Romero-Flores Adrian, McConnell Laura L, Hapeman Cathleen J, Ramirez Mark, Torrents Alba
University of Maryland, College Park, Civil and Environmental Engineering Department, College Park, MD, USA.
USDA Agricultural Research Service, Hydrology and Remote Sensing Laboratory, Beltsville, MD, USA.
Chemosphere. 2017 Nov;186:151-159. doi: 10.1016/j.chemosphere.2017.07.135. Epub 2017 Jul 27.
Electronic noses have been widely used in the food industry to monitor process performance and quality control, but use in wastewater and biosolids treatment has not been fully explored. Therefore, we examined the feasibility of an electronic nose to discriminate between treatment conditions of alkaline stabilized biosolids and compared its performance with quantitative analysis of key odorants. Seven lime treatments (0-30% w/w) were prepared and the resultant off-gas was monitored by GC-MS and by an electronic nose equipped with ten metal oxide sensors. A pattern recognition model was created using linear discriminant analysis (LDA) and principal component analysis (PCA) of the electronic nose data. In general, LDA performed better than PCA. LDA showed clear discrimination when single tests were evaluated, but when the full data set was included, discrimination between treatments was reduced. Frequency of accurate recognition was tested by three algorithms with Euclidan and Mahalanobis performing at 81% accuracy and discriminant function analysis at 70%. Concentrations of target compounds by GC-MS were in agreement with those reported in literature and helped to elucidate the behavior of the pattern recognition via comparison of individual sensor responses to different biosolids treatment conditions. Results indicated that the electronic nose can discriminate between lime percentages, thus providing the opportunity to create classes of under-dosed and over-dosed relative to regulatory requirements. Full scale application will require careful evaluation to maintain accuracy under variable process and environmental conditions.
电子鼻已在食品工业中广泛用于监测工艺性能和质量控制,但在废水和生物固体处理中的应用尚未得到充分探索。因此,我们研究了电子鼻区分碱性稳定生物固体处理条件的可行性,并将其性能与关键气味物质的定量分析进行了比较。制备了七种石灰处理(0-30% w/w),并通过气相色谱-质谱联用仪(GC-MS)和配备十个金属氧化物传感器的电子鼻对产生的废气进行监测。利用电子鼻数据的线性判别分析(LDA)和主成分分析(PCA)创建了模式识别模型。总体而言,LDA的表现优于PCA。在评估单个测试时,LDA显示出清晰的区分,但当纳入完整数据集时,处理之间的区分度降低。通过三种算法测试了准确识别的频率,欧几里得算法和马氏距离算法的准确率为81%,判别函数分析的准确率为70%。GC-MS测定的目标化合物浓度与文献报道一致,并通过比较各个传感器对不同生物固体处理条件的响应,有助于阐明模式识别的行为。结果表明,电子鼻可以区分石灰百分比,从而有机会根据监管要求创建剂量不足和剂量过量的类别。全面应用需要仔细评估,以在可变的工艺和环境条件下保持准确性。