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首页> 外文期刊>Marine ecology progress series >Species distribution modelling of marine benthos: a North Sea case study
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Species distribution modelling of marine benthos: a North Sea case study

机译:海洋底栖动物的物种分布模型:北海案例研究

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ABSTRACT: Species distribution models (SDMs) were applied to predict the distribution of benthic species in the North Sea. An understanding of species distribution patterns is essential to gain insight into ecological processes in marine ecosystems and to guide ecosystem management strategies. Therefore, we compared 9 different SDM methods, including GLM, GBM, FDA, SVM, RF, MAXENT, BIOCLIM, GARP and MARS, by using 10 environmental variables to model the distribution of 20 marine benthic species. Most of the models showed good or very good performance in terms of predictive power and accuracy, with highest mean area under the curve (AUC) values of 0.845 and 0.840, obtained for the MAXENT and GBM models, respectively. The poorest performance was shown by the BIOCLIM model, which had a mean AUC of 0.708. Nevertheless, the mapped distribution patterns varied remarkably depending on the model used, with up to 32.5% differences in predictions between models. For species with a narrow distribution range, the models showed a better performance based on the AUC than for species with a broad distribution range, which can most likely be attributed to the restricted spatial scale and the model evaluation procedure. Of the environmental variables, bottom water temperature and depth had the greatest effect on the distribution of 14 benthic species, based on MAXENT results. We examine the potential utility of this strategy for predicting future distribution of benthic species in response to climate change.
机译:摘要:采用物种分布模型(SDMs)预测北海底栖生物的分布。了解物种分布方式对于深入了解海洋生态系统的生态过程和指导生态系统管理策略至关重要。因此,我们通过使用10个环境变量来模拟20种海洋底栖生物的分布,比较了9种不同的SDM方法,包括GLM,GBM,FDA,SVM,RF,MAXENT,BIOCLIM,GARP和MARS。大多数模型在预测能力和准确性方面都表现出良好或非常好的性能,曲线下的最大平均面积(AUC)值分别为MAXENT和GBM模型的0.845和0.840。 BIOCLIM模型显示最差的性能,其平均AUC为0.708。但是,映射的分布模式根据所使用的模型而显着变化,模型之间的预测差异高达32.5%。对于分布范围较窄的物种,基于AUC的模型显示出的性能优于分布范围较广的物种,这很可能归因于空间规模有限和模型评估程序。根据MAXENT结果,在环境变量中,底部水温和深度对14种底栖生物的分布影响最大。我们研究了该策略在预测应对气候变化的底栖物种未来分布方面的潜在效用。

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