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首页> 外文期刊>Analytica chimica acta >Two-dimensional wavelet analysis based classification of gas chromatogram differential mobility spectrometry signals
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Two-dimensional wavelet analysis based classification of gas chromatogram differential mobility spectrometry signals

机译:基于二维小波分析的气相色谱差动迁移率光谱信号分类

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摘要

This study introduces two-dimensional (2-D) wavelet analysis to the classification of gas chromatogram differential mobility spectrometry (GC/DMS) data which are composed of retention time, compensation voltage, and corresponding intensities. One reported method to process such large data sets is to convert 2-D signals to 1-D signals by summing intensities either across retention time or compensation voltage, but it can lose important signal information in one data dimension. A 2-D wavelet analysis approach keeps the 2-D structure of original signals, while significantly reducing data size. We applied this feature extraction method to 2-D GC/DMS signals measured from control and disordered fruit and then employed two typical classification algorithms to testify the effects of the resultant features on chemical pattern recognition. Yielding a 93.3% accuracy of separating data from control and disordered fruit samples, 2-D wavelet analysis not only proves its feasibility to extract feature from original 2-D signals but also shows its superiority over the conventional feature extraction methods including converting 2-D to 1-D and selecting distinguishable pixels from training set. Furthermore, this process does not require coupling with specific pattern recognition methods, which may help ensure wide applications of this method to 2-D spectrometry data.
机译:本研究将二维(2-D)小波分析引入到气相色谱差动迁移谱(GC / DMS)数据的分类中,该数据由保留时间,补偿电压和相应的强度组成。处理此类大数据集的一种报告方法是通过将跨越保留时间或补偿电压的强度求和,将2D信号转换为1D信号,但是它可能会在一个数据维度上丢失重要的信号信息。二维小波分析方法可保留原始信号的二维结构,同时显着减小数据大小。我们将此特征提取方法应用于从对照和无序果中测得的二维GC / DMS信号,然后采用两种典型的分类算法来验证所得特征对化学模式识别的影响。二维小波分析不仅可以从对照和无序的水果样本中分离数据,准确率达到93.3%,不仅证明了从原始二维信号中提取特征的可行性,而且还显示出优于包括转换二维在内的常规特征提取方法的优越性到一维,然后从训练集中选择可区分的像素。此外,该过程不需要与特定的模式识别方法结合,这可以帮助确保将该方法广泛应用于二维光谱数据。

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