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Tracing catchment fine sediment sources using the new SIFT (SedIment Fingerprinting Tool) open source software

机译:使用新的SIFT(SedIment Fingerprinting Tool)开源软件追踪集水区的细沙来源

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摘要

The mitigation of diffuse sediment pollution requires reliable provenance information so that measures can be targeted. Sediment source fingerprinting represents one approach for supporting these needs, but recent methodological developments have resulted in an increasing complexity of data processing methods rendering the approach less accessible to non-specialists. A comprehensive new software programme (SIFT; SedIment Fingerprinting Tool) has therefore been developed which guides the user through critical data analysis decisions and automates all calculations. Multiple source group configurations and composite fingerprints are identified and tested using multiple methods of uncertainty analysis. This aims to explore the sediment provenance information provided by the tracers more comprehensively than a single model, and allows for model configurations with high uncertainties to be rejected. This paper provides an overview of its application to an agricultural catchment in the UK to determine if the approach used can provide a reduction in uncertainty and increase in precision. Five source group classifications were used; three formed using a k-means cluster analysis containing 2, 3 and 4 clusters, and two a-priori groups based upon catchment geology. Three different composite fingerprints were used for each classification and bi-plots, range tests, tracer variability ratios and virtual mixtures tested the reliability of each model configuration. Some model configurations performed poorly when apportioning the composition of virtual mixtures, and different model configurations could produce different sediment provenance results despite using composite fingerprints able to discriminate robustly between the source groups. Despite this uncertainty, dominant sediment sources were identified, and those in close proximity to each sediment sampling location were found to be of greatest importance. This new software, by integrating recent methodological developments in tracer data processing, guides users through key steps. Critically, by applying multiple model configurations and uncertainty assessment, it delivers more robust solutions for informing catchment management of the sediment problem than many previously used approaches.
机译:减轻弥漫性沉积物污染需要可靠的出处信息,以便采取针对性措施。沉积物源指纹法是满足这些需求的一种方法,但是最近的方法学发展导致数据处理方法的复杂性不断提高,使得非专业人员很难使用该方法。因此,已经开发了一个全面的新软件程序(SIFT;沉积指纹识别工具),该程序可指导用户进行关键数据分析决策并自动执行所有计算。使用多种不确定性分析方法来识别和测试多个源组配置和复合指纹。这样做的目的是比单一模型更全面地探索示踪剂提供的沉积物来源信息,并允许拒绝具有高不确定性的模型配置。本文概述了其在英国农业流域中的应用,以确定所使用的方法是否可以减少不确定性并提高精度。使用了五种来源组分类;其中三个是使用k-均值聚类分析形成的,其中包含2、3和4个聚类,以及两个基于流域地质的先验组。每种分类使用三种不同的合成指纹,双图,范围测试,示踪剂变异率和虚拟混合物测试了每种模型配置的可靠性。在分配虚拟混合物的成分时,某些模型配置的效果不佳,尽管使用能够可靠区分源组的复合指纹,但不同的模型配置仍可能产生不同的泥沙出处结果。尽管存在这种不确定性,但仍可确定主要的沉积物来源,并且发现每个沉积物采样位置附近的沉积物都是最重要的。该新软件通过在跟踪器数据处理中集成了最新的方法开发,可以指导用户完成关键步骤。至关重要的是,通过应用多种模型配置和不确定性评估,与许多以前使用的方法相比,它可以为集水区管理提供有关沉积物问题的更可靠解决方案。

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