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OPTIMAL COATING SELECTION FOR THE ANALYSIS OF ORGANIC VAPOR MIXTURES WITH POLYMER-COATED SURFACE ACOUSTIC WAVE SENSOR ARRAYS

机译:聚合物涂层表面声波传感器阵列分析有机蒸气混合物的最佳涂层选择

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摘要

A method for determining the optimal set of polymer sensor coatings to include in a surface acoustic wave (SAW) sensor array for the analysis of organic vapors is described, The method combines an extended disjoint principal components regression (EDPCR) pattern recognition analysis with Monte Carlo simulations of sensor responses to rank the various possible coating selections and to estimate the ability of the sensor array to identify any set of vapor analytes. A data base consisting of the calibrated responses of 10 polymer-coated SAW sensors to each of six organic solvent vapors from three chemical classes was generated to demonstrate the method. Responses to the individual vapors were linear over the concentration ranges examined, and coatings were stable over several months of operation. Responses to binary mixtures were additive functions of the individual component responses, even for vapors capable of strong hydrogen bonding. The EDPCR-Monte Carlo method was used to select the four-sensor array that provided the least error in identifying the six vapors, whether present individually or in binary mixtures. The predicted rate of vapor identification (87%) was experimentally verified, and the vapor concentrations were estimated within 10% of experimental values in most cases. The majority of errors in identification occurred when an individual vapor could not be differentiated from a mixture of the same vapor with a much lower concentration of a second component. The selection of optimal coating sets for several ternary vapor mixtures is also examined. Results demonstrate the capabilities of polymer-coated SAW sensor arrays for analyzing of soh ent vapor mixtures and the advantages of the EDPCR-Monte Carlo method for predicting and optimizing performance.
机译:描述了一种用于确定包含在表面声波(SAW)传感器阵列中以分析有机蒸气的最佳聚合物传感器涂层的方法,该方法将扩展的不相交主成分回归(EDPCR)模式识别分析与Monte Carlo相结合模拟传感器响应,以对各种可能的涂层选择进行排名,并估计传感器阵列识别任何一组蒸汽分析物的能力。生成了一个数据库,该数据库由10个聚合物涂层的SAW传感器对来自三种化学类别的六种有机溶剂蒸气各自的校准响应组成,以证明该方法。在所检查的浓度范围内,对各个蒸气的响应呈线性关系,并且涂层在运行几个月后仍保持稳定。对二元混合物的响应是各个组分响应的加和函数,即使对于能够强氢键结合的蒸气也是如此。 EDP​​CR-Monte Carlo方法用于选择四传感器阵列,该阵列在识别六种蒸气中提供最小的误差,无论是单独存在还是以二元混合物形式存在。通过实验验证了预计的蒸气识别率(87%),并且在大多数情况下,蒸气浓度估计在实验值的10%以内。当无法将单个蒸气与具有低得多的第二组分浓度的相同蒸气的混合物区分开时,会发生大多数识别错误。还检查了几种三元蒸气混合物的最佳涂料组的选择。结果表明,聚合物涂层的SAW传感器阵列具有分析多种蒸气混合物的能力,以及EDPCR-Monte Carlo方法在预测和优化性能方面的优势。

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