Detection and Quantification of Multi-Analyte Mixtures Using a Single Sensor and Multi-Stage Data-Weighted RLSE

Karthick Sothivelr, F. Bender, F. Josse, E. Yaz, A. Ricco
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引用次数: 1

Abstract

This work reports the development and experimental verification of a sensor signal processing technique for online identification and quantification of aqueous mixtures of benzene, toluene, ethylbenzene, xylenes (BTEX) and 1, 2, 4-trimethylbenzene (TMB) at ppb concentrations using time-dependent frequency responses from a single polymer-coated shear-horizontal surface acoustic wave sensor. Signal processing based on multi-stage exponentially weighted recursive leastsquares estimation (EW-RLSE) is utilized for estimating the concentrations of the analytes in the mixture that are most likely to have produced a given sensor response. The initial stages of EW-RLSE are used to eliminate analyte(s) that are erroneously identified as present in the mixture; the final stage of EW-RLSE with the corresponding sensor response model representing the analyte(s) present in the mixture is used to obtain a more accurate quantification result of the analyte(s). The success of this method in identifying and quantifying analytes in real-time with high accuracy using the response of just a single sensor device demonstrates an effective, simpler, lower-cost alternative to a sensor array that includes the advantage of not requiring a complex training protocol.
用单传感器和多级数据加权RLSE检测和定量多分析物混合物
本研究报告了一种传感器信号处理技术的开发和实验验证,该技术用于在线识别和定量ppb浓度下苯、甲苯、乙苯、二甲苯(BTEX)和1,2,4 -三甲苯(TMB)的水相混合物,使用来自单个聚合物涂层剪切水平表面声波传感器的时变频率响应。基于多阶段指数加权递归最小二乘估计(EW-RLSE)的信号处理用于估计混合物中最有可能产生给定传感器响应的分析物浓度。EW-RLSE的初始阶段用于消除混合物中被错误识别为存在的分析物;EW-RLSE的最后阶段与代表混合物中存在的分析物的相应传感器响应模型一起用于获得更准确的分析物定量结果。该方法成功地利用单个传感器设备的响应,实时、高精度地识别和量化分析物,证明了一种有效、更简单、成本更低的传感器阵列替代方案,其中包括不需要复杂训练协议的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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