Mosleh Zohreh, Salehi Mohammad Hassan, Jafari Azam, Borujeni Isa Esfandiarpoor, Mehnatkesh Abdolmohammad
Soil Science Department, College of Agriculture, Shahrekord University, Shahrekord, Iran.
Soil Science Department, College of Agriculture, Shahid Bahonar University of Kerman, Kerman, Iran.
Environ Monit Assess. 2016 Mar;188(3):195. doi: 10.1007/s10661-016-5204-8. Epub 2016 Feb 26.
This study investigates the ability of different digital soil mapping (DSM) approaches to predict some of physical and chemical topsoil properties in the Shahrekord plain of Chaharmahal-Va-Bakhtiari province, Iran. According to a semi-detailed soil survey, 120 soil samples were collected from 0 to 30 cm depth with approximate distance of 750 m. Particle size distribution, coarse fragments (CFs), electrical conductivity (EC), pH, organic carbon (OC), and calcium carbonate equivalent (CCE) were determined. Four machine learning techniques, namely, artificial neural networks (ANNs), boosted regression tree (BRT), generalized linear model (GLM), and multiple linear regression (MLR), were used to identify the relationship between soil properties and auxiliary information (terrain attributes, remote sensing indices, geology map, existing soil map, and geomorphology map). Root-mean-square error (RMSE) and mean error (ME) were considered to determine the performance of the models. Among the studied models, GLM showed the highest performance to predict pH, EC, clay, silt, sand, and CCE, whereas the best model is not necessarily able to make accurate estimation. According to RMSE%, DSM has a good efficiency to predict soil properties with low and moderate variabilities. Terrain attributes were the main predictors among different studied auxiliary information. The accuracy of the estimations with more observations is recommended to give a better understanding about the performance of DSM approach over low-relief areas.
本研究调查了不同数字土壤制图(DSM)方法预测伊朗恰哈马哈勒-巴赫蒂亚里省沙赫雷克德平原一些表层土壤物理和化学性质的能力。根据一次半详细土壤调查,从0至30厘米深度采集了120个土壤样本,采样点间距约750米。测定了粒度分布、粗颗粒(CFs)、电导率(EC)、pH值、有机碳(OC)和碳酸钙当量(CCE)。使用了四种机器学习技术,即人工神经网络(ANNs)、提升回归树(BRT)、广义线性模型(GLM)和多元线性回归(MLR),以确定土壤性质与辅助信息(地形属性、遥感指数、地质图、现有土壤图和地貌图)之间的关系。采用均方根误差(RMSE)和平均误差(ME)来确定模型的性能。在所研究的模型中,GLM在预测pH值、EC、粘土、粉砂、砂和CCE方面表现出最高性能,然而最佳模型不一定能做出准确估计。根据RMSE%,DSM在预测低变异性和中等变异性土壤性质方面具有良好效率。在不同的研究辅助信息中,地形属性是主要预测因子。建议通过更多观测来提高估计精度,以便更好地了解DSM方法在低起伏地区的性能。