主成分分析
化学计量学
偏最小二乘回归
残余物
极限学习机
生物系统
交叉验证
蒙特卡罗方法
稳健性(进化)
特征选择
近红外光谱
数学
计算机科学
人工智能
统计
算法
化学
光学
机器学习
物理
人工神经网络
生物化学
生物
基因
作者
Lili Xu,Jinming Liu,Chunqi Wang,Zhijiang Li,Dongjie Zhang
出处
期刊:Applied Optics
[The Optical Society]
日期:2023-04-03
卷期号:62 (11): 2756-2756
被引量:4
摘要
To evaluate corn quality quickly, the feasibility of near-infrared spectroscopy (NIRS) coupled with chemometrics was analyzed to detect the moisture, oil, protein, and starch content in corn. A backward interval partial least squares (BiPLS)-principal component analysis (PCA)-extreme learning machine (ELM) quantitative analysis model was constructed based on BiPLS in conjunction with PCA and the ELM. The selection of characteristic spectral intervals was accomplished by BiPLS. The best principal components were determined by the prediction residual error sum of squares of Monte Carlo cross validation. In addition, a genetic simulated annealing algorithm was utilized to optimize the parameters of the ELM regression model. The established regression models for moisture, oil, protein, and starch can meet the demand for corn component detection with the prediction determination coefficients of 0.996, 0.990, 0.974, and 0.976; the prediction root means square errors of 0.018, 0.016, 0.067, and 0.109; and the residual prediction deviations of 15.704, 9.741, 6.330, and 6.236, respectively. The results show that the NIRS rapid detection model has higher robustness and accuracy based on the selection of characteristic spectral intervals in conjunction with spectral data dimensionality reduction and nonlinear modeling and can be used as an alternative strategy to detect multiple components in corn rapidly.
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