Data from: Predictions of response to temperature are contingent on model choice and data quality
The equations used to account for the temperature dependence of biological processes, including growth and metabolic rates are the foundations of our predictions of how global biogeochemistry and biogeography change in response to global climate change. We review and test the use of 12 equations use...
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Zusammenfassung: | The equations used to account for the temperature dependence of biological
processes, including growth and metabolic rates are the foundations of our
predictions of how global biogeochemistry and biogeography change in
response to global climate change. We review and test the use of 12
equations used to model the temperature dependence of biological processes
across the full range of their temperature response, including supra- and
sub-optimal temperatures. We focus on fitting these equations to thermal
response curves for phytoplankton growth, but also tested the equations on
a variety of traits across a wide diversity of organisms. We found that
many of the surveyed equations have comparable abilities to fit data and
equally high requirements for data quality (number of test temperatures
and range of response captured), but lead to different estimates of
cardinal temperatures and of the biological rates at these temperatures.
When these rate estimates are used for biogeographic predictions,
differences between the estimates of even the best fitting models can
exceed the global biological change predicted for a decade of global
warming. As a result, studies of the biological response to global changes
in temperature must make careful consideration of model selection and of
the quality of the data used for parametrizing these models. |
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DOI: | 10.5061/dryad.52mc5 |