Shang Tianhao, Jia Pingping, Sun Yuan, et al. Spectral Characteristics of Soil Moisture in Salinized Soil and Model Fitting Accuracy in Northern Yinchua City, Ningxia Hui Autonomous Region[J]. Bulletin of Soiland Water Conservation, 2020, 40(4): 183-189.
DOI:
Shang Tianhao, Jia Pingping, Sun Yuan, et al. Spectral Characteristics of Soil Moisture in Salinized Soil and Model Fitting Accuracy in Northern Yinchua City, Ningxia Hui Autonomous Region[J]. Bulletin of Soiland Water Conservation, 2020, 40(4): 183-189. DOI: 10.13961/j.cnki.stbctb.2020.04.025.
Spectral Characteristics of Soil Moisture in Salinized Soil and Model Fitting Accuracy in Northern Yinchua City, Ningxia Hui Autonomous Region
介于0.943 7~0.999 5,模型的整体拟合精度很高。③在SVM模型中,基于对数一阶微分(first derivative of logarithmic reflectance,FLR)变换计算的GCD-SVM模型决定系数最高(R
C
2
和R
P
2
分别为0.987 4,0.999 5),为重度盐渍化地区SMC的最佳拟合模型。[结论
]
SVM模型为供试土壤水分拟合的最佳模型,能够准确获取研究区重度盐渍化土壤水分状况。
Abstract
[Objective] To understand the surface moisture conditions and to implement precise field irrigation
spectral characteristics of soil moisture in salinized soil and model fitting accuracy were analyzed in the Northern Yinchuan City of Ningxia Hui Autonomous Region. [Methods] With the severe salinized soil in the Northern Yinchuan City as the subject
a variety of mathematical transformations were carried out on the raw spectral reflectance of soil moisture. The stepwise regression (SR) and the grey correlation degree (GCD) were used to screen sensitive wave bands
and then the multiple linear regression (MLR)
partial least-squares regression (PLSR) and support vector machine (SVM) were used to calculate the fitting accuracy model of soil moisture content (SMC). [Results] ① The soil spectral reflectance decreased with the increase of SMC when SMC was below 26.34%
and soil spectral reflectance increased with the increase of SMC when SMC was higher than 26.34%. The change of reflectance in the NIR region were larger than that in visible region
and the spectral characteristic curves showed obvious absorption bands at 1 460 nm and 1 950 nm when continuum removed (CR) was used. ② Different transformation methods of the reflectance had different fitting accuracy about MLR
PLSR and SVM models
the overall fitting capacity of SVM model was better than MLR and PLSR models. Except for the GCD-SVM model by the reciprocal reflectance (RR) transformation
the RC2 and RP2 of the SVM models range from 0.943 7 to 0.999 5 and have high fitting accuracy. ③ In the SVM models
the GCD-SVM model based on first derivative of logarithmic reflectance (FLR) transformation had the highest determination coefficient (RC2 was 0.987 4 and RP2 was 0.999 5)
which was the best fitting model of SMC for severe salinized soil. [Conclusion] The SVM model was the best model for SMC
it could accurately predict the surface moisture in severe salinized soil in Northern Yinchuan City of Ningxia region.
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