Stream temperature is thought to be a primary determinant of the macro-spatial distribution of stream biota, but we lack temperature data for most streams.'/> Using modelled stream temperatures to predict macro-spatial patterns of stream invertebrate biodiversity
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Using modelled stream temperatures to predict macro-spatial patterns of stream invertebrate biodiversity

机译:使用建模的河流温度预测河流无脊椎动物生物多样性的宏观空间格局

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list list-type="1" id="fwb12459-list-0001"> Stream temperature is thought to be a primary determinant of the macro-spatial distribution of stream biota, but we lack temperature data for most streams. Past research often relied on surrogates, such as altitude, latitude, catchment area (ALCA) and air temperature to study biota-temperature relationships. However, temperature surrogates may not accurately represent the thermal environments experienced by the biota and could thus produce misleading inferences regarding such relationships. In the absence of observations, modelled stream temperature could improve both predictions and interpretations of stream biodiversity patterns. We tested this hypothesis by relating stream benthic invertebrate assemblage structure and composition at 92 reference-quality streams to ALCA, air temperature, modelled stream temperature and measured stream temperature, that is a progression from a coarse surrogate to directly measured water temperature. Modelled stream temperatures were obtained from a U.S.A.-wide model developed previously with data from 569 reference-quality sites. Variation in taxonomic composition, measured with an ordination, was strongly and almost identically associated with both modelled and measured stream temperature, but was less strongly associated with ALCA and air temperature. We also built predictive niche models to assess how choice of thermal metrics affected model performance. Model performance was measured as the precision with which each model predicted the number of taxa at a site (i.e. observed-to-expected taxon ratios). Niche models that contained modelled or measured stream temperature were more precise than those based on air temperature and ALCA. In addition, we compared the predicted probabilities of occurrence using niche models based on both modelled and measured stream temperatures. The two produced predicted probabilities of occurrence that were statistically indistinguishable for most (79%) taxa. Finally, we calculated thermal optima for each taxon as the abundance-weighted average of stream temperature at sites where each taxon occurred. Thermal optima produced with modelled and measured stream temperatures were almost identical. Large-scale models of stream temperature can be sufficiently accurate and precise to detect temperature-driven patterns in stream biodiversity and should be useful in predicting the effects of climate change and other human-caused thermal alterations on stream biodiversity. doi origin="wiley" registered="yes">10.1111/(ISSN)1365-2427/doi
机译:溪流温度被认为是溪流生物区系宏观空间分布的主要决定因素,但我们缺乏大多数溪流的温度数据。过去的研究通常依靠诸如海拔,纬度,集水区(ALCA)和气温之类的替代物来研究生物群温度关系。但是,温度替代物可能无法准确地代表生物群所经历的热环境,因此可能会产生有关此类关系的误导性推断。在没有观测资料的情况下,模拟河流温度可以改善河流生物多样性模式的预测和解释。我们通过将92种参考质量溪流的底栖无脊椎动物集合结构和组成与ALCA,空气温度,模拟溪流温度和测得的溪流温度(从粗略替代物到直接测得的水温的变化)相关联,检验了这一假设。建模的河流温度是从先前用569个参考质量站点的数据开发的美国范围的模型中获得的。通过排序测得的分类学组成变化与模拟和测得的溪流温度密切相关,而与ALCA和气温无关。我们还建立了预测性利基模型,以评估热指标的选择如何影响模型性能。将模型性能作为每个模型预测站点上分类单元数量的精确度(即观察到的预期分类单元比率)进行度量。包含已建模或测量的河流温度的利基模型比基于气温和ALCA的模型更为精确。另外,我们基于模型化的和测得的溪流温度,使用利基模型比较了预测的发生概率。对于大多数(79%)类群,这两个产生的预测发生概率在统计学上是无法区分的。最后,我们将每个分类单元的热最佳值计算为每个分类单元发生地点的河流温度的丰度加权平均值。通过模拟和测量的料流温度产生的热最佳值几乎相同。大规模的河流温度模型可以足够准确和精确,以检测河流生物多样性中温度驱动的模式,并且对预测气候变化和其他人为造成的热变化对河流生物多样性的影响很有用。 10.1111 /(ISSN)1365-2427

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