Rougier Thibaud, Lassalle Géraldine, Drouineau Hilaire, Dumoulin Nicolas, Faure Thierry, Deffuant Guillaume, Rochard Eric, Lambert Patrick
Irstea, EABX, Aquatic Ecosystems and Global Changes research unit, 50 avenue de Verdun, Gazinet Cestas, F-33612, Cestas, France.
Irstea, LISC, Complex Systems Engineering Laboratory, 9 avenue Blaise Pascal-CS 20085, 63178, Aubière, France.
PLoS One. 2015 Oct 1;10(10):e0139194. doi: 10.1371/journal.pone.0139194. eCollection 2015.
Species can respond to climate change by tracking appropriate environmental conditions in space, resulting in a range shift. Species Distribution Models (SDMs) can help forecast such range shift responses. For few species, both correlative and mechanistic SDMs were built, but allis shad (Alosa alosa), an endangered anadromous fish species, is one of them. The main purpose of this study was to provide a framework for joint analyses of correlative and mechanistic SDMs projections in order to strengthen conservation measures for species of conservation concern. Guidelines for joint representation and subsequent interpretation of models outputs were defined and applied. The present joint analysis was based on the novel mechanistic model GR3D (Global Repositioning Dynamics of Diadromous fish Distribution) which was parameterized on allis shad and then used to predict its future distribution along the European Atlantic coast under different climate change scenarios (RCP 4.5 and RCP 8.5). We then used a correlative SDM for this species to forecast its distribution across the same geographic area and under the same climate change scenarios. First, projections from correlative and mechanistic models provided congruent trends in probability of habitat suitability and population dynamics. This agreement was preferentially interpreted as referring to the species vulnerability to climate change. Climate change could not be accordingly listed as a major threat for allis shad. The congruence in predicted range limits between SDMs projections was the next point of interest. The difference, when noticed, required to deepen our understanding of the niche modelled by each approach. In this respect, the relative position of the northern range limit between the two methods strongly suggested here that a key biological process related to intraspecific variability was potentially lacking in the mechanistic SDM. Based on our knowledge, we hypothesized that local adaptations to cold temperatures deserved more attention in terms of modelling, but further in conservation planning as well.
物种可以通过在空间中追踪适宜的环境条件来应对气候变化,从而导致分布范围的变化。物种分布模型(SDMs)有助于预测这种分布范围变化的响应。对于少数物种,已经构建了相关的和机理的SDMs,但濒危溯河产卵鱼类欧洲西鲱(Alosa alosa)就是其中之一。本研究的主要目的是提供一个框架,用于联合分析相关的和机理的SDMs预测,以加强对受保护物种的保护措施。定义并应用了模型输出的联合表示和后续解释的指导原则。目前的联合分析基于新颖的机理模型GR3D(溯河产卵鱼类分布的全球重新定位动态),该模型以欧洲西鲱为参数化对象,然后用于预测其在不同气候变化情景(RCP 4.5和RCP 8.5)下沿欧洲大西洋海岸的未来分布。然后,我们使用该物种的相关SDM来预测其在相同地理区域和相同气候变化情景下的分布。首先,相关模型和机理模型的预测在栖息地适宜性概率和种群动态方面提供了一致的趋势。这种一致性被优先解释为该物种对气候变化的脆弱性。因此,气候变化不能被列为欧洲西鲱的主要威胁。SDMs预测之间预测范围界限的一致性是下一个关注点。当注意到差异时,需要加深我们对每种方法所建模的生态位的理解。在这方面,两种方法之间北部范围界限的相对位置强烈表明,机理SDM可能缺乏与种内变异性相关的关键生物学过程。基于我们的知识,我们假设在建模方面,以及在保护规划中,对低温的局部适应性都值得更多关注。