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Evaluation of machine learning methods to predict soil moisture constants with different combinations of soil input data for calcareous soils in a semi arid area

机译:基机学习方法评价在半干旱地区钙质土壤中土壤输入数据不同组合预测土壤湿度常数

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This study evaluated the performance of deep learning (DL), artificial neural network (ANN) and k-nearest neighbour (kNN) models to estimate field capacity (FC) and permanent wilting point (PWP) using four combinations of soil data. The DL, ANN and kNN models are compared with the previous published pedotransfer functions (PTF). The data consist of 256 calcareous soil samples collected from Konya-Cumra plain, Turkey. The results demonstrated that the DL_a with inputs of soil texture components, bulk density, organic matter and lime contents, particle density and aggregate stability showed the best performances with coefficient of determination (R-2) of 0.829, correlation coefficient (r) of 0.911, mean absolute error (MAE) of 0.027 and relative root mean square error (RRMSE) 9.397 % in FC estimation for calcareous soil samples. For the PWP estimation of calcareous soil samples, the kNN_b with soil texture components, bulk density, organic matter and lime content and particle density indicated the best performance with the value of R-2 to 0.800, of r to 0.894, of MAE to 0.021 and RRMSE to 12.043 %. Lastly, the results showed that the DL, ANN and the kNN models perform better than the previously applied PTF for calcareous soils. Therefore, the DL model could be recommended for the estimation of FC when full soil data are available and the kNN model could be recommended for estimation of PWP with all combinations of soil data.
机译:本研究评估了深度学习(DL),人工神经网络(ANN)和K最近邻(KNN)模型的性能,以使用土壤数据的四种组合来估计场容量(FC)和永久性的永久性点(PWP)。将DL,ANN和KNN模型与先前公开的网兜传递功能(PTF)进行比较。该数据由来自土耳其Konya-Cumra Plang的256种钙质土壤样本组成。结果表明,具有土壤质地组分的输入,堆积密度,有机物和石灰含量,颗粒密度和聚集稳定性的DL_A显示出具有0.829的判定系数(R-2)的最佳性能,相关系数(R)为0.911 ,意味着0.027的绝对误差(MAE)和相对根均方误差(RRMSE)的钙质土壤样品FC估计中的9.397%。对于钙质土壤样品的PWP估计,具有土壤质地组分的KNN_B,堆积密度,有机物和石灰含量和颗粒密度表明了MAE的R-2至0.800的值,MAE为0.021的最佳性能并rrmse到12.043%。最后,结果表明,DL,ANN和KNN模型比以前施加的钙质土壤的PTF更好地表现优于先前的PTF。因此,可以建议DL模型用于估计FC,当完整的土壤数据可用时,可以建议KNN模型以估计PWP,以估计土壤数据的所有组合。

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