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根据常规、光谱学和化学计量学分析和鉴定黄腐酸的母质煤源。

Analysis and identification of the parent coal sources of fulvic acid according to convention, spectroscopy and chemometrics.

机构信息

Faculty of Life Science and Technology, Kunming University of Science and Technology, Kunming 650500, China.

Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming 650500, China.

出版信息

Spectrochim Acta A Mol Biomol Spectrosc. 2020 Aug 15;237:118379. doi: 10.1016/j.saa.2020.118379. Epub 2020 Apr 17.

Abstract

Fulvic acid (FA) is a kind of organic and complex water-soluble components mainly extracted from low rank coals with small molecular weight, active physical properties (such as cation exchange capacity, pH-buffering alkalinity) and positive biological functions. However, the performance of FA varies greatly, mainly induced by its different sources of raw coals. Thus, classifying the fulvic acid obtained from different coal samples is required. According to their chemical differences, two methods are developed in this paper to distinguish the origin of coal in China in combination with chemometric tools. First, the ash content, elemental composition, ultraviolet-visible (UV-Vis) and fluorescence spectra of sixteen fulvic acid samples from peat, lignite and weathered coal are measured and fifteen parameters are obtained from each sample. In the first Linear Discriminant Analysis (LDA) strategy, Orthogonal Projections to Latent Structures Discriminant Analysis (OPLS-DA) and stepwise LDA are employed to reduce variables. A discriminant function (DF) constructed only by E and FI is obtained, with its accuracy verified by clustering and leave-one-out cross validation (LOOCV) with an accuracy of 87.5%. In another machine learning tactics, Pearson correlation and principal component analysis (PCA) reduce the dimensions of all variables. In the end, all sixteen samples are divided into three groups by support vector machine (SVM), with an accuracy of 100%. In conclusion, based on the differences in the chemical composition of FA from different sources, the method for combining UV-Vis and fluorescence with LDA or SVM can effectively classify the coal sources of FA.

摘要

富里酸(FA)是一种从低阶煤中提取的有机复杂的水溶性成分,具有小分子质量、活性物理性质(如阳离子交换能力、pH 缓冲碱度)和积极的生物学功能。然而,FA 的性能差异很大,主要是由于其不同的原煤来源。因此,需要对不同煤样提取的富里酸进行分类。本文结合化学计量学工具,根据其化学差异,开发了两种方法来区分中国煤的来源。首先,测量了 16 种来自泥炭、褐煤和风化煤的富里酸样品的灰分含量、元素组成、紫外-可见(UV-Vis)和荧光光谱,从每个样品中得到了 15 个参数。在第一个线性判别分析(LDA)策略中,采用正交投影到潜在结构判别分析(OPLS-DA)和逐步 LDA 来减少变量。仅由 E 和 FI 构建的判别函数(DF),通过聚类和留一法交叉验证(LOOCV)验证其准确性,准确率为 87.5%。在另一种机器学习策略中,皮尔逊相关和主成分分析(PCA)减少了所有变量的维度。最后,通过支持向量机(SVM)将所有 16 个样本分为三组,准确率为 100%。总之,基于不同来源富里酸化学成分的差异,采用 UV-Vis 和荧光与 LDA 或 SVM 相结合的方法可以有效地对富里酸的煤源进行分类。

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