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ESTIMATION OF LEGUME CONTENT IN GRASS-LEGUME MIXTURES FROM HYPERSPECTRAL MEASURMENT

机译:高光谱测量草豆类混合物中豆类含量的估计

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Legume content in grass-legume mixtures is a key parameter for deciding the forage quality and the amount of fertilizer application to the pasture due to nitrogen (N) fixation. This study investigated the ability of field hyperspectral radiometer (400-2350 nm) with genetic algorithm partial least squares (GA-PLS) regression for estimating legume content in a mixed sown pasture of Hokkaido, Japan. Canopy reflectance data and plant samples were obtained from 50 selected sites in two seasons (n = 100); spring (May) and summer (July) 2007. The predictive accuracy of GA-PLS was compared with that of multiple linear regression (MLR), and standard full-spectrum PLS (FS-PLS) for spring, summer, and combined datasets. The predictive ability of the model was assessed by the coefficient of determination (R~2) and the root mean squared error of cross validation (RMSECV). Overall, the highest R~2 and the lowest RMSECV were obtained in the GA-PLS models for all datasets (R~2 = 0.62-0.86, RMSECV = 4.10-7.20%). In MLR, selected wavebands in the final models were blue (400-456 nm) and red bands (659-670 nm) in visible wavelength, red-edge region (704-724 nm), near infrared regions (813, 937, and 1121 nm), and shortwave infrared regions (2303-2344 nm) that are mainly linked to known biochemical components such as chlorophyll, nitrogen, lignin and cellulose. These results suggest that legume content in grass-legume mixtures can be predicted from field hyperspectral measurements, and that the predictive accuracy of the model can be improved by waveband selection using the GA-PLS.
机译:基于草豆类混合物的豆类内容是决定由于氮气(n)固定而定位饲料质量和施肥量的饲料施用量的关键参数。本研究调查了遗传算法遗传算法的现场高光谱辐射计(400-2350nm)的能力,用于估计日本北海道的混合播种牧场中的豆类含量的植物含量的最小二乘(GA-PLS)回归。在两个季节(n = 100)中,从50个选定的位点获得树冠反射数据和植物样品;春季(5月)和夏季(7月)2007。将GA-PLS的预测精度与多元线性回归(MLR)的预测精度进行比较,以及弹簧,夏季和组合数据集的标准全频谱PLS(FS-PL)。通过判定系数(R〜2)和交叉验证的根部平均平方误差来评估模型的预测能力(RMSECV)。总的来说,在所有数据集的GA-PLS模型中获得最高的R〜2和最低RMSECV(R〜2 = 0.62-0.86,RMSECV = 4.10-7.20%)。在MLR中,最终模型中的选定波段是蓝色(400-456nm)和红色带(659-670nm),可见波长,红边区域(704-724nm),近红外区域(813,937和1121nm)和短波红外区域(2303-2344nm)主要与已知的生化成分如叶绿素,氮,木质素和纤维素相关联。这些结果表明,可以从场高光谱测量中预测基层混合物中的豆科含量,并且可以通过使用GA-PLS选择模型的预测精度来提高模型。

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