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Quantitative Estimation of Soil Salinization in an Arid Region of the Keriya Oasis Based on Multidimensional Modeling

机译:基于多维建模的Keriya Oasis干旱区土壤盐渍化定量估算

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Soil salinity is one of the major factors causing land degradation and desertification on earth, especially its important damage to farming activities and land-use management in arid and semiarid regions. The salt-affected land is predominant in the Keriya River area of Northwestern China. Then, there is an urgent need for rapid, accurate, and economical monitoring in the salt-affected land. In this study, we used the electrical conductivity (EC) of 353 ground-truth measurements and predictive capability parameters of WorldView-2 (WV-2), such as satellite band reflectance and newly optimum spectral indices (OSI) based on two dimensional and three-dimensional data. The features of spectral bands were extracted and tested, and different new OSI and soil salinity indices using reflectance of wavebands were built, in which spectral data was pre-processed (based on First Derivative (R-FD), Second Derivative (R-SD), Square data (R-SQ), Reciprocal inverse (1/R), and Reciprocal First Derivative (1/R-FD)), utilizing the partial least-squares regression (PLSR) method to construct estimation models and mapping the regional soil-affected land. The results of this study are the following: (a) the new OSI had a higher relevance to EC than one-dimensional data, and (b) the cross-validation of established PLSR models indicated that the beta-PLSR model based on the optimal three-band index with different process algorithm performed the best result with R-V(2) = 0.79, Root Mean Square Errors (RMSEV) = 1.51 dSm(-1), and Relative Percent Deviation (RPD) = 2.01 and was used to map the soil salinity over the study site. The results of the study will be helpful for the study of salt-affected land monitoring and evaluation in similar environmental conditions.
机译:土壤盐度是造成地球土地退化和荒漠化的主要因素之一,特别是在干旱和半干旱地区对农业活动和土地利用管理的重要损害。受盐影响的土地是中国西北部的凯瑞亚河区的主要原因。然后,迫切需要在受影响的土地中快速,准确,经济的监测。在这项研究中,我们使用了基于二维的卫星带反射率和新的最佳光谱指数(OSI)的353个地面测量和预测性能力参数的电导率(EC),例如卫星带反射率和新的最佳光谱索引(OSI)三维数据。提取和测试光谱带的特征,建立了使用波带反射的不同新的OSI和土壤盐度指数,其中预处理光谱数据(基于第一衍生物(R-FD),第二导数(R-SD) ),方形数据(R-SQ),互易逆(1 / R)和互敏第一导数(1 / R-FD)),利用局部最小二乘回归(PLSR)方法来构建估计模型并映射区域土壤受影响的土地。本研究的结果如下:(a)新的OSI与EC的相关性比一维数据更高,并且(B)已建立的PLSR模型的交叉验证表明了基于最佳的β-PLSR模型具有不同处理算法的三频段索引使用RV(2)= 0.79,根均方误差(RMSEV)= 1.51 DSM(-1),以及相对百分比(RPD)= 2.01并用于映射研究现场的土壤盐度。该研究的结果将有助于在类似环境条件下研究盐影响的土地监测和评估。

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