分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model

为实现对食用植物油的快速无损识别,采用衰减全反射-傅里叶变换红外光谱获取10种食用植物油样本的340份谱图数据,经过预处理消除光谱数据中的噪声与背景干扰,通过主成分分析降维特征提取3个主成分,在此基础上构建KNN模型与基于SSA算法优化的BP神经网络模型,对植物油种类进行识别并对识别效果进行比较。结果表明:KNN模型的识别准确率可达97.7%;基于SSA算法优化的BP神经网络分类效果最佳,识别准确率达100%,而传统BP神经网络模型识别准确率仅为87.6%。综上,建立的分子光谱技术结合深度学习模型识别食用植物油种类的新方法,实现了对食用植物油种类的准确识别。To achieve rapid a...

Full description

Bibliographic Details
Main Author: 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen
Format: Article
Language:English
Published: 中粮工科(西安)国际工程有限公司 2023-10-01
Series:Zhongguo youzhi
Subjects:
Online Access:http://tg.chinaoils.cn/zgyz/ch/reader/create_pdf.aspx?file_no=20231019&flag=1
_version_ 1797655459715350528
author 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen
author_facet 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen
author_sort 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen
collection DOAJ
description 为实现对食用植物油的快速无损识别,采用衰减全反射-傅里叶变换红外光谱获取10种食用植物油样本的340份谱图数据,经过预处理消除光谱数据中的噪声与背景干扰,通过主成分分析降维特征提取3个主成分,在此基础上构建KNN模型与基于SSA算法优化的BP神经网络模型,对植物油种类进行识别并对识别效果进行比较。结果表明:KNN模型的识别准确率可达97.7%;基于SSA算法优化的BP神经网络分类效果最佳,识别准确率达100%,而传统BP神经网络模型识别准确率仅为87.6%。综上,建立的分子光谱技术结合深度学习模型识别食用植物油种类的新方法,实现了对食用植物油种类的准确识别。To achieve rapid and non-destructive identification of edible vegetable oil, attenuated total reflection-Fourier transform infrared spectroscopy was used to obtain 340 spectral data of 10 edible vegetable oil samples. After preprocessing, the noise and background interference in the spectral data were eliminated. Three principal components were extracted by principal component analysis, and base on which, the KNN model and the BP neural network model optimized based on the SSA algorithm were constructed for identification and their effects were compared. The results showed that the recognition rate of the KNN model could reach 97.7%. The BP neural network model optimized based on the SSA algorithm, with a recognition rate of 100%, had the best classification effect, while the recognition rate of traditional BP neural network model was only 87.6%. In summary, a new method for identifying edible vegetable oil types using molecular spectroscopy technology combined with deep learning models can realize the accurate identification of edible vegetable oil types.
first_indexed 2024-03-11T17:14:44Z
format Article
id doaj.art-a0d9a7e920d748ab8c69c39d360a4649
institution Directory Open Access Journal
issn 1003-7969
language English
last_indexed 2024-03-11T17:14:44Z
publishDate 2023-10-01
publisher 中粮工科(西安)国际工程有限公司
record_format Article
series Zhongguo youzhi
spelling doaj.art-a0d9a7e920d748ab8c69c39d360a46492023-10-20T03:29:31Zeng中粮工科(西安)国际工程有限公司Zhongguo youzhi1003-79692023-10-01481011612110.19902/j.cnki.zgyz.1003-7969.220460分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen0(中国人民公安大学 侦查学院,北京 102600) (School of Investigation, People′s Public Security University of China, Beijing 102600, China) 为实现对食用植物油的快速无损识别,采用衰减全反射-傅里叶变换红外光谱获取10种食用植物油样本的340份谱图数据,经过预处理消除光谱数据中的噪声与背景干扰,通过主成分分析降维特征提取3个主成分,在此基础上构建KNN模型与基于SSA算法优化的BP神经网络模型,对植物油种类进行识别并对识别效果进行比较。结果表明:KNN模型的识别准确率可达97.7%;基于SSA算法优化的BP神经网络分类效果最佳,识别准确率达100%,而传统BP神经网络模型识别准确率仅为87.6%。综上,建立的分子光谱技术结合深度学习模型识别食用植物油种类的新方法,实现了对食用植物油种类的准确识别。To achieve rapid and non-destructive identification of edible vegetable oil, attenuated total reflection-Fourier transform infrared spectroscopy was used to obtain 340 spectral data of 10 edible vegetable oil samples. After preprocessing, the noise and background interference in the spectral data were eliminated. Three principal components were extracted by principal component analysis, and base on which, the KNN model and the BP neural network model optimized based on the SSA algorithm were constructed for identification and their effects were compared. The results showed that the recognition rate of the KNN model could reach 97.7%. The BP neural network model optimized based on the SSA algorithm, with a recognition rate of 100%, had the best classification effect, while the recognition rate of traditional BP neural network model was only 87.6%. In summary, a new method for identifying edible vegetable oil types using molecular spectroscopy technology combined with deep learning models can realize the accurate identification of edible vegetable oil types.http://tg.chinaoils.cn/zgyz/ch/reader/create_pdf.aspx?file_no=20231019&flag=1食用植物油;分子光谱;深度学习;种类识别edible vegetable oil; molecular spectroscopy; deep learning; type recognition
spellingShingle 汤睿阳,王继芬 TANG Ruiyang, WANG Jifen
分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
Zhongguo youzhi
食用植物油;分子光谱;深度学习;种类识别
edible vegetable oil; molecular spectroscopy; deep learning; type recognition
title 分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
title_full 分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
title_fullStr 分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
title_full_unstemmed 分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
title_short 分子光谱技术结合深度学习模型识别食用植物油种类Identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
title_sort 分子光谱技术结合深度学习模型识别食用植物油种类identifying types of edible vegetable oil by molecular spectroscopic technology combined with deep learning model
topic 食用植物油;分子光谱;深度学习;种类识别
edible vegetable oil; molecular spectroscopy; deep learning; type recognition
url http://tg.chinaoils.cn/zgyz/ch/reader/create_pdf.aspx?file_no=20231019&flag=1
work_keys_str_mv AT tāngruìyángwángjìfēntangruiyangwangjifen fēnziguāngpǔjìshùjiéhéshēndùxuéxímóxíngshíbiéshíyòngzhíwùyóuzhǒnglèiidentifyingtypesofediblevegetableoilbymolecularspectroscopictechnologycombinedwithdeeplearningmodel