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Estimating future temperature maxima in lakes across the United States using a surrogate modeling approach

机译:使用替代建模方法估算美国湖泊未来的最高温度

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摘要

A warming climate increases thermal inputs to lakes with potential implications for water quality and aquatic ecosystems. In a previous study, we used a dynamic water column temperature and mixing simulation model to simulate chronic (7-day average) maximum temperatures under a range of potential future climate projections at selected sites representative of different U.S. regions. Here, to extend results to lakes where dynamic models have not been developed, we apply a novel machine learning approach that uses Gaussian Process regression to describe the model response surface as a function of simplified lake characteristics (depth, surface area, water clarity) and climate forcing (winter and summer air temperatures and potential evapotranspiration). We use this approach to extrapolate predictions from the simulation model to the statistical sample of U.S. lakes in the National Lakes Assessment (NLA) database. Results provide a national-scale scoping assessment of the potential thermal risk to lake water quality and ecosystems across the U.S. We suggest a small fraction of lakes will experience less risk of summer thermal stress events due to changes in stratification and mixing dynamics, but most will experience increases. The percentage of lakes in the NLA with simulated 7-day average maximum water temperatures in excess of 30°C is projected to increase from less than 2% to approximately 22% by the end of the 21st century, which could significantly reduce the number of lakes that can support cold water fisheries. Site-specific analysis of the full range of factors that influence thermal profiles in individual lakes is needed to develop appropriate adaptation strategies.
机译:气候变暖增加了湖泊的热输入,对水质和水生生态系统可能产生潜在影响。在先前的研究中,我们使用了动态水柱温度和混合模拟模型来模拟代表美国不同地区的选定地点在一系列潜在的未来气候预测下的长期(7天平均)最高温度。在这里,为了将结果扩展到尚未开发动态模型的湖泊,我们应用了一种新颖的机器学习方法,该方法使用高斯过程回归将模型响应面描述为简化的湖泊特征(深度,表面积,水净度)的函数,并且气候强迫(冬季和夏季的气温和潜在的蒸散量)。在国家湖泊评估(NLA)数据库中,我们使用这种方法将模拟模型的预测推算到美国湖泊的统计样本中。结果提供了对美国全湖水质和生态系统潜在热风险的全国性范围评估。我们建议,由于分层和混合动力的变化,一小部分湖夏季热应力事件的风险较小,但大多数将经验增加。到21世纪末,NLA中模拟的7天平均最高水温超过30°C的湖泊百分比预计将从不到2%增加到大约22% ,这可以大大减少支持冷水渔业的湖泊数量。为了制定适当的适应策略,需要对影响各个湖泊热剖面的各种因素进行现场分析。

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