1. REDUCED MODEL-ERROR SOURCE TERMS FOR FLUID FLOW
- Author
-
Daan Crommelin and Wouter Edeling
- Subjects
Data-driven surrogate models ,Model error ,010504 meteorology & atmospheric sciences ,0103 physical sciences ,Fluid dynamics ,Mechanics ,01 natural sciences ,Reduced model ,Ocean flow ,010305 fluids & plasmas ,0105 earth and related environmental sciences ,Mathematics - Abstract
It is well known that the wide range of spatial and temporal scales present in geophysical flow problems represents a (currently) insurmountable computational bottleneck, which must be circumvented by a coarse-graining procedure. The effect of the unresolved fluid motions enters the coarse-grained equations as an unclosed forcing term, denoted as the ’eddy forcing’. Traditionally, the system is closed by approximate deterministic closure models, i.e. so-called parameterizations. Instead of creating a deterministic parameterization, some recent efforts have focused on creating a stochastic, data-driven surrogate model for the eddy forcing from a (limited) set of reference data, with the goal of accurately capturing the long-term flow statistics. Since the eddy forcing is a dynamically evolving field, a surrogate should be able to mimic the complex spatial patterns displayed by the eddy forcing. Rather than creating such a (fully data-driven) surrogate, we propose to precede the surrogate construction step by a proce- dure that replaces the eddy forcing with a new model-error source term which: i) is tailor-made to capture spatially-integrated statistics of interest, ii) strikes a balance between physical in- sight and data-driven modelling , and iii) significantly reduces the amount of training data that is needed. Instead of creating a surrogate for an evolving field, we now only require a surrogate model for one scalar time series per statistical quantity-of-interest. Our current surrogate mod- elling approach builds on a resampling strategy, where we create a probability density function of the reduced training data that is conditional on (time-lagged) resolved-scale variables. We derive the model-error source terms, and construct the reduced surrogate using an ocean model of two-dimensional turbulence in a doubly periodic square domain.
- Published
- 2019