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Study of preprocessing sensitivity on laser induced breakdown spectroscopy (LIBS) spectral classification

机译:激光诱导击穿光谱(LIBS)光谱分类的预处理灵敏度研究

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Laser induced breakdown spectroscopy (LIBS) is an atomic emission based spectroscopy that uses a laser pulse as the source of excitation. The laser is focused to form hot plasma, which atomizes and excites the sample. In the LIBS spectrum each “feature” is the amplitude or intensity detected at different wavelengths in the range of 200–1000 nm. Pattern recognition techniques were applied on samples with similar elemental composition resulting in almost similar LIBS spectra which are visually very difficult to differentiate. It was observed that the classification results obtained from different classifiers were sensitive to data preprocessing. The outlier detection and removal techniques PCA, Dendrogram using Agglomerative Algorithm, Editing by Nearest Neighbour (NN) and Distance Matrix approaches were used in preprocessing step. After removing outlier(s) the resulting training patterns were used to model the k-Nearest Neighbour (k-NN), Principal Component Analysis (PCA), Dendrogram, Multiclass Support Vector Machine (SVM) and Decision Tree classifiers. In k-NN after removing outlier(s) the average classification accuracy was increased by 2% for high energy materials (HEM), but no improvement in non high energy materials (Non HEM) or in top level classification (decide either HEM or Non HEM). But, for other classifiers the classification accuracy gets reduced. Finally instead of removing outlier(s) dimensionality reduction by thresholding was applied and the classification accuracy increased by 4% in k-NN for HEM and 38% in multiclass SVM for HEM and 4% for Non-HEM.
机译:激光诱导击穿光谱法(LIBS)是基于原子发射的光谱法,它使用激光脉冲作为激发源。激光聚焦形成热等离子体,该等离子体使样品雾化并激发。在LIBS光谱中,每个“特征”是在200–1000 nm范围内的不同波长处检测到的幅度或强度。模式识别技术应用于具有相似元素组成的样品,产生了几乎相似的LIBS光谱,这些光谱在视觉上很难区分。观察到,从不同分类器获得的分类结果对数据预处理敏感。在预处理步骤中使用了异常检测和消除技术PCA,使用凝聚算法的树状图,最近邻(NN)编辑和距离矩阵方法。除去异常值后,将所得的训练模式用于对k最近邻(k-NN),主成分分析(PCA),树状图,多类支持向量机(SVM)和决策树分类器进行建模。在去除异常值后的k-NN中,高能材料(HEM)的平均分类精度提高了2%,但非高能材料(Non HEM)或顶级分类没有改善(决定HEM或Non HEM)。但是,对于其他分类器,分类精度会降低。最终,没有采用通过阈值消除异常值的方法,而是采用了降维方法,对于HEM,分类精度在k-NN中提高了4%,在HEM的多类SVM中,分类精度提高了38%,对于非HEM,分类精度提高了4%。

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