基于点源排放负荷数据的流域溶解性有机物(DOM)源跟踪的最优示踪剂识别

Haeseong Oh, Ka-Young Jung, Bo Young Kim, Byung Joon Lee, Hyun-Sang Shin, Jin Hur
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引用次数: 0

摘要

在本研究中,我们表征了农林业流域中不同来源的溶解有机物(DOM)的光学性质和分子量(MW)。我们提出了一项指导方针,利用点源的溶解有机碳(DOC)负荷,在降雨和非降雨情况下为下游河流确定最佳DOM源示踪剂。根据文献中建立的标准预先选择了6个描述符,并评估了15对描述符在端元混合分析(EMMA)中的适用性。EMMA的结果提供了15对DOM源相对贡献的不一致估计,光学描述符优于基于mw的描述符及其组合。通过使用现场监测数据计算的DOC负荷比和基于EMMA的预测,比较上游废水中DOM的相对贡献,确定最佳源示踪剂。HIX(腐殖化指数)和BIX(生物指数)这对光学描述符与测量的负载比非常接近,差异极小(0.4±0.4%)。利用HIX和BIX对EMMA结果表明,非降雨事件主要受油饼肥和处理后的废水的影响,而降雨事件样品主要受粪便和土壤的影响。这些发现为管理农林流域非点源有机污染源提供了见解,有助于我们了解水生系统中的碳和养分循环。值得注意的是,本研究提出了一个使用点源(如废水)负载比率的验证指南,以提高源跟踪准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Optimal Tracer Identification for Dissolved Organic Matter (DOM) Source Tracking in Watersheds Using Point Source Effluent Load Data

Optimal Tracer Identification for Dissolved Organic Matter (DOM) Source Tracking in Watersheds Using Point Source Effluent Load Data
In this study, we characterized the optical and molecular weight (MW) properties of dissolved organic matter (DOM) with various sources in an agriculture-forestry watershed. We proposed a guideline to identify optimum DOM source tracers for downstream rivers during both rain and non-rain events, utilizing the load of dissolved organic carbon (DOC) from point sources. Six descriptors were pre-selected based on established criteria in the literature, and fifteen pairs of these descriptors were evaluated for their applicability in end-member mixing analysis (EMMA). The results from EMMA provided inconsistent estimates of relative contributions from DOM sources across the fifteen pairs, with optical descriptors outperforming MW-based descriptors and their combinations. The optimal source tracers were determined by comparing relative contributions of DOM from upstream effluent wastewater using DOC load ratios calculated from on-site monitoring data and predictions based on EMMA. The pair of optical descriptors, HIX (humification index) and BIX (biological index), closely matched the measured load ratios with minimal discrepancies (0.4 ± 0.4%). According to the EMMA results using pairs of HIX and BIX, non-rain events were primarily influenced by oil-cake fertilizer and treated effluent wastewater, while rain event samples were dominated by manure and soils. These findings offer insights into managing non-point organic pollution sources in agricultural-forestry watersheds, contributing to our understanding of carbon and nutrient cycling in aquatic systems. Notably, this study proposes a validation guideline that employs load ratios of point sources, such as effluent wastewater, to enhance source tracking accuracy.
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