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Variation partitioning of diatom species data matrices: Understanding the influence of multiple factors on benthic diatom communities in tropical streams

机译:硅藻物种数据矩阵的变异划分:了解多种因素对热带河流底栖硅藻群落的影响

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摘要

Elucidating the confounding influence of multiple environmental factors on benthic diatom communities is important in developing water quality predictive models for better guidance of stream management efforts. The objective of this study was to explore the relative impact of metal pollution and hydromorphological alterations in, addition to nutrient enrichment and organic pollution, on diatom taxonomic composition with the view to improve stream diatom-based water quality inference models. Samples were collected twice at 20 sampling stations in the tropical Manyame Catchment, Zimbabwe. Diatom, macroinvertebrate communities and environmental factors were sampled and analysed. The variations in diatom community composition explained by different categories of environmental factors were analysed using canonical correspondence analysis using variance partitioning (partial CCA). The following variations were explained by the different predictor matrices: nutrient levels and organic pollution -10.4%, metal pollution - 83% and hydromorphological factors - 7.9%. Thus, factors other than nutrient levels and organic pollution explain additional significant variation in these diatom communities. Development of diatom-based stream water quality inference models that incorporate metal pollution and hydromorphological alterations, where these are key issues, is thus deemed necessary.
机译:阐明多种环境因素对底栖硅藻群落的混杂影响,对于开发水质预测模型以更好地指导河流管理工作很重要。这项研究的目的是探讨除养分富集和有机污染外,金属污染和水形态变化对硅藻生物分类组成的相对影响,以期改进基于硅藻的水质推断模型。在津巴布韦热带曼雅姆集水区的20个采样站采样两次。对硅藻,大型无脊椎动物群落和环境因素进行了采样和分析。通过使用方差划分(部分CCA)的规范对应分析,分析了由不同类别的环境因素引起的硅藻群落组成的变化。以下变化由不同的预测指标矩阵解释:营养素含量和有机污染为-10.4%,金属污染为83%,水形态因子为7.9%。因此,除了营养水平和有机污染外,其他因素也解释了这些硅藻群落的显着变化。因此,认为有必要开发基于硅藻的溪水水质推断模型,其中将金属污染和水形态变化纳入其中,这是关键问题。

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