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Extraction of spatiotemporal response information from sorption based cross-reactive sensor arrays for the identification and quantification of analyte mixtures

机译:从基于吸附的交叉反应性传感器阵列提取空间响应信息,用于分析物混合物的鉴定和定量

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Linear sensor arrays made from small molecule/carbon black composite chemiresistors placed in a low headspace volume chamber, with vapor delivered at low flow rates, allowed for the extraction of chemical information that significantly increased the ability of the sensor arrays to identify vapor mixture components and to quantify their concentrations. Each sensor sorbed vapors from the gas stream to various degrees. Similar to gas chromatography, species having high vapor pressures were separated from species having low vapor pressures. Instead of producing typical sensor responses representative of thermodynamic equilibrium between each sensor and an unchanging vapor phase, sensor responses varied depending on the position of the sensor in the chamber and the time from the beginning of the analyte exposure. This spatiotemporal (ST) array response provided information that was a function of time as well as of the position of the sensor in the chamber. The responses to pure analytes and to multi-component analyte mixtures comprised of hexane, decane, ethyl acetate, chlorobenzene, ethanol, and/or butanol, were recorded along each of the sensor arrays. Use of a non-negative least squares (NNLS) method for analysis of the ST data enabled the correct identification and quantification of the composition of 2-, 3-, 4- and 5-component mixtures from arrays using only 4 chemically different sorbent films and sensor training on pure vapors only. In contrast, when traditional time- and position-independent sensor response information was used, significant errors in mixture identification were observed. The ability to correctly identify and quantify constituent components of vapor mixtures through the use of such ST information significantly expands the capabilities of such broadly cross-reactive arrays of sensors.
机译:线性传感器阵列从置于低顶部空间容积室小分子/炭黑复合材料化学电阻制成,具有在低流速下输送蒸汽,允许的化学信息的提取该显著增加传感器阵列的识别蒸气混合物组分的能力,并且量化其浓度。每个传感器从气体流以各种程度吸附蒸气。类似于气相色谱法中,具有高蒸气压的物种被从具有低蒸气压的物质分离。代替制造典型传感器响应代表各个传感器和一个不变的气相之间热力学平衡的,传感器响应取决于在室中的传感器和来自分析物的曝光开始的时间的位置变化。这是时间的函数,以及在腔室中的传感器的位置。这时空(ST)阵列响应中提供的信息。纯分析物和于包括己烷,癸烷,乙酸乙酯,氯苯,乙醇和/或丁醇的多组分分析物混合物的响应,分别沿各传感器阵列的记录。一个非负最小二乘法(NNLS)方法为ST数据的分析的使用而启用的2-,3-组合物的正确识别和量化,4-和仅使用4种化学上不同的吸附剂从膜列5组分混合物上只有纯蒸汽和传感器的训练。与此相反,使用传统的时间和位置无关的传感器的响应信息时,观察到在混合物的识别显著误差。正确地识别通过使用这种信息ST的能力和蒸气混合物进行量化构成成分显著扩展的传感器,例如广泛交叉反应性阵列的能力。

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