Incorporating symmetrical and asymmetrical dispersal into Ecological Niche Models in freshwater environments

Q2 Environmental Science
M. R. Parreira, Geiziane Tessarolo, J. Nabout
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引用次数: 0

Abstract

Abstract: Aim Ecological niche models (ENMs) are based mainly on environmental (mostly climatic) and occurrence data to predict the potential distribution of species. In freshwater habitats, species dispersal is not restricted only by physical barriers but also by the directional movement of the hydrographic network, which can be considered through spatial predictors. Here, we aim to evaluate the effect of including asymmetrical and symmetrical spatial predictors in the potential geographic distribution of a freshwater fish in the Tocantins-Araguaia River basin, Brazil. Methods For this, we built models with seven variable sets representing the climatic and spatial models, as well as their interactions. Results We found that the overall best models (higher evaluation and lower variation among modeling methods) are those built using AEM (asymmetrical dispersal [i.e., dispersal along the river flow path]), either alone or in combination with environmental variables (ENV). Moreover, the inclusion of asymmetrical dispersal variables, taking into account dispersal limitations of species, decreased the overprediction to climatically suitable but disconnected areas through rivers. Conclusions Therefore, future ENM studies, especially those using species groups with directional dispersal, should consider the inclusion of asymmetrical spatial predictors to increase the model’s accuracy and ecological reality.
淡水环境中对称与不对称扩散的生态位模型
摘要:目的生态位模型(ENMs)主要基于环境(主要是气候)和发生数据来预测物种的潜在分布。在淡水生境中,物种的扩散不仅受到物理屏障的限制,还受到水文网络的定向运动的限制,这可以通过空间预测因子来考虑。在这里,我们旨在评估包括不对称和对称空间预测因子在巴西托坎廷-阿拉瓜亚河流域淡水鱼潜在地理分布中的影响。为此,我们建立了7个变量集的模型,分别代表气候和空间模型及其相互作用。结果发现,无论是单独使用还是结合环境变量(ENV),采用AEM(不对称扩散[即沿河道扩散])建立的模型总体上是最好的(在建模方法中评价较高,变化较小)。此外,考虑到物种的扩散限制,不对称扩散变量的加入减少了对气候适宜但经河流不连通地区的过度预测。因此,未来的ENM研究,特别是那些使用定向扩散的物种群的研究,应该考虑包括不对称的空间预测因子,以提高模型的准确性和生态真实性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Acta Limnologica Brasiliensia
Acta Limnologica Brasiliensia Environmental Science-Ecology
CiteScore
2.20
自引率
0.00%
发文量
17
审稿时长
50 weeks
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