Basis of Electronics Department, Faculty of Electronics, Telecommunication and Information Technology, Technical University of Cluj-Napoca, 400114 Cluj-Napoca, Romania.
Department of Polymer Composites, Institute of Chemistry "Raluca Ripan", Babes-Bolyai University, 400294 Cluj-Napoca, Romania.
Sensors (Basel). 2023 Aug 30;23(17):7517. doi: 10.3390/s23177517.
Food additives are utilized in countless food products available for sale. They enhance or obtain a specific flavor, extend the storage time, or obtain a desired texture. This paper presents an automatic classification system for five food additives based on their absorbance in the ultraviolet domain. Solutions with different concentrations were created by dissolving a measured additive mass into distilled water. The analyzed samples were either simple (one additive solution) or mixed (two additive solutions). The substances presented absorbance peaks between 190 nm and 360 nm. Each substance presents a certain number of absorbance peaks at specific wavelengths (e.g., acesulfame potassium presents an absorbance peak at 226 nm, whereas the peak associated with potassium sorbate is at 254 nm). Therefore, each additive has a distinctive spectrum that can be used for classification. The sample classification was performed using deep learning techniques. The samples were associated with numerical labels and divided into three datasets (training, validation, and testing). The best classification results were obtained using CNN (convolutional neural network) models. The classification of the 404 spectra with a CNN model with three convolutional layers obtained a mean testing accuracy of 92.38% ± 1.48%, whereas the mean validation accuracy was 93.43% ± 2.01%.
食品添加剂被广泛应用于各种销售的食品中。它们可以改善或获得特定的味道、延长储存时间或获得所需的质地。本文提出了一种基于紫外吸收的五种食品添加剂自动分类系统。通过将一定量的添加剂溶解在蒸馏水中,制备了不同浓度的溶液。分析的样品要么是简单的(一种添加剂溶液),要么是混合的(两种添加剂溶液)。所呈现的物质在 190nm 到 360nm 之间有吸收峰。每种物质在特定波长处呈现一定数量的吸收峰(例如,乙酰磺胺酸钾在 226nm 处有吸收峰,而山梨酸钾的吸收峰在 254nm 处)。因此,每种添加剂都有独特的光谱,可以用于分类。使用深度学习技术对样品进行分类。将样品与数字标签关联,并将其分为三个数据集(训练、验证和测试)。使用卷积神经网络(CNN)模型获得了最佳的分类结果。使用具有三个卷积层的 CNN 模型对 404 个光谱进行分类,测试的平均准确率为 92.38%±1.48%,验证的平均准确率为 93.43%±2.01%。