Mahmoudabadi Ebrahim, Karimi Alireza, Haghnia Gholam Hosain, Sepehr Adel
Department of Soil Science, Faculty of Agriculture, Ferdowsi University of Mashhad, Mashhad, Iran.
Department of Desert and Arid Zones Management, Ferdowsi University of Mashhad, Mashhad, Iran.
Environ Monit Assess. 2017 Sep 11;189(10):500. doi: 10.1007/s10661-017-6197-7.
Digital soil mapping has been introduced as a viable alternative to the traditional mapping methods due to being fast and cost-effective. The objective of the present study was to investigate the capability of the vegetation features and spectral indices as auxiliary variables in digital soil mapping models to predict soil properties. A region with an area of 1225 ha located in Bajgiran rangelands, Khorasan Razavi province, northeastern Iran, was chosen. A total of 137 sampling sites, each containing 3-5 plots with 10-m interval distance along a transect established based on randomized-systematic method, were investigated. In each plot, plant species names and numbers as well as vegetation cover percentage (VCP) were recorded, and finally one composite soil sample was taken from each transect at each site (137 soil samples in total). Terrain attributes were derived from a digital elevation model, different bands and spectral indices were obtained from the Landsat7 ETM+ images, and vegetation features were calculated in the plots, all of which were used as auxiliary variables to predict soil properties using artificial neural network, gene expression programming, and multivariate linear regression models. According to R RMSE and MBE values, artificial neutral network was obtained as the most accurate soil properties prediction function used in scorpan model. Vegetation features and indices were more effective than remotely sensed data and terrain attributes in predicting soil properties including calcium carbonate equivalent, clay, bulk density, total nitrogen, carbon, sand, silt, and saturated moisture capacity. It was also shown that vegetation indices including NDVI, SAVI, MSAVI, SARVI, RDVI, and DVI were more effective in estimating the majority of soil properties compared to separate bands and even some soil spectral indices.
由于数字土壤制图快速且经济高效,已被引入作为传统制图方法的可行替代方案。本研究的目的是调查植被特征和光谱指数作为数字土壤制图模型中的辅助变量来预测土壤性质的能力。选择了伊朗东北部霍拉桑拉扎维省巴吉兰牧场一个面积为1225公顷的区域。总共调查了137个采样点,每个采样点包含3 - 5个样地,沿着基于随机系统方法建立的样带,样地间隔距离为10米。在每个样地中,记录植物物种名称和数量以及植被覆盖百分比(VCP),最后从每个采样点的每个样带采集一个复合土壤样本(总共137个土壤样本)。地形属性从数字高程模型中导出,不同波段和光谱指数从Landsat7 ETM +图像中获取,植被特征在样地中计算,所有这些都用作辅助变量,使用人工神经网络、基因表达式编程和多元线性回归模型来预测土壤性质。根据R、RMSE和MBE值,人工神经网络被确定为scorpan模型中最准确的土壤性质预测函数。在预测包括碳酸钙当量、粘土、容重、总氮、碳、砂、粉砂和饱和持水量等土壤性质方面,植被特征和指数比遥感数据和地形属性更有效。研究还表明,与单独的波段甚至一些土壤光谱指数相比,包括归一化差异植被指数(NDVI)、土壤调整植被指数(SAVI)、修正型土壤调整植被指数(MSAVI)、抗大气植被指数(SARVI)、比值植被指数(RDVI)和差值植被指数(DVI)在内的植被指数在估计大多数土壤性质方面更有效。