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首页> 外文期刊>Soil & Tillage Research >Comparison of artificial neural network and regression pedotransfer functions for prediction of soil water retention and saturated hydraulic conductivity.
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Comparison of artificial neural network and regression pedotransfer functions for prediction of soil water retention and saturated hydraulic conductivity.

机译:人工神经网络和回归pedotransfer函数的比较,用于预测土壤保水率和饱和导水率。

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摘要

Modelling water flow and solute transport in vadose zone requires knowledge of soil hydraulic properties, which are water retention and hydraulic conductivity curves. As an alternative to direct measurement, indirect determination of these functions from basic soil properties using pedotransfer functions (PTFs) has attracted the attention of researchers in a variety of fields such as soil scientists, hydrologists, and agricultural and environmental engineers. In this study, PTFs for point and parametric (van Genuchten's parameters) estimation of soil hydraulic parameters from basic soil properties such as particle-size distribution, bulk density, and three different pore sizes were developed and validated using artificial neural network (ANN) and multiple-linear regression methods and the predictive capabilities of the two methods was compared using some evaluation criteria. Total of 195 soil samples was divided into two groups as 130 for the development and 65 for the validation of PTFs. Although the differences between the two methods were not statistically significant (p0.05), regression predicted point and parametric variables of soil hydraulic parameters better than ANN. Both methods had lower accuracy in parametric predictions than in point predictions. Accuracy of the predictions was evaluated by the coefficient of determination (R2) and the root mean square error (RMSE) between the measured and predicted parameter values. The R2 and RMSE varied from 0.637 to 0.979 and from 0.013 to 0.938 for regression, and varied from 0.444 to 0.952 and from 0.020 to 3.511 for ANN, respectively. Even though regression performs insignificantly better than ANN in this case, ANN produces promising results and its advantages can be utilized by developing or using new algorithms in future studies..
机译:要对渗流区内的水流和溶质运移进行建模,需要了解土壤的水力特性,即保水率和水力传导率曲线。作为直接测量的替代方法,使用pedotransfer函数(PTF)从基本土壤属性间接确定这些功能已引起了各个领域的研究人员的关注,例如土壤科学家,水文学家以及农业和环境工程师。在这项研究中,使用人工神经网络(ANN)开发并验证了用于从基本土壤特性(例如粒度分布,堆积密度和三种不同的孔径)估算土壤水力参数的点和参数(van Genuchten参数)的PTF。使用一些评估标准比较了多元线性回归方法和两种方法的预测能力。总共195个土壤样品分为两组,分别为130个用于开发和65个用于验证PTF。尽管两种方法之间的差异没有统计学意义(p> 0.05),但是回归预测的土壤水力参数的点和参数变量比ANN更好。与点预测相比,这两种方法在参数预测中的准确性都较低。通过确定系数(R2)和实测和预测参数值之间的均方根误差(RMSE)来评估预测的准确性。回归的R2和RMSE从0.637到0.979,从0.013到0.938,对于ANN,分别从0.444到0.952和0.020到3.511。尽管在这种情况下,回归的性能要比ANN显着提高,但ANN产生了令人鼓舞的结果,其优势可以通过在未来的研究中开发或使用新的算法来利用。

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