4.4 Article

Probabilistic neural networks for fluid flow surrogate modeling and data recovery

期刊

PHYSICAL REVIEW FLUIDS
卷 5, 期 10, 页码 -

出版社

AMER PHYSICAL SOC
DOI: 10.1103/PhysRevFluids.5.104401

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资金

  1. U.S. Department of Energy (DOE), Office of Science, Office of Advanced Scientific Computing Research [DE-AC0206CH11357]
  2. DOE Office of Science User Facility [DE-AC02-06CH11357]
  3. Japan Society for the Promotion of Science (KAKENHI Grant) [18H03758]
  4. U.S. Army Research Office [W911NF-17-1-0118]
  5. U.S. Air Force Office of Scientific Research [FA9550-16-1-0650]
  6. ALCF Margaret Butler Fellowship
  7. Grants-in-Aid for Scientific Research [18H03758] Funding Source: KAKEN

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We consider the use of probabilistic neural networks for fluid flow surrogate modeling and data recovery. This framework is constructed by assuming that the target variables are sampled from a Gaussian distribution conditioned on the inputs. Consequently, the overall formulation sets up a procedure to predict the hyperparameters of this distribution which are then used to compute an objective function given training data. We demonstrate that this framework has the ability to provide for prediction confidence intervals based on the assumption of a probabilistic posterior, given an appropriate model architecture and adequate training data. The applicability of the present framework to cases with noisy measurements and limited observations is also assessed. To demonstrate the capabilities of this framework, we consider canonical regression problems of fluid dynamics from the viewpoint of reduced-order modeling and spatial data recovery for four canonical data sets. The examples considered in this study arise from (i) the shallow-water equations, (ii) a two-dimensional cylinder flow, (iii) the wake of a NACA0012 airfoil with a Gurney flap, and (iv) the NOAA sea surface temperature data set. The present results indicate that the probabilistic neural network not only produces a machine-learning-based fluid flow surrogate model but also systematically quantifies the uncertainty therein to assist with model interpretability.

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