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Prediction of Soil Salinity Using Remote Sensing Tools and Linear Regression Model

机译:基于遥感和线性回归模型的土壤盐分预测

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Soil salinity is one of the most damaging environmental problems worldwide, especially in arid and semi-arid regions. Multispectral data Sentinel_2 are used to study saline soils in southern Tunisia. 34 soil samples were collected for ground truth data in the investigated region. A moderate correlation was found between electrical conductivity and the spectral indices from SWIR. Different spectral indices were used from original bands of Sentinel_2 data. Statistical correlation between ground measurements of Electrical Conductivity (EC), spectral indices and Sentinel_2 original bands showed that SWIR bands (b11 and b12) and the salinity index SI have the highest correlation with EC. Based on these results and combining these remotely sensed variables into a regression analysis model yielded a coefficient of determination R2 = 0.48 and a n RMSE = 4.8 dS/m.
机译:土壤盐分是全世界最具破坏力的环境问题之一,尤其是在干旱和半干旱地区。多光谱数据Sentinel_2用于研究突尼斯南部的盐渍土壤。收集了34个土壤样本以获取调查区域的地面真实数据。发现电导率和SWIR的光谱指数之间存在适度的相关性。从Sentinel_2数据的原始波段使用了不同的光谱指数。地面电导率(EC),光谱指数和Sentinel_2原始波段之间的统计相关性表明,SWIR波段(b11和b12)和盐度指数SI与EC的相关性最高。根据这些结果,并将这些遥感变量组合到回归分析模型中,得出确定系数R2 = 0.48和n RMSE = 4.8 dS / m。

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