In this study, we investigate how to use sample data, generated by a fully resolved multiscale model, to construct stochastic representations of unresolved scales in reduced models. We explore three methods to model these stochastic representations. They employ empirical distributions, conditional Markov chains, and conditioned Ornstein Uhlenbeck processes, respectively. The Kac Zwanzig heat bath model is used as a prototype model to illustrate the methods. We demonstrate that all tested strategies reproduce the dynamics of the resolved model variables accurately. Furthermore, we show that the computational cost of the reduced model is several orders of magnitude lower than that of the fully resolved model.
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Sissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, ItalySissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
Ivagnes, Anna
Stabile, Giovanni
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Sissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
Univ Urbino Carlo Bo, Dept Pure & Appl Sci Informat & Math Sect, Urbino, ItalySissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
Stabile, Giovanni
Mola, Andrea
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Scuola IMT Alti Studi, Multiscale Anal Mat Unit, Lucca, ItalySissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
Mola, Andrea
Iliescu, Traian
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Virginia Tech, Dept Math, Blacksburg, VA USASissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
Iliescu, Traian
Rozza, Gianluigi
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Sissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, ItalySissa, Int Sch Adv Studies, Math Area, mathLab, Trieste, Italy
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Univ Michigan, Dept Aerosp Engn, Ann Arbor, MI USA
Univ Michigan, Dept Aerosp Engn, Ann Arbor, MI 48109 USAUniv Michigan, Dept Aerosp Engn, Ann Arbor, MI USA