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首页> 外文期刊>Applied Spectroscopy: Society for Applied Spectroscopy >Soil Organic Carbon Content Estimation with Laboratory-Based Visible-Near-Infrared Reflectance Spectroscopy: Feature Selection
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Soil Organic Carbon Content Estimation with Laboratory-Based Visible-Near-Infrared Reflectance Spectroscopy: Feature Selection

机译:基于实验室的可见-近红外反射光谱法的土壤有机碳含量估算:特征选择

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摘要

This study, with Yixing (Jiangsu Province, China) and Honghu (Hubei Province, China) as study areas, aimed to compare the successive projection algorithm (SPA) and the genetic algorithm (GA) in spectral feature selection for estimating soil organic carbon (SOC) contents with visible-near-infrared (Vis-NIR) reflectance spectroscopy and further to assess whether the spectral features selected from one site could be applied to another site. The SOC content and Vis-NIR reflectance spectra of soil samples were measured in the laboratory. Savitzky-Golay smoothing and log_(10)(1/R) (R is reflectance) were used for spectral preprocessing. The reflectance spectra were resampled using different spacing intervals ranging from 2 to 10 nm. Then, SPA and GA were conducted for selecting the spectral features of SOC. Partial least square regression (PLSR) with full-spectrum PLSR and the spectral features selected by SPA (SPA-PLSR) and GA (GA-PLSR) were calibrated and validated using independent datasets, respectively. Moreover, the spectral features selected from one study area were applied to another area. Study results showed that, for the two study areas, the SPA-PLSR and GA-PLSR improved estimation accuracies and reduced spectral variables compared with the full spectrum PLSR in estimating SOC contents; GA-PLSR obtained better estimation results than SPA-PLSR, whereas SPA was simpler than GA, and the spectral features selected from Yixing could be well applied to Honghu, but not the reverse. These results indicated that the SPA and GA could reduce the spectral variables and improve the performance of PLSR model and that GA performed better than SPA in estimating SOC contents. However, SPA is simpler and time-saving compared with GA in selecting the spectral features of SOC. The spectral features selected from one dataset could be applied to a target dataset when the dataset contains sufficient information adequately describing the variability of samples of the target dataset.
机译:本研究以宜兴(中国江苏省)和洪湖(中国湖北省)为研究区域,旨在比较光谱特征选择中的连续投影算法(SPA)和遗传算法(GA)(估计) (可见光-近红外)反射光谱法测定SOC含量,并进一步评估是否可以将从一个位置选择的光谱特征应用于另一个位置。在实验室中测量了土壤样品的SOC含量和Vis-NIR反射光谱。 Savitzky-Golay平滑和log_(10)(1 / R)(R为反射率)用于光谱预处理。使用范围从2到10 nm的不同间隔重新采样反射光谱。然后,进行SPA和GA选择SOC的光谱特征。使用独立数据集分别校准和验证了具有全光谱PLSR的偏最小二乘回归(PLSR)以及由SPA(SPA-PLSR)和GA(GA-PLSR)选择的光谱特征。而且,将从一个研究区域中选择的光谱特征应用于另一区域。研究结果表明,在两个研究领域中,SPA-PLSR和GA-PLSR与全谱PLSR相比,在估计SOC含量方面提高了估计精度,并减少了光谱变量。 GA-PLSR比SPA-PLSR获得更好的估计结果,而SPA比GA更简单,从宜兴选择的光谱特征可以很好地应用于洪湖,但反之则不然。这些结果表明,SPA和GA可以减少光谱变量并改善PLSR模型的性能,并且在估计SOC含量方面,GA比SPA表现更好。但是,在选择SOC的频谱特征方面,SPA与GA相比更加简单省时。当数据集中包含足以描述目标数据集样本变异性的足够信息时,可以将从一个数据集中选择的光谱特征应用于目标数据集。

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