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(사)한국터널지하공간학회

Development of deep learning algorithm for classification of disc cutter wear condition based on real-time measurement data

(사)한국터널지하공간학회 / (사)한국터널지하공간학회, (P)2233-8292; (E)2287-4747
2024, v.26 no.3, pp.281-301
https://doi.org/10.9711/KTAJ.2024.26.3.281
Ji Yun Lee
Byung Chul Yeo
Jeong Ho Young
Kim Jung joo
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Abstract

The power cable tunnels which are part of the underground transmission line project, are constructed using the shield TBM method. The disc cutter among the shield TBM components plays an important role in breaking rock mass. Efficient tunnel construction is possible only when appropriate replacement occurs as the wear limit is reached or damage such as uneven wear occurs. A study was conducted to determine the wear conditions of disc cutter using a deep learning algorithm based on real-time measurement data of wear and rotation speed. Based on the results of full-scaled tunnelling tests, it was confirmed that measurement data was obtained differently depending on the wear conditions of disc cutter. Using real-time measurement data, an algorithm was developed to determine disc cutter wear characteristics based on a convolutional neural network model. Distributional patterns of data can be learned through CNN filters, and the performance of the model that can classify uniform wear and uneven wear through these pattern features.

keywords
Disc cutter wear, Deep learning, CNN, Utility cable tunnel, Shield TBM, 디스크커터 마모, 딥러닝 기법, 합성곱신경망, 전력구 터널, 쉴드TBM

(사)한국터널지하공간학회