Department of Biology, Boston University, Boston, MA 02215.
Scripps Institution of Oceanography, University of California San Diego, La Jolla, CA 92093.
Proc Natl Acad Sci U S A. 2022 Jun 28;119(26):e2102466119. doi: 10.1073/pnas.2102466119. Epub 2022 Jun 22.
Severe deterioration of water quality in lakes, characterized by overabundance of algae and declining dissolved oxygen in the deep lake (DO), was one of the ecological crises of the 20th century. Even with large reductions in phosphorus loading, termed "reoligotrophication," DO and chlorophyll (CHL) have often not returned to their expected pre-20th-century levels. Concurrently, management of lake health has been confounded by possible consequences of climate change, particularly since the effects of climate are not neatly separable from the effects of eutrophication. Here, using Lake Geneva as an iconic example, we demonstrate a complementary alternative to parametric models for understanding and managing lake systems. This involves establishing an empirically-driven baseline that uses supervised machine learning to capture the changing interdependencies among biogeochemical variables and then combining the empirical model with a more conventional equation-based model of lake physics to predict DO over decadal time-scales. The hybrid model not only leads to substantially better forecasts, but also to a more actionable description of the emergent rates and processes (biogeochemical, ecological, etc.) that drive water quality. Notably, the hybrid model suggests that the impact of a moderate 3°C air temperature increase on water quality would be on the same order as the eutrophication of the previous century. The study provides a template and a practical path forward to cope with shifts in ecology to manage environmental systems for non-analogue futures.
湖泊水质严重恶化,表现为藻类过度繁殖和深层湖泊溶解氧(DO)下降,这是 20 世纪的生态危机之一。即使磷负荷大量减少,即所谓的“再贫营养化”,DO 和叶绿素(CHL)也常常没有恢复到 20 世纪前的预期水平。与此同时,由于气候变化的可能后果,湖泊健康的管理变得更加复杂,尤其是因为气候的影响与富营养化的影响并非泾渭分明。在这里,我们以日内瓦湖为例,展示了一种理解和管理湖泊系统的补充替代参数模型的方法。这涉及建立一个基于经验的基准,该基准使用有监督的机器学习来捕捉生物地球化学变量之间不断变化的相互依存关系,然后将经验模型与更传统的基于方程的湖泊物理模型结合起来,以预测数十年时间尺度上的 DO。混合模型不仅可以实现更好的预测,还可以更有效地描述驱动水质的新兴速率和过程(生物地球化学、生态等)。值得注意的是,混合模型表明,适度的 3°C 空气温度升高对水质的影响将与上世纪的富营养化程度相当。该研究为应对生态学变化提供了一个模板和实用的前进道路,以管理非模拟未来的环境系统。