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Linking landscape patterns to sources of water contamination: Implications for tracking fecal contaminants with geospatial and Bayesian approaches

机译:将景观格局与水污染源联系起来:利用地理空间和贝叶斯方法追踪粪便污染物的含义

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Microbial source tracking (MST) techniques have been designed to identify the host source of fecal contamination in water. However, current MST techniques cannot provide geographic origins of particular sources because they do not provide any spatial information beyond the points of observation. In this study, the associations between landscape patterns and the major sources of microbial contamination were examined and the application of geospatial techniques (e.g., remote sensing and geographic information systems) and Bayesian modeling was explored to track microbial sources over the landscape. The land cover information of three watersheds (the lower Dungeness Watershed, the Middle Rio Grande Watershed, and the Arroyo Burro Watershed) in the United States was obtained either by classifying high resolution satellite images or directly using land cover datasets (e.g., National Land Cover Dataset, 2006 and 2011). Then, the relationship between land use/land cover (LULC) and microbial sources from these three geographically disparate watersheds were analyzed using Bayesian hierarchical models. The results showed the predictive positive associations between human sources of fecal contamination and developed area, between dog sources and grassland, and between bird sources and water, but negative associations between human sources and forest and water areas. Furthermore, the diversity of microbial sources had positive associations with landscape fragmentation and diversity indices. This study demonstrates associations between landscape patterns and major microbial sources and offers new insight in tracking the dominant sources of fecal contamination in water using geospatial and Bayesian techniques. (C) 2018 Elsevier B.V. All rights reserved.
机译:微生物源跟踪(MST)技术已被设计为识别水中粪便污染的宿主。但是,当前的MST技术无法提供特定来源的地理起源,因为它们没有提供观察点之外的任何空间信息。在这项研究中,研究了景观格局与主要微生物污染源之间的关联,并探索了地理空间技术(例如遥感和地理信息系统)和贝叶斯模型的应用,以追踪景观上的微生物来源。通过对高分辨率卫星图像进行分类或直接使用土地覆盖数据集(例如,国家土地覆盖),获得了美国三个流域(较低的Dungeness流域,Rio Grande中部流域和Arroyo Burro流域)的土地覆盖信息。数据集,2006年和2011年)。然后,使用贝叶斯层次模型分析了这三个地理上不同的流域的土地利用/土地覆盖(LULC)与微生物来源之间的关系。结果表明,人类粪便污染源与发达地区之间,狗源与草原之间,鸟类源与水之间存在预测性的正相关,而人类源与森林与水域之间的负相关。此外,微生物来源的多样性与景观破碎化和多样性指数呈正相关。这项研究证明了景观格局与主要微生物来源之间的关联,并为利用地理空间和贝叶斯技术追踪水中粪便污染的主要来源提供了新的见解。 (C)2018 Elsevier B.V.保留所有权利。

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