基于拓扑关系的印尼廖内省Bengkalis热点事件分类空间决策树

Y. Khoiriyah, I. S. Sitanggang
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引用次数: 5

摘要

印度尼西亚廖内省每年都经常发生森林火灾,特别是在旱季。热点是森林火灾事件的一个指标。热点监测是预防森林火灾的一项活动。热点数据是用点表示的空间数据。为了分析数据,需要空间算法。扩展空间ID3算法是一种从空间数据集生成空间决策树的空间分类算法。本研究将扩展空间ID3算法应用于印度尼西亚廖内省Bengkalis地区的森林火灾数据。数据包括热点和非热点、天气数据、社会经济数据和研究区域的地理特征。本文的研究结果是一棵以收入来源层为根节点标签的决策树。从树中生成了多达137个分类规则。在廖内省Bengkalis地区的森林火灾数据集中,该树的准确率为75.66%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A spatial decision tree based on topological relationships for classifying hotspot occurences in Bengkalis Riau Indonesia
Forest fires in Riau province Indonesia, are frequently occurred every year especially in dry seasons. Hotspot is an indicator for forest fire events. Hotspots monitoring is an activity to prevent forest fires. Hotspot data are spatial data that are represented in points. In order to analyze the data, spatial algorithms are required. The extended spatial ID3 algorithm is a spatial classification algorithm for creating a spatial decision tree from spatial datasets. This research applied the extended spatial ID3 algorithm on the forest fires data in Bengkalis district, Riau province Indonesia. The data include hotspots and non-hotspots, weather data, socio-economic data, and geographical characteristics of the study area. The result of this research is a decision tree with the income source layer as the label of root node. As many 137 classification rules were generated from the tree. The accuracy of the tree is 75.66% on the forest fires dataset in Bengkalis district, Riau province.
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