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Developing Pedotransfer Functions for Estimating some Soil Properties using Artificial Neural Network and Multivariate Regression Approaches

机译:使用人工神经网络和多元回归方法开发Pedotransfer函数以估算某些土壤性质

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Study of soil properties like field capacity (F.C.) and permanent wilting point (P.W.P.) plays important roles in study of soil moisture retention curve. Although these parameters can be measured directly, their measurement is difficult and expensive. Pedotransfer functions (PTFs) provide an alternative by estimating soil parameters from more readily available soil data. In this investigation, 70 soil samples were collected from different horizons of 15 soil profiles located in the Ziaran region, Qazvin province, Iran. The data set was divided into two subsets for calibration (80%) and testing (20%) of the models and their normality were tested by Kolmogorov-Smirnov method. Both multivariate regression and artificial neural network (ANN) techniques were employed to develop the appropriate PTFs for predicting soil parameters using easily measurable characteristics of clay, silt, O.C, S.P, B.D and CaCO3. The performance of the multivariate regression and ANN models was evaluated using an independent test data set. In order to evaluate the models, root mean square error (RMSE) and R2 were used. The comparison of RMSE for two mentioned models showed that the ANN model gives better estimates of F.C and P.W.P than the multivariate regression model. The value of RMSE and R2 derived by ANN model for F.C and P.W.P were (2.35, 0.77) and (2.83, 0.72), respectively. The corresponding values for multivariate regression model were (4.46, 0.68) and (5.21, 0.64), respectively. Results showed that ANN with five neurons in hidden layer had better performance in predicting soil properties than multivariate regression.
机译:田间持水量(F.C.)和永久枯萎点(P.W.P.)等土壤特性的研究在研究土壤水分保持曲线方面起着重要作用。尽管可以直接测量这些参数,但是它们的测量是困难且昂贵的。 Pedotransfer函数(PTF)通过从更容易获得的土壤数据中估算土壤参数来提供替代方法。在这项调查中,从位于伊朗加兹温省齐亚兰地区的15个土壤剖面的不同层位收集了70个土壤样品。将数据集分为两个子集,分别用于模型的校准(80%)和测试(20%),并通过Kolmogorov-Smirnov方法测试其正态性。多元回归和人工神经网络(ANN)技术都被用来开发适当的PTF,以利用粘土,粉砂,OC,S.P,B.D和CaCO3的易于测量的特征来预测土壤参数。使用独立的测试数据集评估多元回归和ANN模型的性能。为了评估模型,使用了均方根误差(RMSE)和R2。对上述两个模型的RMSE的比较表明,与多元回归模型相比,ANN模型对F.C和P.W.P的估计更好。通过ANN模型得出的F.C和P.W.P的RMSE和R2值分别为(2.35,0.77)和(2.83,0.72)。多元回归模型的相应值分别为(4.46,0.68)和(5.21,0.64)。结果表明,隐含层中具有五个神经元的人工神经网络在预测土壤性质方面比多元回归具有更好的性能。

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