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Model prediction of depth-specific soil texture distributions with artificial neural network: A case study in Yunfu, a typical area of Udults Zone, South China

机译:人工神经网络深度特异性土壤纹理分布的模型预测 - 以南南方大川省大区区典型地区云浮的一个案例研究

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摘要

The depth-specific soil texture map with high-resolution (i.e. <= 10 m) is essential for soil management and forest silviculture. The objective of this research was to develop a modelling method to generate high-resolution soil texture maps at five depths (D1: 0-20, D2: 20-40, D3: 40-60, D4: 60-80, and D5: 80-100 cm) in Yunfu, a typical area of Udults Zone, South China. Taking a coarse-resolution soil texture (CST) map with a 1: 2,800,000 scale and nine topo-hydrologic variables derived from a digital elevation model (DEM) with 10 m-resolution as input candidates, a series of artificial neural network (ANN) models for five depths were built and evaluated by a 10-fold cross-validation with 385 soil profiles from the Yunfu forest. The results indicated that the optimal model for five depths engaged five, five, five, four, and four DEM-generated variables as inputs, respectively, and model accuracies for estimating sand and clay contents varied with root mean squared error (RMSE) of 6.8-9.7%, R-2 of 0.56-0.72, and relative overall accuracy (ROA) +/- 5% of 54-81%, which were better than most of other researches. An extra independent validation with 64 soil profiles outside of the model-building area also indicated that the optimal models had adequate capabilities for generalization with RMSE of 9.2-12.2%, R-2 of 0.33-0.47, and ROA +/- 5% of 37-53%. The depth-specific sand and clay content maps with 10 m-resolution generated from the optimal models in Yunfu showed more detailed information than the CST map, and could reflected the influence of the DEM-derived topo-hydrologic variables. Based on the generated maps, horizontal characteristics of soil texture in the study area exhibited an obvious process of clay translocation from the topsoil (D1) to subsoil (D2-5), a maximum accumulation of clay in D4, and a dominant sandy soil in the topsoil (D1). Thus, the modelling method, i.e. developing ANNs with k-fold cross-validation, can be used to generate depth-specific soil texture maps in Udults Zone, South China. In addition, the generated high-resolution maps can clearly show the changes of soil texture in three-dimension.
机译:具有高分辨率(即<= 10米)的深度特异性土壤纹理图对于土壤管理和森林造林至关重要。该研究的目的是开发一种在五个深度产生高分辨率土壤纹理图的建模方法(D1:0-20,D2:20-40,D3:40-60,D4:60-80和D5: 80-100厘米)在华南市大川区典型地区云浮区。采用粗糙分辨率的土壤纹理(CST)地图,具有1:2,800,000的尺度和九个热门水文变量,具有10米分辨率的数字高度模型(DEM)作为输入候选,一系列人工神经网络(ANN)五个深度的模型由来自Yunfu Forest的385个土壤剖面的10倍交叉验证进行了建造和评估。结果表明,五个深度的最优模型分别从事五个,五个,五个,四个和四个DEM生成的变量作为输入,以及用于估计沙子和粘土内容的模型精度随着6.8的根均方误差(RMSE)而变化。 -9.7%,R-2为0.56-0.72,相对的总体精度(ROA)+/- 5%占54-81%,这比其他大部分研究更好。在模型建筑面积之外的64个土壤剖面上具有额外的独立验证,还表明,最佳模型具有9.2-12.2%,R-2的RMSE泛化的足够能力,R-2和ROA +/- 5% 37-53%。具有10米分辨率的深度特异性沙子和粘土内容图,从Yunfu的最佳模型产生的信息比CST图显示得更详细,并且可以反映DEM衍生的Topo水文变量的影响。基于所生成的地图,研究区域的土壤纹理的水平特征表现出从表土(D1)到底土(D2-5)的明显过程,D4中的粘土最大积聚,以及优势砂土表土(D1)。因此,建模方法,即具有K折交叉验证的显影ANN,可用于在华南地区U D Dults区产生深度特异性的土壤纹理图。此外,所产生的高分辨率贴图可以清楚地显示三维土壤纹理的变化。

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