利用 PARAFAC 和自组织图对河流 DOM 光谱进行荧光分析,以区分有机物质来源

IF 2.6 4区 环境科学与生态学 Q3 ENVIRONMENTAL SCIENCES International Journal of Environmental Research Pub Date : 2024-02-26 DOI:10.1007/s41742-024-00574-w
Xincheng Jin, Xiaoqing Chen, Liangmin Gao, Yufan Wu, Hansong Lu, Menghang Yuan, Jiahui Cui, Feiyan Wei
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引用次数: 0

摘要

本研究采用平行因子法(PARAFAC)、自组织图(SOM)和随机森林模型研究了不同非点源输入河流中溶解有机物(DOM)的来源和特征。研究对象选择了农业面源污染严重的人工运河慈淮新河(CH)和沟渠(GQ)。PARAFAC 模型解析了四种化学成分。C1 包括两个峰,即 C1 (T1)(UVC 富酸)和 C1 (T2)(类腐植酸)。C2 包括两个峰,分别是 C2 (T1)(酪氨酸样蛋白)和 C2 (T2)(色氨酸样蛋白)。C3 有两个峰值,分别是 C3 (T1)(类腐植酸)和 C3 (T2)(UVA 富酸)。C4 被确定为类腐植酸。SOM 模型显示,受农业非点源污染影响的 GQ 的腐殖化程度高于未受影响的 CH。河流中腐殖质的主要来源是农业非点源污染。CH 受周围人类活动和水体富营养化的影响,导致 DOM 的自生特性和生物活性水平较高。随机森林模型表明,C3 对河流的变化最为敏感(R2 = 0.88),因此是河流水质的良好指标。而 NH4+ 对两条河流的水质都有很强的驱动作用。主成分分析(PCA)显示,农业河流 DOM(GQ)主要由腐殖质组成,而人工河流 DOM(CH)主要来自于自生源。PARAFAC、SOM 和随机森林方法的结合有助于克服传统方法的局限性,为河流水质污染管理提供科学依据。
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Fluorescence Analysis of River DOM Spectra Using PARAFAC in Combination with a Self-Organizing Map to Distinguish Organic Matter Sources

This study used parallel factor method (PARAFAC), self-organizing map (SOM), and random forest models to study the dissolved organic matter (DOM) sources and characteristics in rivers with varying non-point source inputs. The artificial canal Cihuai New River (CH) and the Gouqu (GQ) which are heavily polluted by agricultural surface sources were selected as the study objects. The PARAFAC model resolved four chemical components. C1 comprises two peaks, C1 (T1) (UVC fulvic acid) and C1 (T2) (humic-like acid). C2 includes two peaks, C2 (T1) (tyrosine-like protein) and C2 (T2) (tryptophan-like protein). C3 has two peaks, C3 (T1) (humic-like) and C3 (T2) (UVA fulvic acid). C4 is identified as humic-like fulvic acid. The SOM model shows that the degree of humification in the GQ, which is influenced by agricultural non-point source pollution, is higher than that of the unaffected CH. The primary source of humic substances in the river is agricultural non-point source pollution. CH is influenced by surrounding human activities and the eutrophication of water bodies, resulting in a higher level of autochthonous characteristics and biological activity in DOM. Random Forest model indicated that the C3 was the most sensitive (R2 = 0.88) to river’s changes and therefore it is a good indicator of river’s water quality. And NH4+ has a strong driving effect on the water quality of both rivers. Principal Component Analysis (PCA) reveals that the agricultural river DOM (GQ) is mainly composed of humic substances, while the artificial river DOM (CH) is predominantly derived from autochthonous sources. The combination of PARAFAC, SOM, and random forest methods helps overcome the limitations of traditional approaches and provides a scientific basis for the management of river water quality pollution.

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来源期刊
CiteScore
5.40
自引率
0.00%
发文量
104
审稿时长
1.7 months
期刊介绍: International Journal of Environmental Research is a multidisciplinary journal concerned with all aspects of environment. In pursuit of these, environmentalist disciplines are invited to contribute their knowledge and experience. International Journal of Environmental Research publishes original research papers, research notes and reviews across the broad field of environment. These include but are not limited to environmental science, environmental engineering, environmental management and planning and environmental design, urban and regional landscape design and natural disaster management. Thus high quality research papers or reviews dealing with any aspect of environment are welcomed. Papers may be theoretical, interpretative or experimental.
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