Author
Listed:
- Jonathan B Butcher
- Tan Zi
- Michelle Schmidt
- Thomas E Johnson
- Daniel M Nover
- Christopher M Clark
Abstract
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.
Suggested Citation
Jonathan B Butcher & Tan Zi & Michelle Schmidt & Thomas E Johnson & Daniel M Nover & Christopher M Clark, 2017.
"Estimating future temperature maxima in lakes across the United States using a surrogate modeling approach,"
PLOS ONE, Public Library of Science, vol. 12(11), pages 1-16, November.
Handle:
RePEc:plo:pone00:0183499
DOI: 10.1371/journal.pone.0183499
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