The strategy of model building in climate science
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Walmsley, Lachlan
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Springer International Publishing AG
Abstract
In the 1960s, theoretical biologist Richard Levins criticised modellers in his own
discipline of population biology for pursuing the “brute force” strategy of building
hyper-realistic models. Instead of exclusively chasing complexity, Levins advocated
for the use of multiple different kinds of complementary models, including much
simpler ones. In this paper, I argue that the epistemic challenges Levins attributed to
the brute force strategy still apply to state-of-the-art climate models today: they have
big appetites for unattainable data, they are limited by computational tractability, and
they are incomprehensible to the human modeller. Along the lines Levins described,
this uncertainty generates a trade-off between realistic, precise models with predictive
power and simple, highly idealised models that facilitate understanding. In addition
to building ensembles of highly complex dynamical models, climate modellers can
address model uncertainty by comparing models of different types, such as dynamical
and data-driven models, and by systematically comparing models at different levels
of what climate modellers call the model hierarchy. Despite its age, Levins’ paper
remains incredibly insightful and should be considered an important entry into the
philosophy of computational modelling.
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Restricted until
2099-12-31
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