LAPSE:2024.1047
Published Article

LAPSE:2024.1047
On Using CFD and Experimental Data to Train an Artificial Neural Network to Reconstruct ECVT Images: Application for Fluidized Bed Reactors
June 7, 2024
Abstract
Electrical capacitance volume tomography (ECVT) is an experimental technique capable of reconstructing 3D solid volume fraction distribution inside a sensing region. This technique has been used in fluidized beds as it allows for accessing data that are very difficult to obtain using other experimental devices. Recently, artificial neural networks have been proposed as a new type of reconstruction algorithm for ECVT devices. One of the main drawbacks of neural networks is that they need a database containing previously reconstructed images to learn from. Previous works have used databases with very simple or limited configurations that might not be well adapted to the complex dynamics of fluidized bed configurations. In this work, we study two different approaches: a supervised learning approach that uses simulated data as a training database and a reinforcement learning approach that relies only on experimental data. Our results show that both techniques can perform as well as the classical algorithms. However, once the neural networks are trained, the reconstruction process is much faster than the classical algorithms.
Electrical capacitance volume tomography (ECVT) is an experimental technique capable of reconstructing 3D solid volume fraction distribution inside a sensing region. This technique has been used in fluidized beds as it allows for accessing data that are very difficult to obtain using other experimental devices. Recently, artificial neural networks have been proposed as a new type of reconstruction algorithm for ECVT devices. One of the main drawbacks of neural networks is that they need a database containing previously reconstructed images to learn from. Previous works have used databases with very simple or limited configurations that might not be well adapted to the complex dynamics of fluidized bed configurations. In this work, we study two different approaches: a supervised learning approach that uses simulated data as a training database and a reinforcement learning approach that relies only on experimental data. Our results show that both techniques can perform as well as the classical algorithms. However, once the neural networks are trained, the reconstruction process is much faster than the classical algorithms.
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Keywords
3D ECT, deep learning, ECVT, fluidization, multi-phase flow
Subject
Suggested Citation
Montilla C, Ansart R, Majji A, Nadir R, Cid E, Simoncini D, Negny S. On Using CFD and Experimental Data to Train an Artificial Neural Network to Reconstruct ECVT Images: Application for Fluidized Bed Reactors. (2024). LAPSE:2024.1047
Author Affiliations
Montilla C: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France
Ansart R: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France
Majji A: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Nadir R: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Cid E: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France [ORCID]
Simoncini D: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Negny S: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France
Ansart R: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France
Majji A: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Nadir R: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Cid E: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France [ORCID]
Simoncini D: IRIT UMR 5505-CNRS, Université de Toulouse, 31030 Toulouse, France
Negny S: Laboratoire de Génie Chmique, Université de Toulouse, CNRS, INPT, UPS, 31030 Toulouse, France
Journal Name
Processes
Volume
12
Issue
2
First Page
386
Year
2024
Publication Date
2024-02-15
ISSN
2227-9717
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Original Submission
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PII: pr12020386, Publication Type: Journal Article
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LAPSE:2024.1047
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https://doi.org/10.3390/pr12020386
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Jun 7, 2024
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