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Predicting water content using Gaussian model on soil spectra

机译:利用高斯模型在土壤光谱上预测含水量

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This paper presents an approach to estimating soil moisture content through fitting an inverted Gaussian function to the continuum in soil spectra. The soil moisture Gaussian model (SMGM) estimates the water content by the declining reflectance in the near infrared (NIR) and shortwave infrared (SWIR) regions, 1.2-2.5 μm, due to the spreading of the fundamental water absorption at 2.8 μm. Convex hull boundary points were used to isolate the spectral continuum and to fit the inverted Gaussian function. The function extrapolates the continuum to the fundamental water absorption beyond the wavelength limits of common laboratory, field, and airborne instruments. Of the derived functional parameters, both amplitude and area on the shortwave side of the inverted Gaussian curve were highly correlated with soil water content. In this study, laboratory spectra, from 0.4 to 2.5 μm, were measured at sequential moisture levels in soil samples collected in Castilla-La Mancha, Spain and in California, USA. The Gaussian area was determined to be the best indicator of gravimetric water content with the initial modeling of 2592 spectra. The SMGM was validated with a separate set of 849 spectra. The model performance significantly improved for water contents below a critical level of 0.32 g water/g soil. Within this restricted range, the SMGM predicted water contents for all soils with a maximum of 0.027 RMSE for 1901 modeled spectra and 0.026 for 602 validation spectra. The water content estimates were improved slightly by stratifying the model and validation sets by the two locations, reducing the RMSE to 0.023 in Spain and 0.025 in California. Further stratifying the model spectra by landform and soil sodicity improved some predictions substantially, but less consistently. Stratifying the samples locally demonstrated that a priori knowledge of soil surfaces by landforms should be part of an image calibration strategy. The SMGM provides practical water content estimates and has a potential use in correcting the effects of soil moisture in hyperspectral images.
机译:本文提出了一种通过将反高斯函数拟合到土壤光谱中的连续体来估算土壤含水量的方法。土壤水分高斯模型(SMGM)通过在1.2-2.5μm的近红外(NIR)和短波红外(SWIR)区域中反射率的下降来估算水分含量,这是因为基本吸水率在2.8μm处扩展。凸包边界点用于隔离频谱连续体并拟合反演的高斯函数。该功能将连续性推断为基本吸水量超出了普通实验室,野外和机载仪器的波长限制。在导出的功能参数中,反演的高斯曲线的短波侧的振幅和面积都与土壤含水量高度相关。在这项研究中,在西班牙卡斯蒂利亚-拉曼恰和美国加利福尼亚州采集的土壤样品中,在连续水分含量下测量了0.4至2.5μm的实验室光谱。通过对2592个光谱进行初始建模,高斯区域被确定为重量水含量的最佳指示。 SMGM已通过一套单独的849光谱进行了验证。对于含水量低于0.32 g水/ g土壤的临界水平,模型性能有了显着改善。在此限制范围内,SMGM可以预测所有土壤的含水量,其中1901年建模光谱的最大值为0.027 RMSE,602验证光谱的最大值为0.026。通过对两个地点的模型和验证集进行分层,略微改善了含水量估计值,将西班牙的RMSE降至0.023,加利福尼亚的0.025。通过地形和土壤碱度进一步对模型光谱进行分层可以显着改善一些预测,但不一致。对样品进行局部分层表明,通过地形对土壤表面的先验知识应该是图像校准策略的一部分。 SMGM可提供实用的含水量估算值,并有可能用于校正高光谱图像中土壤水分的影响。

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