JOURNAL ARTICLE

A Bayesian Nonlinear Reduced Order Modeling Using Variational AutoEncoders

Nissrine AkkariFabien CasenaveElie HachemDavid Ryckelynck

Year: 2022 Journal:   Fluids Vol: 7 (10)Pages: 334-334   Publisher: Multidisciplinary Digital Publishing Institute

Abstract

This paper presents a new nonlinear projection based model reduction using convolutional Variational AutoEncoders (VAEs). This framework is applied on transient incompressible flows. The accuracy is obtained thanks to the expression of the velocity and pressure fields in a nonlinear manifold maximising the likelihood on pre-computed data in the offline stage. A confidence interval is obtained for each time instant thanks to the definition of the reduced dynamic coefficients as independent random variables for which the posterior probability given the offline data is known. The parameters of the nonlinear manifold are optimized as the ones of the decoder layers of an autoencoder. The parameters of the conditional posterior probability of the reduced coefficients are the ones of the encoder layers of the same autoencoder. The optimization of both sets of the encoder and the decoder parameters is obtained thanks to the application of a variational Bayesian method, leading to variational autoencoders. This Reduced Order Model (ROM) is not a regression model over the offline pre-computed data. The numerical resolution of the ROM is based on the Chorin projection method. We apply this new nonlinear projection-based Reduced Order Modeling (ROM) for a 2D Karman Vortex street flow and a 3D incompressible and unsteady flow in an aeronautical injection system.

Keywords:
Autoencoder Nonlinear system Projection (relational algebra) Applied mathematics Algorithm Computer science Posterior probability Artificial intelligence Mathematics Bayesian probability Artificial neural network Physics

Metrics

15
Cited By
7.69
FWCI (Field Weighted Citation Impact)
41
Refs
0.86
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Model Reduction and Neural Networks
Physical Sciences →  Physics and Astronomy →  Statistical and Nonlinear Physics
Hydraulic and Pneumatic Systems
Physical Sciences →  Engineering →  Mechanical Engineering
Nuclear Engineering Thermal-Hydraulics
Physical Sciences →  Engineering →  Aerospace Engineering

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