Department of Soil Science, College of Agriculture, Isfahan University of Technology, Isfahan 8415683111, Iran.
Rubenstein School of Environment and Natural Resources, University of Vermont, 81 Carrigan Drive, Burlington, VT 05405, USA.
Sensors (Basel). 2022 Sep 13;22(18):6890. doi: 10.3390/s22186890.
This study was conducted to examine the capability of topographic features and remote sensing data in combination with other auxiliary environmental variables (geology and geomorphology) to predict CEC by using different machine learning models ((random forest (RF), k-nearest neighbors (kNNs), Cubist model (Cu), and support vector machines (SVMs)) in the west of Iran. Accordingly, the collection of ninety-seven soil samples was performed from the surface layer (0-20 cm), and a number of soil properties and X-ray analyses, as well as CEC, were determined in the laboratory. The X-ray analysis showed that the clay types as the main dominant factor on CEC varied from illite to smectite. The results of modeling also displayed that in the training dataset based on 10-fold cross-validation, RF was identified as the best model for predicting CEC (R = 0.86; root mean square error: RMSE = 2.76; ratio of performance to deviation: RPD = 2.67), whereas the Cu model outperformed in the validation dataset (R = 0.49; RMSE = 4.51; RPD = 1.43)). RF, the best and most accurate model, was thus used to prepare the CEC map. The results confirm higher CEC in the early Quaternary deposits along with higher soil development and enrichment with smectite and vermiculite. On the other hand, lower CEC was observed in mountainous and coarse-textured soils (silt loam and sandy loam). The important variable analysis also showed that some topographic attributes (valley depth, elevation, slope, terrain ruggedness index-TRI) and remotely sensed data (ferric oxides, normalized difference moisture index-NDMI, and salinity index) could be considered as the most imperative variables explaining the variability of CEC by the best model in the study area.
这项研究旨在检验地形特征和遥感数据与其他辅助环境变量(地质和地貌学)相结合,通过不同的机器学习模型(随机森林(RF)、k-最近邻(kNNs)、Cubist 模型(Cu)和支持向量机(SVMs))预测伊朗西部土壤阳离子交换量(CEC)的能力。因此,从地表层(0-20 厘米)采集了 97 个土壤样本,并在实验室中进行了多项土壤特性和 X 射线分析以及 CEC 测定。X 射线分析表明,粘土类型作为影响 CEC 的主要因素,从伊利石到蒙脱石不等。建模结果还显示,在基于 10 折交叉验证的训练数据集上,RF 被确定为预测 CEC 的最佳模型(R = 0.86;均方根误差:RMSE = 2.76;性能偏差比:RPD = 2.67),而 Cu 模型在验证数据集上表现更好(R = 0.49;RMSE = 4.51;RPD = 1.43))。因此,使用 RF 模型(最佳和最准确的模型)来准备 CEC 图。结果证实,早期更新世沉积物中 CEC 较高,土壤发育程度较高,富含蒙脱石和绿泥石。另一方面,在山区和粗质地土壤(粉壤土和砂壤土)中,CEC 较低。重要变量分析还表明,一些地形属性(山谷深度、海拔、坡度、地形粗糙度指数-TRI)和遥感数据(氧化铁、归一化差异水分指数-NDMI 和盐分指数)可以被认为是解释研究区最佳模型中 CEC 变异性的最关键变量。