TY - JOUR
T1 - A deep learning-based approach with anti-noise ability for identification of rock microcracks using distributed fibre optic sensing data
AU - Zhao, Shuai
AU - Tan, Daoyuan
AU - Lin, Shaoqun
AU - Yin, Zhenyu
AU - Yin, Jianhua
N1 - Funding Information:
The Open Research Project Programme of the State Key Laboratory of Internet of Things for Smart City ( University of Macau ) (Ref. No. SKL-IoTSC(UM)-2021-2023/ORPF/A19/2022 ), the General Research Fund project from Research Grants Council of Hong Kong Special Administrative Region Government of China (No. 15214722 ), and the Start-up Fund from The Hong Kong Polytechnic University ( 1-BD88 ) are gratefully acknowledged.
Publisher Copyright:
© 2023 Elsevier Ltd
PY - 2023/10
Y1 - 2023/10
N2 - Most of the existing deep learning-based crack identification models can achieve high accuracy when being trained and tested using data split from the same dataset with minimal noise, while perform poorly on field monitoring data with certain level of noise. This research developed a hybrid attention convolutional neural network (HACNN) for rock microcrack identification with enhanced anti-noise ability for distributed fibre optic sensing data. A hybrid attention module was designed and placed next to some certain convolutional layers to enhance the nonlinear representation ability of the proposed model. Two training interference strategies, namely small mini-batch training and adding dropout in the first convolutional layer, were employed to interfere with the training of the HACNN to enhance its robustness against noise. A series of experiments are designed based on the properties of the two training interference strategies to optimize the model parameters. Results showed that the optimized HACNN achieved higher accuracy on datasets with different signal-to-noise ratios compared to other machine learning algorithms, including the support vector machine, the multilayer perceptron, and an existing one-dimensional convolutional neural network. This research demonstrates the potential of establishing a robust DL-based model for identification of rock microcracks from noisy distributed fibre sensing optic data, even when training the model only with a smoothed dataset.
AB - Most of the existing deep learning-based crack identification models can achieve high accuracy when being trained and tested using data split from the same dataset with minimal noise, while perform poorly on field monitoring data with certain level of noise. This research developed a hybrid attention convolutional neural network (HACNN) for rock microcrack identification with enhanced anti-noise ability for distributed fibre optic sensing data. A hybrid attention module was designed and placed next to some certain convolutional layers to enhance the nonlinear representation ability of the proposed model. Two training interference strategies, namely small mini-batch training and adding dropout in the first convolutional layer, were employed to interfere with the training of the HACNN to enhance its robustness against noise. A series of experiments are designed based on the properties of the two training interference strategies to optimize the model parameters. Results showed that the optimized HACNN achieved higher accuracy on datasets with different signal-to-noise ratios compared to other machine learning algorithms, including the support vector machine, the multilayer perceptron, and an existing one-dimensional convolutional neural network. This research demonstrates the potential of establishing a robust DL-based model for identification of rock microcracks from noisy distributed fibre sensing optic data, even when training the model only with a smoothed dataset.
KW - Anti-noise
KW - Convolutional neural network
KW - Fibre optic sensing data
KW - Hybrid attention module
KW - Rock microcrack identification
UR - http://www.scopus.com/inward/record.url?scp=85164212844&partnerID=8YFLogxK
U2 - 10.1016/j.ijrmms.2023.105525
DO - 10.1016/j.ijrmms.2023.105525
M3 - Journal article
AN - SCOPUS:85164212844
SN - 1365-1609
VL - 170
JO - International Journal of Rock Mechanics and Mining Sciences
JF - International Journal of Rock Mechanics and Mining Sciences
M1 - 105525
ER -