Predictions of biodiversity trajectories under climate change are crucial in order to act effectively in maintaining the diversity of species. In many ecological applications, future predictions are made under various global warming scenarios as described by a range of different climate models. The outputs of these various predictions call for a reliable interpretation. We propose a interpretable and flexible two step methodology to measure the similarity between predicted species range maps and cluster the future scenario predictions utilizing a spectral clustering technique. We find that clustering based on ecological impact (predicted species range maps) is mainly driven by the amount of warming. We contrast this with clustering based only on predicted climate features, which is driven mainly by climate models. The differences between these clusterings illustrate that it is crucial to incorporate ecological information to understand the relevant differences between climate models. The findings of this work can be used to better synthesize forecasts of biodiversity loss under the wide spectrum of results that emerge when considering potential future biodiversity loss.
翻译:对气候变化下的生物多样性轨迹的预测对于有效维持物种多样性至关重要。在许多生态应用中,未来预测是在各种不同的气候模型描述的各种全球升温假设情景下作出的。这些预测的结果需要可靠的解释。我们提出了一个可解释和灵活的两步方法,以衡量预测物种分布图与利用光谱群集技术对未来假设预测的相似性。我们发现,基于生态影响(预设物种分布图)的集群主要受变暖量的驱动。我们与此形成对照的是,仅仅根据预测气候特征进行集群,而气候特征主要是由气候模型驱动的。这些集群之间的差异表明,必须纳入生态信息,以了解气候模型之间的相关差异。可以利用这项工作的结果更好地综合在考虑未来生物多样性潜在损失时出现的广泛成果下对生物多样性损失的预测。