Modeling forest fires risk using spatial decision tree

R. Yaakob, N. Mustapha, A. Nuruddin, I. S. Sitanggang
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引用次数: 1

Abstract

Forest fires have long been annual events in many parts of Sumatra Indonesia during the dry season. Riau Province is one of the regions in Sumatra where forest fires seriously occur every year mostly because of human factors both on purposes and accidently. Forest fire models have been developed for certain area using the weightage and criterion of variables that involve the subjective and qualitative judging for variables. Determining the weights for each criterion is based on expert knowledge or the previous experienced of the developers that may result too subjective models. In addition, criteria evaluation and weighting method are most applied to evaluate the small problem containing few criteria. This paper presents our initial work in developing a spatial decision tree using the spatial ID3 algorithm and Spatial Join Index applied in the SCART (Spatial Classification and Regression Trees) algorithm. The algorithm is applied on historic forest fires data for a district in Riau namely Rokan Hilir to develop a model for forest fires risk. The modeling forest fire risk includes variables related to physical as well as social and economic. The result is a spatial decision tree containing 138 leaves with distance to nearest river as the first test attribute.
基于空间决策树的森林火灾风险建模
长期以来,印尼苏门答腊岛的许多地区每年旱季都会发生森林火灾。廖内省是苏门答腊岛每年发生森林火灾最严重的地区之一,主要是人为因素造成的,有故意的,也有意外的。利用变量的权重和准则建立了特定区域的森林火灾模型,其中涉及对变量的主观判断和定性判断。确定每个标准的权重是基于专家知识或开发人员以前的经验,这可能导致过于主观的模型。另外,标准评价法和加权法多用于评价标准较少的小问题。本文介绍了我们在使用空间ID3算法和应用于SCART(空间分类和回归树)算法的空间连接索引开发空间决策树方面的初步工作。将该算法应用于廖内省罗干希利尔地区的历史森林火灾数据,建立了森林火灾风险模型。森林火灾风险建模包括与物理以及社会和经济相关的变量。结果是一个包含138个叶子的空间决策树,到最近河流的距离作为第一个测试属性。
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