食品科学 ›› 2022, Vol. 43 ›› Issue (14): 219-225.doi: 10.7506/spkx1002-6630-20210608-102

• 成分分析 • 上一篇    

基于衰减消去蜻蜓算法的小麦粉蛋白质近红外特征波长优选

陈勇,吴彩娥,熊智新   

  1. (南京林业大学轻工与食品学院,江苏 南京 210037)
  • 发布日期:2022-07-28
  • 基金资助:
    “十三五”国家重点研发计划重点专项(2019YFD1002300)

Selection of Near Infrared Wavelengths Using Attenuation Elimination-Binary Dragonfly Algorithm for Wheat Flour Protein Content Prediction

CHEN Yong, WU Cai’e, XIONG Zhixin   

  1. (College of Light Industry and Food Engineering, Nanjing Forestry University, Nanjing 210037, China)
  • Published:2022-07-28

摘要: 为优选小麦粉蛋白质近红外光谱特征波长,结合指数和线性衰减函数对单群蜻蜓算法(single-binary dragonfly algorithm,single-BDA)进行改进并提出一种衰减消去蜻蜓算法(attenuation elimination-BDA,AE-BDA)。分别使用single-BDA和AE-BDA筛选160 个小麦粉样本中蛋白质近红外光谱的波长,并用偏最小二乘回归法建立蛋白质定量分析模型评价波长选择效果。结果表明:与single-BDA相比,AE-BDA所选波长数量少、稳定性强,建立的模型预测效果最佳,模型最佳的预测决定系数为0.972 7,预测标准偏差为0.281 1。8 次AE-BDA实验挑选出特征波长的平均数量为15.8 个,占原始波长数的12.6%,其中有3 个波长每次均被选中。经近红外光谱解析,各入选的波长均包含在小麦粉蛋白质及背景组分的主要吸收谱带范围内。AE-BDA能够以较高的计算效率从小麦粉近红外光谱中筛选出较少的特征波长建立蛋白质分析模型,提高了模型的预测精度和稳定性,可为近红外分析建模提供一种更加简便有效的波长优选方法。

关键词: 衰减消去蜻蜓算法;蛋白质;近红外光谱;波长选择

Abstract: In order to select the optimal near infrared wavelengths for the determination of wheat flour protein, a novel attenuation elimination-binary dragonfly algorithm (AE-BDA) was proposed based on a combination and modification of single-binary dragonfly algorithm (single-BDA) with exponential and linear attenuation functions. Single-BDA and AE-BDA were separately employed to select the characteristic wavelengths for proteins from the near infrared spectra of 160 wheat flour samples. A quantitative prediction model for wheat flour protein content was established by partial least square regression (PLSR) and used to evaluate the results of wavelength selection. The results indicated that compared with single-BDA, fewer but more stable wavelengths were selected using AE-BDA and the established model had better prediction performance with a determination coefficient of 0.972 7 and a root mean square error of prediction (RMSEP) of 0.281 1. The average number of characteristic wavelengths selected from 8 experiments using AE-BDA was 15.8, accounting for 12.6% of the original wavelengths, of which 3 wavelengths were selected in each experiment. According to the analysis of the near-infrared spectra, the selected wavelengths were contained in the major absorption bands of wheat flour proteins and background components. In conclusion, AE-BDA can select the few characteristic wavelengths from near-infrared spectra of wheat flour with high computational efficiency, giving a predictive model with higher accuracy and stability. The proposed method can provide a simpler and more effective wavelength optimization strategy for near-infrared modelling.

Key words: attenuation elimination-binary dragonfly algorithm; protein; near-infrared spectroscopy; wavelength selection

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