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Prediction of magnetic susceptibility class of soil using decision trees

机译:利用决策树预测土壤的磁化率等级

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摘要

Magnetic susceptibility (MS) is a dimensionless proportionality constant that indicates the degree of magnetization of a material in response to an applied magnetic field. In our study, the focus is to predict the magnetic susceptibility classification of the soil by using data mining algorithms. Magnetic susceptibility values depend on the composition, grain size of magnetic minerals and their source, such as lithogenic, pedogenic and anthropogenic origins. In this paper, we applied two data mining classification algorithms which are called ID3 and C4.5 for predicting MS class and the degree of pollution along the Izmir area in Turkey. By applying the algorithms, possible MS classes are obtained, according to the heavy metal concentration (Pb, Cu, Zn, Co, Cd, Ni) values related to MS. The aim of applying the algorithms is constructing the decision tree and the rules so as to obtain MS values. Thus, errors resulting from the change of ambient conditions and the measurement difficulties are eliminated. According to the rules, we reached 82 % accuracy condition and it is shown that test values and the measurement values are compatible with each other.
机译:磁化率(MS)是无量纲的比例常数,表示响应于施加的磁场,材料的磁化程度。在我们的研究中,重点是通过使用数据挖掘算法来预测土壤的磁化率分类。磁化率值取决于磁性矿物的成分,晶粒大小及其来源,例如成岩作用,成岩作用和人为起源。在本文中,我们应用了两种数据挖掘分类算法ID3和C4.5来预测土耳其伊兹密尔地区的MS类和污染程度。通过应用算法,根据与MS相关的重金属浓度(Pb,Cu,Zn,Co,Cd,Ni)值,可以获得可能的MS类。应用算法的目的是构造决策树和规则以获得MS值。因此,消除了由于环境条件的改变和测量困难而引起的误差。根据规则,我们达到了82%的准确度条件,并且表明测试值和测量值相互兼容。

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