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Agricultural Soil Alkalinity and Salinity Modeling in the Cropping Season in a Spectral Endmember Space of TM in Temperate Drylands, Minqin, China

机译:民勤温带干旱地区TM光谱末段空间中耕作季节的农业土壤碱度和盐度模拟

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This paper presents the potential of the four-image spectral endmember (EM) space comprising sand (SL), green vegetation (GV), saline land (SA), and dark materials (DA), unmixed from Landsat TM/ETM+ to map dryland agricultural soil alkalinity and salinity (i.e., soil alkalinity (pH) and soil electrical conductivity (EC)) in the shallow root zone (0–20 cm) using partial least squares regression (PLSR) and an artificial neural network (ANN). The results reveal that SA, SL, and GV fractions at the subpixel level, and land surface temperature (LST) are necessary independent variables for soil EC modeling in Minqin Oasis, a temperate-arid system in China. The R 2 (coefficient of determination) of the optimized parameters with the ANN model was 0.79, the root mean squared error (RMSE) was 0.13, and the ratio of prediction to deviation (RPD) was 1.95 when evaluated against all sampled data. In addition to the aforementioned four variables, the DA fraction and the recent historical SA fraction (SAH) in the spring dry season in 2008 were also helpful for soil pH modeling. The model performance is R 2 = 0.76, RMSE = 0.24, and RPD = 1.96 for all sampled data. In summary, the stable EMs and LST space of TM imagery with an ANN approach can generate near-real-time regional soil alkalinity and salinity estimations in the cropping period. This is the case even in the critical agronomic range (EC of 0–20 dS·m ?1 and pH of 7–9) at which researchers and policy-makers require near-real-time crop management information.
机译:本文介绍了由Landsat TM / ETM +混合以绘制旱地的四图像光谱最终成员(EM)空间的潜力,该空间包括沙子(SL),绿色植被(GV),盐碱地(SA)和深色物质(DA)利用偏最小二乘回归(PLSR)和人工神经网络(ANN)在浅根区(0-20 cm)内的农业土壤碱度和盐度(即土壤碱度(pH)和土壤电导率(EC))。结果表明,在中国温带干旱地区的民勤绿洲,亚像素水平的SA,SL和GV分数以及地表温度(LST)是土壤EC建模必需的独立变量。当对所有采样数据进行评估时,ANN模型的优化参数的R 2(确定系数)为0.79,均方根误差(RMSE)为0.13,预测与偏差之比(RPD)为1.95。除了上述四个变量外,2008年春季干旱季节的DA分数和最近的历史SA分数(SAH)也有助于土壤pH建模。对于所有采样数据,模型性能为R 2 = 0.76,RMSE = 0.24和RPD = 1.96。综上所述,采用人工神经网络方法的TM影像稳定的EMs和LST空间可以在种植期产生近实时的区域土壤碱度和盐度估算值。即使在临界农艺范围内(EC为0-20 dS·m?1,pH为7-9),研究人员和政策制定者也需要近乎实时的作物管理信息。

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