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Inferring Landscape-Scale Land-Use Impacts on Rivers Using Data from Mesocosm Experiments and Artificial Neural Networks

机译:利用中观试验和人工神经网络数据推断景观尺度土地利用对河流的影响

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摘要

Identifying land-use drivers of changes in river condition is complicated by spatial scale, geomorphological context, land management, and correlations among responding variables such as nutrients and sediments. Furthermore, variations in standard metrics, such as substratum composition, do not necessarily relate causally to ecological impacts. Consequently, the absence of a significant relationship between a hypothesised driver and a dependent variable does not necessarily indicate the absence of a causal relationship. We conducted a gradient survey to identify impacts of catchment-scale grazing by domestic livestock on river macroinvertebrate communities. A standard correlative approach showed that community structure was strongly related to the upstream catchment area under grazing. We then used data from a stream mesocosm experiment that independently quantified the impacts of nutrients and fine sediments on macroinvertebrate communities to train artificial neural networks (ANNs) to assess the relative influence of nutrients and fine sediments on the survey sites from their community composition. The ANNs developed to predict nutrient impacts did not find a relationship between nutrients and catchment area under grazing, suggesting that nutrients were not an important factor mediating grazing impacts on community composition, or that these ANNs had no generality or insufficient power at the landscape-scale. In contrast, ANNs trained to predict the impacts of fine sediments indicated a significant relationship between fine sediments and catchment area under grazing. Macroinvertebrate communities at sites with a high proportion of land under grazing were thus more similar to those resulting from high fine sediments in a mesocosm experiment than to those resulting from high nutrients. Our study confirms that 1) fine sediment is an important mediator of land-use impacts on river macroinvertebrate communities, 2) ANNs can successfully identify subtle effects and separate the effects of correlated variables, and 3) data from small-scale experiments can generate relationships that help explain landscape-scale patterns.
机译:空间尺度,地貌背景,土地管理以及诸如养分和沉积物等响应变量之间的相关性,使识别河流状况变化的土地利用驱动因素变得复杂。此外,标准指标的变化(例如基质组成)不一定与生态影响有因果关系。因此,假设的驱动程序与因变量之间不存在显着关系,并不一定表示因果关系。我们进行了梯度调查,以确定家畜的流域规模放牧对河流无脊椎动物群落的影响。一种标准的相关方法表明,群落结构与放牧下的上游集水区密切相关。然后,我们使用来自流中观试验的数据,该数据独立地量化了养分和精细沉积物对大型无脊椎动物群落的影响,以训练人工神经网络(ANN)来评估养分和精细沉积物从其群落组成对调查地点的相对影响。用来预测养分影响的人工神经网络在放牧条件下并未发现养分与流域面积之间的关系,这表明养分不是介导放牧对群落组成影响的重要因素,或者这些人工神经网络在景观尺度上没有普遍性或不足。相比之下,经过训练以预测精细沉积物影响的人工神经网络表明,放牧条件下精细沉积物与集水面积之间存在显着关系。因此,在放牧土地上高比例地点的大型无脊椎动物群落与在中观试验中由高精细沉积物产生的群落相比,与由高养分产生的群落更相似。我们的研究证实,1)细小泥沙是土地利用对河流无脊椎动物群落的重要调节剂,2)人工神经网络可以成功地识别出细微的影响并分离相关变量的影响,以及3)小规模实验的数据可以产生关系有助于解释景观格局。

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