School of Electronics Engineering, Vellore Institute of Technology, Vellore 632014, India.
Sensors (Basel). 2022 Oct 14;22(20):7789. doi: 10.3390/s22207789.
Food adulteration is the most serious problem found in the food industry as it harms people's healths and undermines their beliefs. The present study is focused on designing and developing a smart electronic nose (SE-Nose) for the qualitative and quantitative fast-track detection of food adulteration. The SE-Nose methodology is comprised of a dataset, sample slicing window protocol, normalization, pattern recognition, and output blocks. The dataset pork adulteration in beef is used to validate the SE-Nose methodology. The sample slicing window protocol extracts the early part of the signal. The sample slicing window protocol and pattern recognition models (classification and regression models) together achieved the high-performance and fast-track detection of pork adulteration in beef. With classification models, the qualitative analysis of adulteration is measured, and with regression models, the quantitative analysis of adulteration is measured. An accuracy of 99.996% and an RMSE of 0.02864 were achieved with the SVM classification and regression model. The recognition time in detecting pork adulteration in beef with SVM models is 40 s. With the proposed SE-Nose methodology, the recognition time is reduced by one-third. To validate the classification and regression models, a 10-fold cross-validation method was used.
食品掺假是食品工业中最严重的问题,因为它危害人们的健康,破坏人们的信任。本研究专注于设计和开发一种用于快速定性和定量检测食品掺假的智能电子鼻(SE-Nose)。SE-Nose 方法学由数据集、样本切片窗口协议、归一化、模式识别和输出块组成。数据集为牛肉中的猪肉掺假,用于验证 SE-Nose 方法学。样本切片窗口协议提取信号的早期部分。样本切片窗口协议和模式识别模型(分类和回归模型)共同实现了牛肉中猪肉掺假的高性能和快速检测。使用分类模型进行掺假的定性分析,使用回归模型进行掺假的定量分析。SVM 分类和回归模型的准确率为 99.996%,RMSE 为 0.02864。使用 SVM 模型检测牛肉中的猪肉掺假的识别时间为 40 秒。使用所提出的 SE-Nose 方法学,识别时间减少了三分之一。为了验证分类和回归模型,使用了 10 倍交叉验证方法。