A novel-approach for identifying sources of fluvial DOM using fluorescence spectroscopy and machine learning model

IF 10.4 1区 工程技术 Q1 ENGINEERING, CHEMICAL npj Clean Water Pub Date : 2024-08-22 DOI:10.1038/s41545-024-00370-1
Dongping Liu, Lei Nie, Beidou Xi, Hongjie Gao, Fang Yang, Huibin Yu
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Abstract

Rivers are well known as one of the most threatened aquatic environments, whose structure and water quality can be deeply impacted by intensive anthropogenic activities. Despite the fact that anthropogenic influences on river ecosystems could indeed be deduced from the composition and chemistry of fluvial dissolved organic matter (DOM), sources of anthropogenic loading to DOM are still poorly explored. Here, by uniting fluorescence excitation-emission matrices (EEM) and principal component absolute coefficient, four sources of DOM from seventeen rivers in major drainage basins of China could be identified, i.e., originating from municipal sewage, domestic wastewater, livestock wastewater, and natural origins, and thus being defined as MS-DOM, DW-DOM, LW-DOM, NO-DOM, respectively. Based on the random forest model, special nodes in EEM could be traced from four sources, respectively. According to parallel factor analysis, DOM mainly contained protein-like, microbial humic-like, and fulvic-like fluorescence substances, among which protein-like was dominant in MS-DOM and DW-DOM, microbial humic-like in LW-DOM, and fulvic-like in NO-DOM. Based on key peaks and essential nodes in EEM, the identifying source indices were first proposed, which could be introduced to simply distinguish the different anthropogenic-derived sources of fluvial DOM. It was associated with intensity ratios of the key peaks and the essential nodes of EEM spectra from four sources, i.e., municipal sewage (MS-SI: Ex/Em = 280/(335, 410) nm), domestic wastewater (DW-SI: Ex/Em = 280/(340, 410) nm), livestock wastewater (LW-SI: Ex/Em = 235/(345, 380) nm), and natural origins (NO-SI: Ex/Em = 260/(380, 430) nm). By statistical analysis, the high identifying source indices of municipal sewage (>0.5) and natural origins (>0.4) values could be related to MS-DOM and NO-DOM, respectively. The identifying source indices of domestic wastewater with 0.1–0.3 might be linked to DW-DOM and the identifying source indices of livestock wastewater with 0.3–0.4 to LW-DOM. Compared with conventional optical indices, the novel identifying source indices showed remarkable discrimination for the sources of fluvial DOM with different forms of anthropogenic disturbances. Hence the innovative approach could be relatively convenient and accurate to evaluate water quality or pollution risk in river ecosystems.

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利用荧光光谱学和机器学习模型识别河流 DOM 来源的新方法
众所周知,河流是最受威胁的水生环境之一,其结构和水质会受到人类密集活动的严重影响。尽管可以从河流溶解有机物(DOM)的成分和化学性质推断出人类活动对河流生态系统的影响,但人类活动对 DOM 负荷来源的探索仍然很少。本文通过荧光激发-发射矩阵(EEM)和主成分绝对系数相结合的方法,确定了中国主要流域17条河流的4种DOM来源,即来源于城市污水、生活污水、畜禽养殖废水和自然界,分别定义为MS-DOM、DW-DOM、LW-DOM和NO-DOM。根据随机森林模型,EEM 中的特殊节点可分别追溯到四个来源。根据平行因子分析,DOM主要包含蛋白质类、微生物腐殖质类和富勒烯类荧光物质,其中蛋白质类荧光物质在MS-DOM和DW-DOM中占优势,微生物腐殖质类荧光物质在LW-DOM中占优势,富勒烯类荧光物质在NO-DOM中占优势。根据 EEM 中的关键峰和重要节点,首次提出了识别源指数,该指数可用于简单区分河道 DOM 的不同人为来源。该指数与四个来源的 EEM 光谱关键峰和重要节点的强度比相关联,即城市污水(MS-SI:Ex/Em = 280/(335, 410) nm)、生活废水(DW-SI:Ex/Em = 280/(340, 410) nm)、畜牧废水(LW-SI:Ex/Em = 235/(345, 380) nm)和自然来源(NO-SI:Ex/Em = 260/(380, 430) nm)。通过统计分析,城市污水(>0.5)和天然来源(>0.4)的高识别源指数值可能分别与 MS-DOM 和 NO-DOM 有关。0.1-0.3的生活污水识别源指数可能与DW-DOM有关,0.3-0.4的畜禽污水识别源指数可能与LW-DOM有关。与传统的光学指数相比,新的识别源指数对不同人为干扰形式的河道 DOM 的来源具有显著的识别能力。因此,这种创新方法可以相对方便、准确地评估河流生态系统的水质或污染风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
npj Clean Water
npj Clean Water Environmental Science-Water Science and Technology
CiteScore
15.30
自引率
2.60%
发文量
61
审稿时长
5 weeks
期刊介绍: npj Clean Water publishes high-quality papers that report cutting-edge science, technology, applications, policies, and societal issues contributing to a more sustainable supply of clean water. The journal's publications may also support and accelerate the achievement of Sustainable Development Goal 6, which focuses on clean water and sanitation.
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