Potsdam Institute for Climate Impact Research, 14473 Potsdam, Germany.
Potsdam Institute for Climate Impact Research, 14473 Potsdam, Germany; Earth System Modelling, School of Engineering and Design, Technical University Munich., Munich 80333, Germany.
Sci Total Environ. 2024 Oct 15;947:174378. doi: 10.1016/j.scitotenv.2024.174378. Epub 2024 Jul 1.
Understanding the Amazon Rainforest's response to shifts in precipitation is paramount with regard to its sensitivity to climate change and deforestation. Studies using Dynamic Global Vegetation Models (DGVMs) typically only explore a range of socio-economically plausible pathways. In this study, we applied the state-of-the-art DGVM LPJmL to simulate the Amazon forest's response under idealized scenarios where precipitation is linearly decreased and subsequently increased between current levels and zero. Our results indicate a nonlinear but reversible relationship between vegetation Above Ground Biomass (AGB) and Mean Annual Precipitation (MAP), suggesting a threshold at a critical MAP value, below which vegetation biomass decline accelerates with decreasing MAP. We find that approaching this critical threshold is accompanied by critical slowing down, which can hence be expected to warn of accelerating biomass decline with decreasing rainfall. The critical precipitation threshold is lowest in the northwestern Amazon, whereas the eastern and southern regions may already be below their critical MAP thresholds. Overall, we identify the seasonality of precipitation and the potential evapotranspiration (PET) as the most important parameters determining the threshold value. While vegetation fires show little effect on the critical threshold and the biomass pattern in general, the ability of trees to adapt to water stress by investing in deep roots leads to increased biomass and a lower critical threshold in some areas in the eastern and southern Amazon where seasonality and PET are high. Our findings underscore the risk of Amazon forest degradation due to changes in the water cycle, and imply that regions that are currently characterized by higher water availability may exhibit heightened vulnerability to future drying.
了解降水变化对亚马逊雨林的响应对于理解其对气候变化和森林砍伐的敏感性至关重要。使用动态全球植被模型(DGVM)的研究通常只探索一系列在社会经济上合理的途径。在这项研究中,我们应用最先进的 DGVM LPJmL 来模拟亚马逊森林在理想化情景下的响应,在这些情景中,降水呈线性下降,随后从当前水平降至零。我们的结果表明,植被地上生物量(AGB)和年平均降水量(MAP)之间存在非线性但可恢复的关系,表明在一个临界 MAP 值存在一个阈值,低于该值,植被生物量的下降会随着 MAP 的减少而加速。我们发现,接近这个临界阈值伴随着关键的减速,因此可以预期,随着降雨量的减少,生物量的下降将加速。在西北亚马逊地区,这个临界降水阈值最低,而东部和南部地区可能已经低于其临界 MAP 阈值。总的来说,我们确定降水的季节性和潜在蒸散量(PET)是决定阈值值的最重要参数。虽然植被火灾对临界阈值和生物量模式的总体影响不大,但树木通过投资深根来适应水分胁迫的能力导致在东部和南部亚马逊地区的一些地区生物量增加和临界阈值降低,这些地区的季节性和 PET 较高。我们的研究结果强调了水循环变化导致亚马逊森林退化的风险,并暗示目前具有较高水分供应的地区可能对未来的干旱更为脆弱。