Wavelength Selection for Prediction of Polyphenol Content in Inward Tea Leaves Using NIR

Ashmita De, Somdeb Chanda, B. Tudu, R. Bandyopadhyay, A. K. Hazarika, S. Sabhapondit, B. D. Baruah, P. Tamuly, Nabarun Bhattachryya
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引用次数: 3

Abstract

In this work total polyphenol contents in tea leaves have been estimated by the near infrared reflectance (NIR) spectroscopy and partial least squares (PLS) algorithm. During sample acquisition the number of variable is quite high for each spectra and whole range of spectra may not play an important role for building the calibration model of PLS algorithm. Selection of proper region for a particular application is an important task. Here, optimum wavelength was determined by genetic algorithm (GA) and particle swarm optimization (PSO). PLS algorithm was used to produce the fitness curve of PSO and GA. Training and testing was done by leave –one-sample out cross-validation during the model calibration. Testing and training was done using specific windows of wavelength. The optimum range was determined to be from 1027.75 nm to 1104.75 nm. The RMSECV value for the optimum range was observed to be 1.05.
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近红外光谱预测茶叶中多酚含量的波长选择
本文采用近红外光谱法和偏最小二乘法对茶叶中总多酚含量进行了测定。在样品采集过程中,每个光谱的变量数量相当高,整个光谱范围可能对PLS算法的校准模型的建立不起重要作用。为特定应用选择合适的区域是一项重要的任务。本文采用遗传算法(GA)和粒子群算法(PSO)确定最佳波长。采用PLS算法生成PSO和GA的适应度曲线。在模型校准过程中,通过留一样本交叉验证进行训练和测试。测试和训练是使用特定的波长窗口完成的。确定最佳波长范围为1027.75 ~ 1104.75 nm。最佳处理范围的RMSECV值为1.05。
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