Through a study of multi-gas mixture datasets, we show that in multi-component spectral analysis, the number of functional or non-functional principal components required to retain the essential information is the same as the number of independent constituents in the mixture set. Due to the mutual in-dependency among different gas molecules, near one-to-one projection from the principal component to the mixture constituent can be established, leading to a significant simplification of spectral quantification. Further, with the knowledge of the molar extinction coefficients of each constituent, a complete principal component set can be extracted from the coefficients directly, and few to none training samples are required for the learning model. Compared to other approaches, the proposed methods provide fast and accurate spectral quantification solutions with a small memory size needed.
翻译:通过对多气体混合物数据集的研究,我们表明,在多成分光谱分析中,保留基本信息所需的功能性或非功能性主要组成部分的数目与混合物组内独立成分的数目相同,由于不同气体分子之间相互依存,可以确定主要成分对混合物组成物的一对一预测,从而大大简化光谱量化。此外,由于了解每个成分的摩尔消亡系数,可以直接从系数中提取完整的主要组成部分,学习模型需要的培训样本很少或根本没有。与其他方法相比,拟议方法提供了快速和准确的光谱量化解决方案,需要的记忆体积较小。