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Establishment of Rape Leaf Moisture Content Spectral Character Models Based on RSR-PCA Method

机译:基于RSR-PCA方法的油菜叶湿度谱特征模型的建立

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It was developed that the method of spectral analysis was used to quantitatively analyze the rape moisture content. The method of region stepwise regression (RSR) was proposed to select the characteristic wavelengths for rape leaf moisture content prediction. The spectrum curve was segmented into several regions by the middle points of adjacent zeros of derivative spectrum data. Each region included a spectral absorption peak or an absorption valley. Stepwise regression was applied to each region, where the correlation coefficient and root mean square error (RMSE) was taken as the evaluation standard to select the spectral characteristic wavelength regions for the model in each region. In order to avoid wrongly choosing characteristic wavelengths or neglecting the necessary information, applied further choice to the selected characteristic wavelengths according to the former research findings of our team and regularities of molecular spectrum absorption band distribution. The method of principal component regression analysis (PCA) was used to establish the model between the moisture content and the characteristic wavelengths of rape leaf. The method could diminish runtime and overcome the effect of multiple co-linearity while enhance model prediction precision. From the spectral date of rape leaves under different water stress conditions, it was found that the rape leaf moisture content had a significant correlation with the spectral reflectance at 460nm, 510nm, 1450nm, 1650nm, 1900nm and derivative of spectral reflectance at 702nm. The correlation coefficient between the estimated value and the real value is 0.92; the root mean square error is 0.37.
机译:开发出一种光谱分析方法用于定量分析油菜水分含量。提出了区域逐步回归(RSR)以选择强奸叶湿度含量预测的特征波长。通过衍生谱数据的相邻零的中间点分段,谱曲线被分割成几个区域。每个区域包括光谱吸收峰或吸收谷。逐步回归应用于每个区域,其中相关系数和根均方误差(RMSE)作为评估标准,以选择每个区域中模型的光谱特性波长区域。为了避免错误地选择特征波长或忽略必要的信息,根据我们的团队和分子谱吸收带分布的前任研究结果应用进一步选择所选择的特征波长。主要成分回归分析(PCA)的方法用于建立水分含量与强奸叶的特征波长之间的模型。该方法可以在增强模型预测精度的同时递减运行时间并克服多个共线性的效果。从强奸叶的光谱日期,在不同的水胁迫条件下,发现强奸叶湿度含量与460nm,510nm,1450nm,1650nm,1900nm处的光谱反射率显着相关,并且在702nm处的光谱反射率的衍生物。估计值与实际值之间的相关系数为0.92;根均方误差为0.37。

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