研究目的
To estimate the leaf nitrogen content (LNC) of wheat using novel hyperspectral indices and optimize the modeling method with machine learning algorithms.
研究成果
The new hyperspectral indices FD-NDNI and FD-SRNI, combined with the RFR algorithm, provide accurate estimation of wheat LNC, outperforming existing indices and methods. This approach enables effective remote sensing mapping for precision agriculture, with implications for improving nitrogen management and crop productivity.
研究不足
The study is limited to wheat crops and specific experimental conditions; the hyperspectral indices may require validation for other crops or environments. The spectral resolution needs to be high (<30 nm) for accurate estimation, which could be a constraint in some remote sensing applications.
1:Experimental Design and Method Selection:
Field stress experiments with varying nitrogen and water application rates were conducted on wheat. Hyperspectral indices (FD-NDNI and FD-SRNI) were developed using first derivative spectra to reduce soil background interference. Inversion models were constructed and optimized using curve-fitting, LS-SVR, and RFR algorithms.
2:Sample Selection and Data Sources:
190 samples of canopy spectra and LNC were collected from wheat fields under different treatments, divided into training (142 samples) and prediction (48 samples) sets. Airborne OMIS hyperspectral imagery was also used.
3:List of Experimental Equipment and Materials:
ASD Fieldspec Pro FR spectro-radiometer for canopy reflectance spectra, laser area meter (Type C1-203) for LAI, Kjeldahl method for LNC determination, OMIS imagery from Y-5 aircraft, ENVI
4:1 software for image processing. Experimental Procedures and Operational Workflow:
Canopy reflectance spectra were measured with the ASD spectro-radiometer under clear sky conditions, leaves were sampled for LNC measurement, data were denoised using wavelet threshold denoising, spectral indices were calculated, models were built and validated, and remote sensing mapping was performed.
5:Data Analysis Methods:
Statistical analysis using R2 and RMSE for model evaluation, contour maps for wavelength selection, and machine learning algorithms (LS-SVR and RFR) for optimization.
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