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Extrapolation in species distribution modelling. Application to Southern Ocean marine species

机译:物种分布建模中的外推。在南海海洋物种的应用

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Species distribution modelling (SDM) has been increasingly applied to Southern Ocean case studies over the past decades, to map the distribution of species and highlight environmental settings driving species distribution. Predictive models have been commonly used for conservation purposes and supporting the delineation of marine protected areas, but model predictions are rarely associated with extrapolation uncertainty maps.In this study, we used the Multivariate Environmental Similarity Surface (MESS) index to quantify model uncertainty associated to extrapolation. Considering the reference dataset of environmental conditions for which species presence-only records are modelled, extrapolation corresponds to the part of the projection area for which one environmental value at least falls outside of the reference dataset.Six abundant and common sea star species of marine benthic communities of the Southern Ocean were used as case studies. Results show that up to 78% of the projection area is extrapolation, i.e. beyond conditions used for model calibration. Restricting the projection space by the known species ecological requirements (e.g. maximal depth, upper temperature tolerance) and increasing the size of presence datasets were proved efficient to reduce the proportion of extrapolation areas. We estimate that multiplying sampling effort by 2 or 3-fold should help reduce the proportion of extrapolation areas down to 10% in the six studied species.Considering the unexpectedly high levels of extrapolation uncertainty measured in SDM predictions, we strongly recommend that studies report information related to the level of extrapolation. Waiting for improved datasets, adapting modelling methods and providing such uncertainy information in distribution modelling studies are a necessity to accurately interpret model outputs and their reliability.
机译:物种分布建模(SDM)越来越多地应用于过去几十年的南海案例研究,以映射物种的分布并突出环境设施驾驶物种分布。预测模型通常用于保护目的并支持划分的海洋保护区,但模型预测很少与外推不确定性图相关联。在本研究中,我们使用了多元环境相似性表面(混乱)索引来量化与之相关的模型不确定性推断。考虑到物种存在的物种的环境条件的参考数据集是建模的,外推对应于投影区域的一部分,其中一个环境值至少落在参考数据集之外的一个环境值。诸如海洋弯曲的普通和常见的海星种类。南海的群落被用作案例研究。结果表明,高达78%的投影区域是外推,即超出用于模型校准的条件。通过已知的物种生态要求(例如,最大深度,高温耐受性)和增加存在数据集的尺寸来限制投影空间,以减少推断区域的比例。我们估计乘以2或3倍的乘以抽样努力应该有助于将外推区域的比例降低到六个研究的物种中的10%。在SDM预测中测量的意外高水平的外推不确定性,我们强烈建议研究报告信息与外推水平有关。等待改进的数据集,调整建模方法并提供分发建模研究中的这种不确定信息是准确地解释模型输出及其可靠性的必要性。

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