Nie Zhi-Dong, Han Jian-Guo, Yu Zhu, Zhang Lu-Da
Institute of Grassland Science, China Agricultural University, Beijing 100094, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2008 Feb;28(2):317-20.
Leaf concentration in alfalfa is an important factor affecting the nutritive value, forage intake and digestibility. Estimates of leaf concentrations commonly used currently involve a labor intensive process of hand separating leaf and stem fractions. In the present study, a total of 41 artificial alfalfa samples were mixed with different leaf concentrations ranging from 15% to 55%. The object was to develop 3 calibrations for predicting alfalfa leaf concentrations using 15, 25 and 35 calibrated samples by near infrared reflectance spectroscopy. The root mean square error of prediction(RMSEP)was 1.02, 1.97 and 0.51, respectively. External validation had a coefficient of determination (r2) ranging from 0.79 8 to 0.998 9. The ratio of performance to standard deviation (RPD) varied from 2.85 to 25.93. The results showed that 15 samples could develop accurate NIRS model of alfalfa leaf concentrations; the calibration equations got better accuracy with the increase in calibrated samples numbers from 15 to 35.
苜蓿中的叶片含量是影响营养价值、采食量和消化率的一个重要因素。目前常用的叶片含量估计方法涉及人工分离叶片和茎部组分的劳动密集型过程。在本研究中,总共41个苜蓿人工样本被混合,叶片含量从15%到55%不等。目的是通过近红外反射光谱法,使用15、25和35个校准样本建立3种预测苜蓿叶片含量的校准模型。预测均方根误差(RMSEP)分别为1.02、1.97和0.51。外部验证的决定系数(r2)在0.798至0.9989之间。性能与标准差之比(RPD)在2.85至25.93之间变化。结果表明,15个样本可以建立准确的苜蓿叶片含量近红外光谱模型;随着校准样本数量从15个增加到35个,校准方程的准确性提高。