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Near-Infrared Spectrum of Coal Origin Identification Based on SVM Algorithm

机译:基于SVM算法的煤源识别近红外光谱。

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Near infrared spectroscopy is introduced to analyze 243 coal samples of different origins of Australia, Canada, China, Indonesia and Russia, combined with the supportive vector machines (SVM) analysis method. With the pre-processed data from the Principal component analysis (PCA), six supportive vector machines with different kernel functions are employed to discriminate origins of coal samples, namely Linear SVM, Quadratic SVM, Cubic SVM, Fine Gaussian SVM, Medium Gaussian SVM and Coarse Gaussian SVM. Through comparison, Linear SVM has the best performance in prediction accuracy rate while better results are obtained using Medium Gaussian SVM taking accuracy rate and training time into account. It turns out that NIR spectroscopy combined with Medium Gaussian SVM can be used as a good non-destructive method to predict origins of coal, with an accuracy rate of 98.8%, which strengthens the supervision of coal quality.
机译:结合支持向量机(SVM)分析方法,介绍了近红外光谱法分析澳大利亚,加拿大,中国,印度尼西亚和俄罗斯的243种不同来源的煤样品。利用来自主成分分析(PCA)的预处理数据,使用六种具有不同核函数的支持向量机来区分煤样品的起源,即线性SVM,二次SVM,三次SVM,精细高斯SVM,中等高斯SVM和粗高斯SVM。通过比较,线性SVM在预测准确率方面具有最佳性能,而在考虑了准确率和训练时间的情况下,使用中高斯SVM可以获得更好的结果。结果表明,近红外光谱技术与中等高斯支持向量机相结合可以作为一种很好的无损预测煤成因的方法,准确率达到98.8%,可以加强对煤质的监督。

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