Lake Water Temperature Modeling in an Era of Climate Change: Data Sources, Models, and Future Prospects

Author:

Piccolroaz S.1ORCID,Zhu S.2,Ladwig R.3ORCID,Carrea L.4,Oliver S.5ORCID,Piotrowski A. P.6,Ptak M.7ORCID,Shinohara R.8ORCID,Sojka M.9ORCID,Woolway R. I.10ORCID,Zhu D. Z.11ORCID

Affiliation:

1. Department of Civil Environmental and Mechanical Engineering University of Trento Trento Italy

2. College of Hydraulic Science and Engineering Yangzhou University Yangzhou China

3. Center for Limnology University of Wisconsin‐Madison Madison WI USA

4. Department of Meteorology University of Reading Reading UK

5. U.S. Geological Survey Upper Midwest Water Science Center Madison WI USA

6. Institute of Geophysics Polish Academy of Sciences Warsaw Poland

7. Department of Hydrology and Water Management Adam Mickiewicz University Poznań Poland

8. National Institute for Environmental Studies Tsukuba Japan

9. Department of Land Improvement, Environmental Development and Spatial Management Poznań University of Life Sciences Poznań Poland

10. School of Ocean Sciences Bangor University Bangor UK

11. Department of Civil and Environmental Engineering University of Alberta Edmonton AB Canada

Abstract

AbstractLake thermal dynamics have been considerably impacted by climate change, with potential adverse effects on aquatic ecosystems. To better understand the potential impacts of future climate change on lake thermal dynamics and related processes, the use of mathematical models is essential. In this study, we provide a comprehensive review of lake water temperature modeling. We begin by discussing the physical concepts that regulate thermal dynamics in lakes, which serve as a primer for the description of process‐based models. We then provide an overview of different sources of observational water temperature data, including in situ monitoring and satellite Earth observations, used in the field of lake water temperature modeling. We classify and review the various lake water temperature models available, and then discuss model performance, including commonly used performance metrics and optimization methods. Finally, we analyze emerging modeling approaches, including forecasting, digital twins, combining process‐based modeling with deep learning, evaluating structural model differences through ensemble modeling, adapted water management, and coupling of climate and lake models. This review is aimed at a diverse group of professionals working in the fields of limnology and hydrology, including ecologists, biologists, physicists, engineers, and remote sensing researchers from the private and public sectors who are interested in understanding lake water temperature modeling and its potential applications.

Funder

Natural Science Research of Jiangsu Higher Education Institutions of China

Ministero dell’Istruzione, dell’Università e della Ricerca

Publisher

American Geophysical Union (AGU)

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