1. Data‐Driven Stochastic Lie Transport Modeling of the 2D Euler Equations.
- Author
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Ephrati, Sagy R., Cifani, Paolo, Luesink, Erwin, and Geurts, Bernard J.
- Subjects
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GAUSSIAN processes , *PROBABILITY density function , *RANDOM noise theory , *STOCHASTIC processes , *EULER equations , *ORTHOGONAL functions , *TIME series analysis , *TURBULENCE - Abstract
In this paper, we propose and assess several stochastic parametrizations for data‐driven modeling of the two‐dimensional Euler equations using coarse‐grid SPDEs. The framework of Stochastic Advection by Lie Transport (SALT) (Cotter et al., 2019, https://doi.org/10.1137/18m1167929) is employed to define a stochastic forcing that is decomposed in terms of a deterministic basis (empirical orthogonal functions, EOFs) multiplied by temporal traces, here regarded as stochastic processes. The EOFs are obtained from a fine‐grid data set and are defined in conjunction with corresponding deterministic time series. We construct stochastic processes that mimic properties of the measured time series. In particular, the processes are defined such that the underlying probability density functions (pdfs) or the estimated correlation time of the time series are retained. These stochastic models are compared to stochastic forcing based on Gaussian noise, which does not use any information of the time series. We perform uncertainty quantification tests and compare stochastic ensembles in terms of mean and spread. Reduced uncertainty is observed for the developed models. On short timescales, such as those used for data assimilation (Cotter et al., 2020a, https://doi.org/10.1007/s10955-020-02524-0), the stochastic models show a reduced ensemble mean error and a reduced spread. Particularly, using estimated pdfs yields stochastic ensembles which rarely fail to capture the reference solution on small time scales, whereas introducing correlation into the stochastic models improves the quality of the coarse‐grid predictions with respect to Gaussian noise. Plain Language Summary: Turbulent flows often contain small‐scale fluctuations that behave in a seemingly random way. Predicting the behavior of such a flow is challenging, since simulating the flow in full detail is computationally expensive. To reduce the computational costs, one can initially ignore the small‐scale fluctuations and subsequently try to include the effects of these scales by including an additional term into the equations that describe the flow. We propose and assess various models that represent the influence of the small‐scales through a stochastic (random) forcing term. We compare three types of stochastic processes that use information from high‐resolution data. It is found that using more information from the data leads to a reduced spread and ensemble mean error. Key Points: High‐resolution numerical simulation data are used to extract small‐scale features of the 2D Euler equationsAn empirical orthogonal function (EOF)‐based stochastic forcing is proposed, where the EOF time series serve to define data‐driven stochastic processes for each EOFThe data‐driven processes are found to produce ensembles with reduced mean error and spread, compared to using Gaussian noise [ABSTRACT FROM AUTHOR]
- Published
- 2023
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