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Nonlinear Least-Squares Based Method for Identifying and Quantifying Single and Mixed Contaminants in Air with an Electronic Nose

机译:基于非线性最小二乘的电子鼻识别和量化空气中单一和混合污染物的方法

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摘要

The Jet Propulsion Laboratory has recently developed and built an electronic nose (ENose) using a polymer-carbon composite sensing array. This ENose is designed to be used for air quality monitoring in an enclosed space, and is designed to detect, identify and quantify common contaminants at concentrations in the parts-per-million range. Its capabilities were demonstrated in an experiment aboard the National Aeronautics and Space Administration's Space Shuttle Flight STS-95. This paper describes a modified nonlinear least-squares based algorithm developed to analyze data taken by the ENose, and its performance for the identification and quantification of single gases and binary mixtures of twelve target analytes in clean air. Results from laboratory-controlled events demonstrate the effectiveness of the algorithm to identify and quantify a gas event if concentration exceeds the ENose detection threshold. Results from the flight test demonstrate that the algorithm correctly identifies and quantifies all registered events (planned or unplanned, as singles or mixtures) with no false positives and no inconsistencies with the logged events and the independent analysis of air samples.
机译:喷气推进实验室最近使用聚合物-碳复合材料传感阵列开发并建造了电子鼻(ENose)。该ENose旨在用于封闭空间中的空气质量监测,并旨在检测,识别和定量百万分之几范围内的常见污染物。美国国家航空航天局的航天飞机STS-95进行了一项实验,证明了其功能。本文介绍了一种改进的基于非线性最小二乘的改进算法,用于分析ENose采集的数据,以及其在清洁空气中用于识别和定量十二种目标分析物的单一气体和二元混合物的性能。实验室控制事件的结果表明,如果浓度超过ENose检测阈值,则该算法可识别和量化气体事件的有效性。飞行测试的结果表明,该算法可以正确识别和量化所有已记录的事件(计划的或计划外的事件,是单例还是混合物),没有误报,并且与记录的事件和空气样本的独立分析没有矛盾。

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