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Comparison of Machine Learning Methods for Image Reconstruction Using the LSTM Classifier in Industrial Electrical Tomography

Author

Listed:
  • Grzegorz Kłosowski

    (Faculty of Management, Lublin University of Technology, 20-618 Lublin, Poland)

  • Tomasz Rymarczyk

    (Faculty of Transport and Computer Science, University of Economics and Innovation in Lublin, 20-209 Lublin, Poland
    Research & Development Centre Netrix S.A., 20-704 Lublin, Poland)

  • Konrad Niderla

    (Faculty of Transport and Computer Science, University of Economics and Innovation in Lublin, 20-209 Lublin, Poland
    Research & Development Centre Netrix S.A., 20-704 Lublin, Poland)

  • Magdalena Rzemieniak

    (Faculty of Management, Lublin University of Technology, 20-618 Lublin, Poland)

  • Artur Dmowski

    (Faculty of Transport and Computer Science, University of Economics and Innovation in Lublin, 20-209 Lublin, Poland)

  • Michał Maj

    (Faculty of Transport and Computer Science, University of Economics and Innovation in Lublin, 20-209 Lublin, Poland
    Research & Development Centre Netrix S.A., 20-704 Lublin, Poland)

Abstract

Electrical tomography is a non-invasive method of monitoring the interior of objects, which is used in various industries. In particular, it is possible to monitor industrial processes inside reactors and tanks using tomography. Tomography enables real-time observation of crystals or gas bubbles growing in a liquid. However, obtaining high-resolution tomographic images is problematic because it involves solving the so-called ill-posed inverse problem. Noisy input data cause problems, too. Therefore, the use of appropriate hardware solutions to eliminate this phenomenon is necessary. An important cause of obtaining accurate tomographic images may also be the incorrect selection of algorithmic methods used to convert the measurements into the output images. In a dynamically changing environment of a tank reactor, selecting the optimal algorithmic method used to create a tomographic image becomes an optimization problem. This article presents the machine learning method’s original concept of intelligent selection depending on the reconstructed case. The long short-term memory network was used to classify the methods to choose one of the five homogenous methods—elastic net, linear regression with the least-squares learner, linear regression with support vector machine learner, support vector machine model, or artificial neural networks. In the presented research, tomographic images of selected measurement cases, reconstructed using five methods, were compared. Then, the selection methods’ accuracy was verified thanks to the long short-term memory network used as a classifier. The results proved that the new concept of long short-term memory classification ensures better tomographic reconstructions efficiency than imaging all measurement cases with single homogeneous methods.

Suggested Citation

  • Grzegorz Kłosowski & Tomasz Rymarczyk & Konrad Niderla & Magdalena Rzemieniak & Artur Dmowski & Michał Maj, 2021. "Comparison of Machine Learning Methods for Image Reconstruction Using the LSTM Classifier in Industrial Electrical Tomography," Energies, MDPI, vol. 14(21), pages 1-20, November.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:21:p:7269-:d:671397
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    References listed on IDEAS

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    1. Tomasz Rymarczyk & Grzegorz Kłosowski & Anna Hoła & Jan Sikora & Tomasz Wołowiec & Paweł Tchórzewski & Stanisław Skowron, 2021. "Comparison of Machine Learning Methods in Electrical Tomography for Detecting Moisture in Building Walls," Energies, MDPI, vol. 14(10), pages 1-22, May.
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    Cited by:

    1. Bartosz Przysucha & Dariusz Wójcik & Tomasz Rymarczyk & Krzysztof Król & Edward Kozłowski & Marcin Gąsior, 2023. "Analysis of Reconstruction Energy Efficiency in EIT and ECT 3D Tomography Based on Elastic Net," Energies, MDPI, vol. 16(3), pages 1-22, February.

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