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Effective models and predictability of chaotic multiscale systems via machine learning
Published 2 Jul 2020 in nlin.AO, cs.LG, and nlin.CD | (2007.08634v2)
Abstract: We scrutinize the use of machine learning, based on reservoir computing, to build data-driven effective models of multiscale chaotic systems. We show that, for a wide scale separation, machine learning generates effective models akin to those obtained using multiscale asymptotic techniques and, remarkably, remains effective in predictability also when the scale separation is reduced. We also show that predictability can be improved by hybridizing the reservoir with an imperfect model.
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