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Learning to reconstruct the bubble distribution with conductivity maps using Invertible Neural Networks and Error Diffusion

Authors :
Kumar, N.
(0000-0003-1547-2820) Krause, L.
(0000-0001-6072-3794) Wondrak, T.
(0000-0003-1639-5417) Eckert, S.
(0000-0002-9671-8628) Eckert, K.
(0000-0003-2467-5734) Gumhold, S.
Kumar, N.
(0000-0003-1547-2820) Krause, L.
(0000-0001-6072-3794) Wondrak, T.
(0000-0003-1639-5417) Eckert, S.
(0000-0002-9671-8628) Eckert, K.
(0000-0003-2467-5734) Gumhold, S.
Source :
11th World Congress on Industrial Process Tomography, 06.-08.09.2023, Mexiko-Stadt, Mexiko
Publication Year :
2023

Abstract

Electrolysis is crucial for eco-friendly hydrogen production, but gas bubbles generated during the process hinder reactions, reduce cell efficiency, and increase energy consumption. Additionally, these gas bubbles cause changes in the conductivity inside the cell, resulting in corresponding variations in the induced magnetic field around the cell. Therefore, measuring these gas bubble-induced magnetic field fluctuations using external magnetic sensors and solving the inverse problem of Biot-Savart’s Law allows for estimating the conductivity in the cell and, thus, bubble size and location. However, determining high-resolution conductivity maps from only a few induced magnetic field measurements is an ill-posed inverse problem. To overcome this, we exploit Invertible Neural Networks (INNs) to reconstruct the conductivity field. Our qualitative results and quantitative evaluation using random error diffusion show that INN achieves far superior performance compared to Tikhonov regularization.

Details

Database :
OAIster
Journal :
11th World Congress on Industrial Process Tomography, 06.-08.09.2023, Mexiko-Stadt, Mexiko
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1427183179
Document Type :
Electronic Resource