A predictive physics-aware hybrid reduced order model for reacting flows
- URL: http://arxiv.org/abs/2301.09860v1
- Date: Tue, 24 Jan 2023 08:39:20 GMT
- Title: A predictive physics-aware hybrid reduced order model for reacting flows
- Authors: Adri\'an Corrochano, Rodolfo S.M. Freitas, Alessandro Parente, Soledad
Le Clainche
- Abstract summary: A new hybrid predictive Reduced Order Model (ROM) is proposed to solve reacting flow problems.
The number of degrees of freedom is reduced from thousands of temporal points to a few POD modes with their corresponding temporal coefficients.
Two different deep learning architectures have been tested to predict the temporal coefficients.
- Score: 65.73506571113623
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this work, a new hybrid predictive Reduced Order Model (ROM) is proposed
to solve reacting flow problems. This algorithm is based on a dimensionality
reduction using Proper Orthogonal Decomposition (POD) combined with deep
learning architectures. The number of degrees of freedom is reduced from
thousands of temporal points to a few POD modes with their corresponding
temporal coefficients. Two different deep learning architectures have been
tested to predict the temporal coefficients, based on recursive (RNN) and
convolutional (CNN) neural networks. From each architecture, different models
have been created to understand the behavior of each parameter of the neural
network. Results show that these architectures are able to predict the temporal
coefficients of the POD modes, as well as the whole snapshots. The RNN shows
lower prediction error for all the variables analyzed. The model was also found
capable of predicting more complex simulations showing transfer learning
capabilities.
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