区域特征(城市、河流、道路和土地覆盖)的解释因子和三个气候数据(降雨、温度和风速),目标类代表研究区域的热点类(真/假),即印度尼西亚廖内省Indragiri Hulu Regency。结果表明,该模型对训练数据的预测准确率为98.47%,对测试数据的预测准确率为98.68%。由此产生的规则是80条规则,排除了河流、道路、风速三个属性。这些规则可以作为根据一个地区的土地和天气特征预防森林火灾的信息。
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