Suppr超能文献

探索未知:在非类似气候条件下对外来物种进行建模时变量选择的重要性。

Venturing Into the Unknown: The Importance of Variable Selection When Modelling Alien Species Under Non-Analogue Climatic Conditions.

作者信息

Vorstenbosch Tom, Essl Franz, Lenzner Bernd, Wessely Johannes, Dullinger Stefan

机构信息

Department of Botany and Biodiversity Research University of Vienna Vienna Austria.

Vienna Doctoral School of Ecology and Evolution University of Vienna Vienna Austria.

出版信息

Ecol Evol. 2024 Oct 28;14(10):e70490. doi: 10.1002/ece3.70490. eCollection 2024 Oct.

Abstract

Species distribution models (SDMs) are widely used to address species' responses to bioclimatic conditions in the fields of ecology, biogeography and conservation. Among studies that have addressed reasons for model prediction variability, the impact of climatic variable selection has received limited attention and is rarely assessed in sensitivity analyses. Here, we tested the assumption that this aspect of model design is a major source of uncertainty, especially when projections are made to non-analogue climates. As a study system, we used 142 alien plant species introduced to the sub-Antarctic islands. Based on global occurrence data, we fitted SDMs as functions of seven bioclimatic variable sets that only differed in the identity of two temperature variables. Moreover, we calculated the overlap between the island's climatic conditions and the niches the species have realised outside of the islands. Despite comparable internal evaluation metrics, projections of these models were in sharp contrast with each other, with some models predicting the sub-Antarctic islands' climate to be almost ubiquitously suitable to most species and others unsuitable to almost all species. In particular, the mean temperature of the warmest month led to strong underpredictions of the SDMs, while its replacement by the mean temperature of the coldest month led to massive overpredictions. Partitioning the variance in projections demonstrated that predictor identity was its most important source, followed by island and species identity. The size of area projected to be suitable was also related to the overlap in predictor values realised in the global range of species (outside of the islands) and on the islands. Our findings emphasise the importance of bioclimatic variable selection in SDMs, especially when making projections to non-analogue climates. Such extrapolations are often required, especially when using SDMs to assess invasion risk under both current and future climates.

摘要

物种分布模型(SDMs)在生态学、生物地理学和保护领域中被广泛用于研究物种对生物气候条件的响应。在探讨模型预测变异性原因的研究中,气候变量选择的影响受到的关注有限,且在敏感性分析中很少被评估。在此,我们检验了这样一个假设,即模型设计的这一方面是不确定性的一个主要来源,尤其是在对非类似气候进行预测时。作为一个研究系统,我们使用了引入亚南极岛屿的142种外来植物物种。基于全球分布数据,我们将SDMs拟合为七个生物气候变量集的函数,这些变量集仅在两个温度变量的标识上有所不同。此外,我们计算了岛屿气候条件与这些物种在岛屿之外所实现的生态位之间的重叠。尽管内部评估指标相当,但这些模型的预测结果却截然不同,一些模型预测亚南极岛屿的气候几乎对大多数物种普遍适宜,而另一些模型则预测几乎对所有物种都不适宜。特别是,最暖月的平均温度导致SDMs的预测严重偏低,而用最冷月的平均温度替代它则导致大量的预测偏高。对预测方差进行分解表明,预测变量的标识是其最重要的来源,其次是岛屿和物种的标识。预测为适宜的面积大小也与物种在全球范围(岛屿之外)和岛屿上所实现的预测变量值的重叠有关。我们的研究结果强调了在SDMs中生物气候变量选择的重要性,尤其是在对非类似气候进行预测时。这种外推通常是必要的,特别是在使用SDMs评估当前和未来气候下的入侵风险时。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/bab3/11518623/6f4cc4c4ae94/ECE3-14-e70490-g003.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验