Shariati-Rad Masoud, Mozaffari Yalda
Department of Analytical Chemistry, Faculty of Chemistry, Razi University Kermanshah Iran
Research Group of Design and Fabrication of Kit, Razi University Kermanshah Iran.
RSC Adv. 2020 Sep 17;10(57):34459-34465. doi: 10.1039/d0ra06000c. eCollection 2020 Sep 16.
The assessment of water quality and its classification have considerable importance on public health. This requires monitoring of a wide range of physical, chemical and biological parameters. Here, an array of sensors composed of absorbances in different wavelengths in a kinetic process was used for classification. The data were obtained in the kinetic absorbance variations of silver nanoparticles (AgNPs) in the presence of different mineral waters. Spectral variations with time for each water sample were vectorized, and the matrix composed of these vectors was analyzed using principal component analysis (PCA) and hierarchical cluster analysis (HCA) as unsupervised clustering methods. The distinct clusters of nine different water samples were obtained using PCA and clustering by HCA resulted in an error rate of only 14.8%, which corresponds to misclassification of 4 water samples out of 27. The ability of the method for the discrimination of water samples using AgNP as the sole reagent can be attributed to the high dimensionality of data and the influence of the chemical environment in each water sample on the absorbance variations of AgNPs.
水质评估及其分类对公众健康具有相当重要的意义。这需要监测广泛的物理、化学和生物参数。在此,使用了一组由动力学过程中不同波长吸光度组成的传感器进行分类。数据是在不同矿泉水存在下银纳米颗粒(AgNPs)的动力学吸光度变化中获得的。对每个水样随时间的光谱变化进行矢量化处理,并使用主成分分析(PCA)和层次聚类分析(HCA)作为无监督聚类方法对由这些向量组成的矩阵进行分析。使用PCA获得了九个不同水样的明显聚类,通过HCA进行聚类的错误率仅为14.8%,这对应于27个水样中有4个被错误分类。该方法使用AgNP作为唯一试剂鉴别水样的能力可归因于数据的高维度以及每个水样中的化学环境对AgNPs吸光度变化的影响。