School of Geography, Earth and Environmental Sciences, University of Plymouth, Plymouth, UK.
Isotope Bioscience Laboratory - ISOFYS, Ghent University, Gent, Belgium.
Sci Rep. 2018 Aug 30;8(1):13073. doi: 10.1038/s41598-018-30905-9.
Increasing complexity in human-environment interactions at multiple watershed scales presents major challenges to sediment source apportionment data acquisition and analysis. Herein, we present a step-change in the application of Bayesian mixing models: Deconvolutional-MixSIAR (D-MIXSIAR) to underpin sustainable management of soil and sediment. This new mixing model approach allows users to directly account for the 'structural hierarchy' of a river basin in terms of sub-watershed distribution. It works by deconvoluting apportionment data derived for multiple nodes along the stream-river network where sources are stratified by sub-watershed. Source and mixture samples were collected from two watersheds that represented (i) a longitudinal mixed agricultural watershed in the south west of England which had a distinct upper and lower zone related to topography and (ii) a distributed mixed agricultural and forested watershed in the mid-hills of Nepal with two distinct sub-watersheds. In the former, geochemical fingerprints were based upon weathering profiles and anthropogenic soil amendments. In the latter compound-specific stable isotope markers based on soil vegetation cover were applied. Mixing model posterior distributions of proportional sediment source contributions differed when sources were pooled across the watersheds (pooled-MixSIAR) compared to those where source terms were stratified by sub-watershed and the outputs deconvoluted (D-MixSIAR). In the first example, the stratified source data and the deconvolutional approach provided greater distinction between pasture and cultivated topsoil source signatures resulting in a different posterior distribution to non-deconvolutional model (conventional approaches over-estimated the contribution of cultivated land to downstream sediment by 2 to 5 times). In the second example, the deconvolutional model elucidated a large input of sediment delivered from a small tributary resulting in differences in the reported contribution of a discrete mixed forest source. Overall D-MixSIAR model posterior distributions had lower (by ca 25-50%) uncertainty and quicker model run times. In both cases, the structured, deconvoluted output cohered more closely with field observations and local knowledge underpinning the need for closer attention to hierarchy in source and mixture terms in river basin source apportionment. Soil erosion and siltation challenge the energy-food-water-environment nexus. This new tool for source apportionment offers wider application across complex environmental systems affected by natural and human-induced change and the lessons learned are relevant to source apportionment applications in other disciplines.
在多个流域尺度上,人类与环境相互作用的复杂性不断增加,这给泥沙源解析数据的获取和分析带来了重大挑战。在此,我们在贝叶斯混合模型的应用方面取得了重大进展:解卷积混合同位素示踪分析(Deconvolutional-MixSIAR,D-MIXSIAR),为土壤和沉积物的可持续管理提供支持。这种新的混合模型方法允许用户根据子流域的分布情况,直接考虑流域的“结构层次”。它通过对沿河流网络的多个节点的分配数据进行解卷积来实现,其中源按子流域分层。源和混合物样本取自两个流域,一个是英格兰西南部的纵向混合农业流域,其上部和下部区域与地形有关;另一个是尼泊尔中山区的分布式混合农业和森林流域,有两个明显的子流域。在前一个流域,地球化学指纹是基于风化剖面和人为土壤改良剂;在后一个流域,应用了基于土壤植被覆盖的特定化合物稳定同位素标记。当源在流域范围内汇集(汇集-MixSIAR)时,泥沙源贡献的混合模型后验分布与源按子流域分层且输出解卷积(D-MixSIAR)时不同。在前一个例子中,分层的源数据和解卷积方法提供了对牧场和耕作表土源特征的更好区分,从而导致了与非解卷积模型不同的后验分布(常规方法高估了耕作土地对下游泥沙的贡献 2 到 5 倍)。在后一个例子中,解卷积模型阐明了从小支流输送的大量泥沙,导致离散混合森林源的报告贡献存在差异。总体而言,D-MixSIAR 模型后验分布的不确定性降低了(约 25-50%),模型运行时间也更快。在这两种情况下,结构化、解卷积的输出与实地观测和支撑源分配中对源和混合物术语层次结构更密切关注的本地知识更加一致。土壤侵蚀和淤积挑战着能源-粮食-水-环境的关系。这种新的源解析工具为受自然和人为变化影响的复杂环境系统提供了更广泛的应用,所得到的经验教训与其他学科的源解析应用相关。