Department of Computer Science, University of Helsinki, Helsinki, Finland.
Natural History Museum, University of Oslo, Oslo, Norway.
Glob Chang Biol. 2022 Jun;28(11):3557-3579. doi: 10.1111/gcb.16110. Epub 2022 Feb 24.
The global distribution of vegetation is largely determined by climatic conditions and feeds back into the climate system. To predict future vegetation changes in response to climate change, it is crucial to identify and understand key patterns and processes that couple vegetation and climate. Dynamic global vegetation models (DGVMs) have been widely applied to describe the distribution of vegetation types and their future dynamics in response to climate change. As a process-based approach, it partly relies on hard-coded climate thresholds to constrain the distribution of vegetation. What thresholds to implement in DGVMs and how to replace them with more process-based descriptions remain among the major challenges. In this study, we employ machine learning using decision trees to extract large-scale relationships between the global distribution of vegetation and climatic characteristics from remotely sensed vegetation and climate data. We analyse how the dominant vegetation types are linked to climate extremes as compared to seasonally or annually averaged climatic conditions. The results show that climate extremes allow us to describe the distribution and eco-climatological space of the vegetation types more accurately than the averaged climate variables, especially those types which occupy small territories in a relatively homogeneous ecological space. Future predicted vegetation changes using both climate extremes and averaged climate variables are less prominent than that predicted by averaged climate variables and are in better agreement with those of DGVMs, further indicating the importance of climate extremes in determining geographic distributions of different vegetation types. We found that the temperature thresholds for vegetation types (e.g. grass and open shrubland) in cold environments vary with moisture conditions. The coldest daily maximum temperature (extreme cold day) is particularly important for separating many different vegetation types. These findings highlight the need for a more explicit representation of the impacts of climate extremes on vegetation in DGVMs.
植被的全球分布在很大程度上由气候条件决定,并对气候系统产生反馈。为了预测未来植被对气候变化的响应变化,识别和理解将植被与气候联系起来的关键模式和过程至关重要。动态全球植被模型(DGVM)已广泛应用于描述植被类型的分布及其对气候变化的未来动态。作为一种基于过程的方法,它部分依赖于硬编码的气候阈值来限制植被的分布。在 DGVM 中实施哪些阈值以及如何用更基于过程的描述来替代它们仍然是主要挑战之一。在这项研究中,我们使用决策树的机器学习方法,从遥感植被和气候数据中提取植被全球分布与气候特征之间的大尺度关系。我们分析了主要植被类型与气候极端事件的联系,与季节性或年平均气候条件相比。结果表明,气候极端事件使我们能够比平均气候变量更准确地描述植被类型的分布和生态气候空间,特别是那些在相对同质的生态空间中占据小领土的类型。使用气候极端事件和平均气候变量预测的未来植被变化不如使用平均气候变量预测的变化显著,与 DGVM 的预测更为一致,这进一步表明气候极端事件在确定不同植被类型的地理分布方面的重要性。我们发现,寒冷环境中植被类型(如草地和开阔疏林)的温度阈值随湿度条件而变化。最冷的日最高温度(极端寒冷日)对于区分许多不同的植被类型尤为重要。这些发现强调了在 DGVM 中更明确表示气候极端事件对植被影响的必要性。