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Nanoparticle-structured sensing array materials and pattern recognition for VOC detection

机译:纳米颗粒感测阵列材料和用于VOC检测的模式识别

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Nanostructured sensing arrays combined with pattern-recognition analysis provide new opportunities for enhancing the design of sensor materials in terms of sensitivity and selectivity. In this work, we report findings of an investigation of nanostructured sensing arrays for the detection of volatile organic compounds (VOCs) and nitro-aromatic compounds (NACs) and the data analysis based on pattern recognition using principle component analysis (PCA) and artificial neural networks (ANN) techniques. The nanostructured array elements consist of thin film assemblies of alkanethiolate-monolayer-capped gold nanoparticles which were formed by molecularly mediated assembly using mediators or linkers of different chain lengths and functional groups. Each array element displayed linear responses to the vapor concentration. The observed high specificity to NACs constitutes an unprecedented example resulting from the unique combination of hydrogen-bonding donor/acceptor and hydrophobicity in the interparticle structure. A set of ANNs along with PCAs was used for the analysis of a series of vapor responses. The PCA technique was used to cluster data and feature extraction. A hierarchical BP neural network system was employed as the pattern classifier, which was shown to enhance the correct pattern-recognition rate. A satisfactory identification performance of the system has been demonstrated for a set of vapor responses. The results have also provided us important insights into the delineation of the design criteria for constructing nanostructured sensing arrays.
机译:纳米结构传感阵列与模式识别分析相结合,为增强传感器材料的灵敏度和选择性提供了新的机会。在这项工作中,我们报告了用于检测挥发性有机化合物(VOC)和硝基芳族化合物(NAC)的纳米结构传感阵列的研究结果,以及基于基于模式识别的数据分析,其中使用主成分分析(PCA)和人工神经网络网络(ANN)技术。纳米结构的阵列元件由链烷硫醇盐单层封端的金纳米颗粒的薄膜组件组成,该薄膜组件是通过使用不同链长和官能团的介体或接头通过分子介导的组装而形成的。每个阵列元素显示出对蒸气浓度的线性响应。观察到的对NAC的高特异性构成了前所未有的例子,这是由于氢键供体/受体与颗粒间结构中的疏水性的独特结合而产生的。一组ANN与PCA一起用于一系列蒸汽响应的分析。 PCA技术用于对数据和特征提取进行聚类。一个分层的BP神经网络系统被用作模式分类器,它被证明可以提高正确的模式识别率。对于一组蒸汽响应,已证明该系统具有令人满意的识别性能。这些结果也为我们提供了重要的见识,说明了构建纳米结构传感阵列的设计标准。

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