Robotics Laboratory, Universitat de Lleida, Jaume II, 69, 25001 Lleida, Spain.
Sensors (Basel). 2022 Jul 14;22(14):5262. doi: 10.3390/s22145262.
The use of electronic noses (eNoses) as analysis tools are growing in popularity; however, the lack of a comprehensive, visual representation of how the different classes are organized and distributed largely complicates the interpretation of the classification results, thus reducing their practicality. The new contributions of this paper are the assessment of the multivariate classification performance of a custom, low-cost eNose composed of 16 single-type (identical) MOX gas sensors for the classification of three volatiles, along with a proposal to improve the visual interpretation of the classification results by means of generating a detailed 2D class-map representation based on the inverse of the orthogonal linear transformation obtained from a PCA and LDA analysis. The results showed that this single-type eNose implementation was able to perform multivariate classification, while the class-map visualization summarized the learned features and how these features may affect the performance of the classification, simplifying the interpretation and understanding of the eNose results.
电子鼻(eNose)作为分析工具的应用越来越普及;然而,缺乏对不同类别如何组织和分布的全面、直观的表示,在很大程度上增加了分类结果的解释难度,从而降低了其实用性。本文的新贡献在于评估了由 16 个单类型(相同)MOX 气体传感器组成的定制低成本 eNose 的多变量分类性能,用于对三种挥发性物质进行分类,并提出了一种通过生成基于 PCA 和 LDA 分析得到的正交线性变换的逆的详细 2D 类图表示来改进分类结果的可视解释的方法。结果表明,这种单类型 eNose 实现能够进行多变量分类,而类图可视化则总结了学习到的特征以及这些特征如何影响分类性能,从而简化了对 eNose 结果的解释和理解。