Error Approximation and Bias Correction in Dynamic Problems using a Recurrent Neural Network/Finite Element Hybrid Model

07/05/2023
by   Moritz von Tresckow, et al.
0

This work proposes a hybrid modeling framework based on recurrent neural networks (RNNs) and the finite element (FE) method to approximate model discrepancies in time dependent, multi-fidelity problems, and use the trained hybrid models to perform bias correction of the low-fidelity models. The hybrid model uses FE basis functions as a spatial basis and RNNs for the approximation of the time dependencies of the FE basis' degrees of freedom. The training data sets consist of sparse, non-uniformly sampled snapshots of the discrepancy function, pre-computed from trajectory data of low- and high-fidelity dynamic FE models. To account for data sparsity and prevent overfitting, data upsampling and local weighting factors are employed, to instigate a trade-off between physically conforming model behavior and neural network regression. The proposed hybrid modeling methodology is showcased in three highly non-trivial engineering test-cases, all featuring transient FE models, namely, heat diffusion out of a heat sink, eddy-currents in a quadrupole magnet, and sound wave propagation in a cavity. The results show that the proposed hybrid model is capable of approximating model discrepancies to a high degree of accuracy and accordingly correct low-fidelity models.

READ FULL TEXT

page 20

page 22

page 24

page 29

research
02/26/2021

Multi-fidelity regression using artificial neural networks: efficient approximation of parameter-dependent output quantities

Highly accurate numerical or physical experiments are often time-consumi...
research
03/22/2021

Error estimate of the Non Intrusive Reduced Basis method with finite volume schemes

The context of this paper is the simulation of parameter-dependent parti...
research
08/25/2020

Machine learning applied in the multi-scale 3D stress modelling

This paper proposes a methodology to estimate stress in the subsurface b...
research
05/07/2020

Efficient Characterization of Dynamic Response Variation Using Multi-Fidelity Data Fusion through Composite Neural Network

Uncertainties in a structure is inevitable, which generally lead to vari...
research
06/29/2021

Quasi-3-D Spectral Wavelet Method for a Thermal Quench Simulation

The finite element method is widely used in simulations of various field...
research
10/15/2019

Identification of Behavioural Models for Railway Turnouts Monitoring

This study introduces a low-complexity behavioural model to describe the...

Please sign up or login with your details

Forgot password? Click here to reset