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Investigation of Transfer Learning for Tunnel Support Design

Author

Listed:
  • Amichai Mitelman

    (Department of Civil Engineering, Ariel University, Ariel 40700, Israel)

  • Alon Urlainis

    (Department of Civil Engineering, Ariel University, Ariel 40700, Israel)

Abstract

The potential of machine learning (ML) tools for enhancing geotechnical analysis has been recognized by several researchers. However, obtaining a sufficiently large digital dataset is a major technical challenge. This paper investigates the use of transfer learning, a powerful ML technique, used for overcoming dataset size limitations. The study examines two scenarios where transfer learning is applied to tunnel support analysis. The first scenario investigates transferring knowledge between a ground formation that has been well-studied to a new formation with very limited data. The second scenario is intended to investigate whether transferring knowledge is possible from a dataset that relies on simplified tunnel support analysis to a more complex and realistic analysis. The technical process for transfer learning involves training an Artificial Neural Network (ANN) on a large dataset and adding an extra layer to the model. The added layer is then trained on smaller datasets to fine-tune the model. The study demonstrates the effectiveness of transfer learning for both scenarios. On this basis, it is argued that, with further development and refinement, transfer learning could become a valuable tool for ML-related geotechnical applications.

Suggested Citation

  • Amichai Mitelman & Alon Urlainis, 2023. "Investigation of Transfer Learning for Tunnel Support Design," Mathematics, MDPI, vol. 11(7), pages 1-15, March.
  • Handle: RePEc:gam:jmathe:v:11:y:2023:i:7:p:1623-:d:1108856
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    References listed on IDEAS

    as
    1. Tao Fu & Tianci Zhang & Xueguan Song, 2022. "A Novel Hybrid Transfer Learning Framework for Dynamic Cutterhead Torque Prediction of the Tunnel Boring Machine," Energies, MDPI, vol. 15(8), pages 1-17, April.
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