Ji Zhongpeng, He Zhiping, Gui Yuhua, Li Jinning, Tan Yongjian, Wu Bing, Xu Rui, Wang Jianyu
Key Laboratory of Space Active Opto-Electronics Technology, Shanghai Institute of Technical Physics of the Chinese Academy of Sciences, Shanghai 200083, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Materials (Basel). 2022 Apr 12;15(8):2826. doi: 10.3390/ma15082826.
Near-infrared spectroscopy has been widely applied in various fields such as food analysis and agricultural testing. However, the conventional method of scanning the full spectrum of the sample and then invoking the model to analyze and predict results has a large amount of collected data, redundant information, slow acquisition speed, and high model complexity. This paper proposes a feature wavelength selection approach based on acousto-optical tunable filter (AOTF) spectroscopy and automatic machine learning (AutoML). Based on the programmable selection of sub nm center wavelengths achieved by the AOTF, it is capable of rapid acquisition of combinations of feature wavelengths of samples selected using AutoML algorithms, enabling the rapid output of target substance detection results in the field. The experimental setup was designed and application validation experiments were carried out to verify that the method could significantly reduce the number of NIR sampling points, increase the sampling speed, and improve the accuracy and predictability of NIR data models while simplifying the modelling process and broadening the application scenarios.
近红外光谱技术已广泛应用于食品分析和农业检测等各个领域。然而,传统方法是先扫描样品的全光谱,然后调用模型来分析和预测结果,这种方法收集的数据量很大,存在冗余信息,采集速度慢,且模型复杂度高。本文提出了一种基于声光可调滤光器(AOTF)光谱技术和自动机器学习(AutoML)的特征波长选择方法。基于AOTF实现的亚纳米中心波长的可编程选择,它能够快速获取使用AutoML算法选择的样品特征波长组合,从而能够在现场快速输出目标物质检测结果。设计了实验装置并进行了应用验证实验,以验证该方法能够显著减少近红外采样点数量,提高采样速度,提高近红外数据模型的准确性和可预测性,同时简化建模过程并拓宽应用场景。