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Building of a metal oxide gas sensor-based electronic nose to assess the freshness of sardines under cold storage

机译:建立基于金属氧化物气体传感器的电子鼻以评估冷藏条件下沙丁鱼的新鲜度

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We report on the building of a simple and reproducible electronic nose based on commercially available metal oxide gas sensors aimed at monitoring the freshness of sardines stored at 4 °C. Sample delivery is based on the dynamic headspace method and four features are extracted from the transient response of each sensor. By using an unsupervised method, namely principal component analysis (PCA), we found that sardine samples could be grouped into three categories (fresh, medium and aged), which corresponded to an increasing number of days that sardines had spent under cold storage. Then, supervised linear or non-linear pattern recognition methods (PARC) such as discriminant factor analysis (DFA) or fuzzy ARTMAP neural networks (FANN) were successfully applied to build classification models to sort sardine samples according to these three states of freshness. The success rate in classification was 96.88% for the neural network classifier. Additionally, 10 volatile species that indicated the evolution of sardines with the number of days of cold storage were identified by SPME/MS/GC.
机译:我们报告了一种基于可商购的金属氧化物气体传感器的简单且可复制的电子鼻的构建,该传感器旨在监测4°C下储存的沙丁鱼的新鲜度。样品的输送基于动态顶空方法,并且从每个传感器的瞬态响应中提取了四个特征。通过使用无监督方法,即主成分分析(PCA),我们发现沙丁鱼样品可分为三类(新鲜,中度和陈年),这对应于沙丁鱼在冷藏条件下花费的天数增加。然后,成功地将监督线性或非线性模式识别方法(PARC)(例如判别因子分析(DFA)或模糊ARTMAP神经网络(FANN))用于建立分类模型,以根据这三个新鲜度状态对沙丁鱼样品进行分类。神经网络分类器的分类成功率为96.88%。此外,通过SPME / MS / GC鉴定了10种挥发性物质,这些物质指示了沙丁鱼随着冷藏天数的变化。

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