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首页> 外文期刊>Journal of Computational Biology and Bioinformatics Research >Pattern clustering of forest fires based on meteorological variables and its classification using hybrid data mining methods
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Pattern clustering of forest fires based on meteorological variables and its classification using hybrid data mining methods

机译:基于气象变量的森林火灾模式聚类及其混合数据挖掘方法分类

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This paper outlines two hybrid approaches to investigate the nonlinear relationship between size of a forest fire and meteorological variables (temperature, relative humidity, wind speed and rainfall). Self organizing map was used to cluster the historical meteorological variables. The clustered data were then used as inputs for two different approaches, the back-propagation neural network and the rule generation approaches. A back-propagation neural network was trained based on these inputs to classify the output (burnt area) in categorical form, namely; small, medium, large and extremely large. Several sets of rules were also generated from the data clustered by the self organizing map. Experimental results showed that both approaches gave considerable accuracy. Back-propagation neural network achieved a higher rate of accuracy than rule generation approach because the rule generation approach could not predict any criterion that goes beyond the set of rules.
机译:本文概述了两种混合方法来研究森林火灾的大小与气象变量(温度,相对湿度,风速和降雨量)之间的非线性关系。自组织图用于聚类历史气象变量。然后,将聚类的数据用作两种不同方法(反向传播神经网络和规则生成方法)的输入。基于这些输入训练了一个反向传播神经网络,以分类形式对输出(燃烧区域)进行分类,即:小,中,大和非常大。还从自组织图聚集的数据中生成了几套规则。实验结果表明,两种方法均具有相当高的准确性。反向传播神经网络比规则生成方法具有更高的准确率,因为规则生成方法无法预测超出规则集的任何准则。

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