研究目的
To evaluate and compare the performance of four machine learning approaches (PLSR, LS-SVM, ELM, Cubist) for predicting soil organic matter (SOM) and pH using visible-near infrared (vis-NIR) spectroscopy, with a focus on the use of genetic algorithm (GA) for band reduction.
研究成果
The ELM model with GA-reduced bands provided the best prediction accuracy for SOM and pH, with significant reduction in the number of wavelengths. Non-linear models outperformed linear models, and GA-based band reduction is feasible for efficient prediction.
研究不足
The study is limited to paddy soils in the middle-lower Yangtze Plain, and the models may not generalize to other soil types or regions. The GA selection might remove useful variables, and the performance improvements with reduced bands were minor in some cases.
1:Experimental Design and Method Selection:
The study used vis-NIR spectroscopy with multivariate calibration. Four machine learning models (PLSR, LS-SVM, ELM, Cubist) were applied to full spectral bands and GA-reduced bands. The Kennard-Stone algorithm was used for data splitting into calibration and validation sets.
2:Sample Selection and Data Sources:
523 soil samples were collected from paddy fields in the middle-lower Yangtze Plain, China. Samples were air-dried, ground, sieved, and analyzed for SOM and pH using standard laboratory methods.
3:List of Experimental Equipment and Materials:
ASD FieldSpec Pro FR spectrometer, Spectralon panel, petri dishes, electronic pH meter, and software tools including MatLab, R, and PLS_Toolbox.
4:Experimental Procedures and Operational Workflow:
Spectra were measured in the range of 400-2400 nm, transformed to absorbance, resampled to 10 nm, and pre-processed. GA was used for wavelength selection with specific parameters. Models were calibrated and validated using cross-validation and independent validation sets.
5:Data Analysis Methods:
Prediction accuracy was assessed using R2, RMSE, ME, and RPIQ. Statistical analysis was performed in R and MatLab.
独家科研数据包,助您复现前沿成果,加速创新突破
获取完整内容