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Component Spectrum Recognition for Mixed Gas Based on SVM

机译:基于SVM的混合气体成分光谱识别。

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As for the problem that component gas characteristic spectrum lines overlaps seriously in the identification of Mixed Gas, Support Vector Machine is introduced for the identification, and an one-by-one identification methods for Mixed Gas classification based on the binary category identification model based on the support vector machine is proposed in this article. One-by-one category identification is carried out for each mixed gas when the characteristic spectrum lines are overlapped seriously and is transformed in high dimensional space into linear by SVM kernel function transformation. In the experiment for gas component identification of a natural gas, we compare the recognition results affected by different kernel functions, data preprocessing, feature extraction, numbers of training samples and other conditions. The results show that the method has the correct recognition rate of over 97% for the natural gas whose concentration is over 1%, and it has a great promotional value both in theory and practical application.
机译:针对混合气体识别中组分气体特征谱线严重重叠的问题,引入支持向量机进行识别,并基于二元类别识别模型,对混合气体分类进行了一对一的识别方法。本文提出了支持向量机。当特征谱线严重重叠并通过SVM核函数变换在高维空间中变换为线性时,对每种混合气体进行一对一的类别识别。在天然气的气体成分识别实验中,我们比较了受不同核函数,数据预处理,特征提取,训练样本数量和其他条件影响的识别结果。结果表明,该方法对浓度超过1%的天然气的正确识别率达到97%以上,在理论和实际应用上都有很大的推广价值。

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