A Multi-Task Learning for Submarine Cable Magnetic Anomaly Recognition

Author:

Liu Yutao1ORCID,Wu Yuquan1,Yang Lei2,Zhou Puzhi34,Kuang Jianxun5,Yu Wenjie5,Wang Jianqiang6,Xu Zhe7,Li Gang89ORCID

Affiliation:

1. Science & Technology on Integrated Information System Laboratory, Institute of Software, Chinese Academy of Sciences, Beijing 100089, China

2. Zhejiang Institute of Marine Geology Survey, Zhoushan 316021, China

3. South China Sea Marine Survey and Technology Center, State Oceanic Administration, Guangzhou 510275, China

4. Key Laboratory of Marine Environmental Survey Technology and Application, Ministry of Natural Resources, Guangzhou 510275, China

5. Zhejiang Qiming Offshore Power Co., Ltd., Zhoushan 316000, China

6. Zhejiang Institute of Hydrogeology and Engineering Geology, Ningbo 315012, China

7. Zhejiang Engineering Survey and Design Institute Group Co., Ltd., Ningbo 315012, China

8. Department of Marine Sciences, Zhejiang University, Zhoushan 316000, China

9. Hainan Institute, Zhejiang University, Sanya 572025, China

Abstract

The recognition of submarine cable magnetic anomaly (SCMA) signals is a challenging task in magnetic signal data processing. In this study, a multi-task convolutional neural network (MTCNN) model is proposed to simultaneously recognize abnormal signals and locate abnormal regions. The residual block is added to the shared feature backbone to improve the ability of the network to extract high-level features and maintain the gradient stability of the model in the training process. The long short-term memory (LSTM) block is added to the classification branch task to learn the internal relationship of the magnetic anomaly time series, so as to improve the network’s ability to recognize magnetic anomalies. Our proposed model can accurately recognize the SCMA signals collected in the East China Sea and the South China Sea. The classification accuracy and the ability to locate the abnormal regions are close to the manual labeling of human analysts. The newly developed model can help analysts reduce the probability of missing and misjudging submarine cable magnetic anomalies, improve the efficiency and accuracy of interpretation, and could even be deployed to an unmanned platform to realize the automatic detection of SCMAs.

Funder

National Natural Science Foundation of China

Zhejiang Provincial Geological Special Funds of China for Comprehensive Geological Survey of Zhejiang Province Coastal Zone at Taizhou City

Publisher

MDPI AG

Subject

Ocean Engineering,Water Science and Technology,Civil and Structural Engineering

Reference27 articles.

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