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首页> 外文期刊>Computers and Electronics in Agriculture >A comparison of support vector machines, artificial neural network and classification tree for identifying soil texture classes in southwest China
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A comparison of support vector machines, artificial neural network and classification tree for identifying soil texture classes in southwest China

机译:识别中国西南地区土壤纹理课程的支持向量机,人工神经网络和分类树的比较

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摘要

The variability of soil properties plays a critical role in soil and water conversation engineering. In this study, different machine learning techniques were applied to identify the soil texture classes based on a set of terrain parameters in a small mountainous watershed located in the core areas of Three Gorges of Yangtze River, southwest China. For this, the support vector machines (SVMs) with polynomial and Gaussian radius basis functions, artificial neural network, and classification tree methods were compared. The most commonly used performance measures including overall accuracy, kappa index, receiver operating characteristics (ROC), and area under the ROC curve (AUC) were employed to evaluate the accuracy of the models for classification. The observed results showed a better performance under SVMs than under artificial neural network and classification tree algorithms. Moreover, SVM with polynomial function (SVM-poly) worked slightly better than SVM with Gaussian radius basis function. The overall accuracy, kappa statistic, and AUC of SVM-poly were 0.943, 0.79, and 0.944, respectively. Meanwhile, the classification accuracy was 0.794 for clay, 0.992 for loam, and 0.661 for sand under SVM-poly. Elevation, terrain classification index for lowlands, and flow path length were the most important terrain indicators affecting the variation in the soil texture class in the study area. These results showed that the support vector machines are feasible and reliable in the identification of soil texture classes.
机译:土壤特性的变异性在土壤和水交谈工程中起着重要作用。在这项研究中,应用了不同的机器学习技术,以基于一组地形参数来识别土壤纹理等级,位于中国西南三峡三峡核心区的小山地流域。为此,比较了具有多项式和高斯半径基函数,人工神经网络和分类树方法的支持向量机(SVM)。采用了最常用的性能措施,包括总体准确性,κ指数,接收器操作特性(ROC)和ROC曲线(AUC)的面积,以评估分类模型的准确性。观察结果在SVMS下表现出比人工神经网络和分类树算法下的更好的性能。此外,具有多项式函数(SVM-Poly)的SVM比具有高斯半径基函数的SVM略好转。 SVM-Poly的总体精度,κ统计和AUC分别为0.943,0.79和0.944。同时,粘土的分类精度为0.794,腰部0.992,SVM-Poly下的沙子0.99。海拔,地形分类指数为低地,流动路径长度是影响研究区土壤纹理类别变化的最重要的地形指标。这些结果表明,在识别土壤纹理等级中,支撑载体机是可行可靠的。

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