Meier Maycon, Kittle Joshua D, Yee Xin C
Mechanical and Aerospace Engineering, University of Colorado Colorado Springs Colorado Springs USA
Department of Chemistry, U.S. Airforce Academy Colorado Springs USA.
RSC Adv. 2022 Mar 28;12(16):9579-9586. doi: 10.1039/d1ra08774f. eCollection 2022 Mar 25.
Detecting and identifying vapors at low concentrations is important for air quality assessment, food quality assurance, and homeland security. Optical vapor sensing using photonic crystals has shown promise for rapid vapor detection and identification. Despite the recent advances of optical sensing using photonic crystals, the data analysis method commonly used in this field has been limited to an unsupervised method called principal component analysis (PCA). In this study, we applied four different supervised dimension reduction methods on differential reflectance spectra data from optical vapor sensing experiments. We found that two of the supervised methods, linear discriminant analysis and least-squares regression PCA, yielded better interclass separation, vapor identification and improved classification accuracy compared to PCA.
检测和识别低浓度的蒸汽对于空气质量评估、食品质量保证和国土安全至关重要。使用光子晶体的光学蒸汽传感已显示出快速蒸汽检测和识别的前景。尽管光子晶体光学传感最近取得了进展,但该领域常用的数据分析方法仅限于一种称为主成分分析(PCA)的无监督方法。在本研究中,我们将四种不同的有监督降维方法应用于光学蒸汽传感实验的差分反射光谱数据。我们发现,与PCA相比,其中两种有监督方法,即线性判别分析和最小二乘回归PCA,产生了更好的类间分离、蒸汽识别并提高了分类准确率。