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Chemometric characterization of Italian wines by thin-film multisensors array and artificial neural networks

机译:薄膜多传感器阵列和人工神经网络对意大利葡萄酒的化学计量学表征

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In the present work, nine samples of Italian wines (three white, three red and three rose) from different denominations of origin have been analysed by the static headspace sampling method to attempt to classify them by chemometric characterization of the data obtained from a thin-film multisensor array. All wines have also been analysed to measure their ionic conductivity, pH and alcoholic content. An electronic nose comprising four metal oxide semiconductor thin-film sensors has been used to generate a typical chemical fingerprint (pattern) of the volatile compounds present in the wines. Principal component analysis and artificial neural networks were applied to the generated patterns to achieve various classification tasks. The classification performance of nine different pre-processing algorithms has been studied on the basis of three different sensor parameters and three different normalization techniques. The wine patterns generation with array sensor signals and the chemometric treatment are fast and simple by providing a recognition rate and a prediction rate as fairly high as 100% and 78%, respectively. These results can be considered satisfactory and acceptable, with the selected variables useful to differentiate these wines by their class.
机译:在目前的工作中,通过静态顶空进样方法分析了来自不同产地的九种意大利葡萄酒样品(三白,三红和三玫瑰),并尝试通过化学计量学方法对稀薄的薄膜多传感器阵列。还对所有葡萄酒进行了分析,以测量其离子电导率,pH和酒精含量。包含四个金属氧化物半导体薄膜传感器的电子鼻已用于生成葡萄酒中存在的挥发性化合物的典型化学指纹(图样)。主成分分析和人工神经网络被应用于生成的模式,以实现各种分类任务。在三种不同的传感器参数和三种不同的归一化技术的基础上,研究了九种不同预处理算法的分类性能。通过提供分别高达100%和78%的识别率和预测率,利用阵列传感器信号和化学计量处理来生成葡萄酒图案既快速又简单。这些结果可以被认为是令人满意的和可以接受的,选择的变量有助于区分这些葡萄酒。

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