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Prediction of wastewater quality using amperometric bioelectronic tongues

机译:使用安培生物电子舌进行废水质量预测

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摘要

Wastewater samples from a Swedish chemi-thermo-mechanical pulp (CTMP) mill collected at different purification stages in a wastewater treatment plant (WWTP) were analyzed with an amperometric enzyme-based biosensor array in a flow-injection system. In order to resolve the complex composition of the wastewater, the array consists of several sensing elements which yield a multidimensional response. We used principal component analysis (PCA) to decompose the array's responses, and found that wastewater with different degrees of pollution can be differentiated. With the help of partial least squares regression (PLS-R), we could link the sensor responses to the Microtox (R) toxicity parameter, as well as to global organic pollution parameters (COD, BOD, and TOC). From investigating the influences of individual sensors in the array, it was found that the best models were in most cases obtained when all sensors in the array were included in the PLS-R model. We find that fast simultaneous determination of several global environmental parameters characterizing wastewaters is possible with this kind of biosensor array, in particular because of the link between the sensor responses and the biological effect onto the ecosystem into which the wastewater would be released. In conjunction with multivariate data analysis tools, there is strong potential to reduce the total time until a result is yielded from days to a few minutes. (C) 2015 Elsevier B.V. All rights reserved.
机译:在流动注射系统中,使用基于安培酶的生物传感器阵列分析了瑞典化学-热机械纸浆(CTMP)工厂在废水处理厂(WWTP)不同纯化阶段收集的废水样品。为了解决废水的复杂组成,该阵列由几个产生多维响应的传感元件组成。我们使用主成分分析(PCA)分解了阵列的响应,发现可以区分不同污染程度的废水。借助偏最小二乘回归(PLS-R),我们可以将传感器响应与Microtox(R)毒性参数以及全球有机污染参数(COD,BOD和TOC)联系起来。通过调查阵列中各个传感器的影响,发现在大多数情况下,当阵列中的所有传感器都包含在PLS-R模型中时,可获得最佳模型。我们发现使用这种生物传感器阵列可以快速同时确定表征废水的几个全球环境参数,特别是由于传感器响应与对废水排放到生态系统的生物效应之间的联系。与多变量数据分析工具结合使用,可以将总时间缩短,直到将结果从几天减少到几分钟为止。 (C)2015 Elsevier B.V.保留所有权利。

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