A multi-lake comparative analysis of the General Lake Model (GLM): Stress-testing across a global observatory network
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Author(s)
Frassl, Marieke A
Arhonditsis, George B
Gal, Gideon
Hamilton, David P
Hanson, Paul C
Hetherington, Amy L
Melack, John M
Read, Jordan S
Rinke, Karsten
Rigosi, Anna
Trolle, Dennis
Winslow, Luke
Adrian, Rita
Ayala, Ana I
Bocaniov, Serghei A
Boehrer, Bertram
Boon, Casper
Brookes, Justin D
Bueche, Thomas
Busch, Brendan D
Copetti, Diego
Cortes, Alicia
de Eyto, Elvira
Elliott, J Alex
Gallina, Nicole
Gilboa, Yael
Guyennon, Nicolas
Huang, Lei
Kerimoglu, Onur
Lenters, John D
MacIntyre, Sally
Makler-Pick, Vardit
McBride, Chris G
Moreira, Santiago
Oezkundakci, Deniz
Pilotti, Marco
Rueda, Francisco J
Rusak, James A
Samal, Nihar R
Schmid, Martin
Shatwell, Tom
Snorthheim, Craig
Soulignac, Frederic
Valerio, Giulia
van der Linden, Leon
Vetter, Mark
Vincon-Leite, Brigitte
Wang, Junbo
Weber, Michael
Wickramaratne, Chaturangi
Woolway, R Iestyn
Yao, Huaxia
Hipsey, Matthew R
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Abstract
The modelling community has identified challenges for the integration and assessment of lake models due to the diversity of modelling approaches and lakes. In this study, we develop and assess a one-dimensional lake model and apply it to 32 lakes from a global observatory network. The data set included lakes over broad ranges in latitude, climatic zones, size, residence time, mixing regime and trophic level. Model performance was evaluated using several error assessment metrics, and a sensitivity analysis was conducted for nine parameters that governed the surface heat exchange and mixing efficiency. There was low correlation between input data uncertainty and model performance and predictions of temperature were less sensitive to model parameters than prediction of thermocline depth and Schmidt stability. The study provides guidance to where the general model approach and associated assumptions work, and cases where adjustments to model parameterisations and/or structure are required.
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ENVIRONMENTAL MODELLING & SOFTWARE
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102
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DP190101848
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Environmental sciences