Novel Mining Conveyor Monitor Ing System Based on Quasi-Distributed Optical Fiber Accelerometer Arrayand S Elf-Supervised Learning

14 Pages Posted: 29 Nov 2023

See all articles by Hua Zheng

Hua Zheng

Hong Kong Polytechnic University

Huan Wu

Hong Kong Polytechnic University

Hao Yin

Hong Kong Polytechnic University

Yuyao Wang

Hong Kong Polytechnic University

Zheng Fang

Hong Kong Polytechnic University

Ding Ma

affiliation not provided to SSRN

Li Zhou

affiliation not provided to SSRN

Min Yan

affiliation not provided to SSRN

Jie Sun

affiliation not provided to SSRN

Ding Xiaoli

Hong Kong Polytechnic University

Yun Miao

affiliation not provided to SSRN

Changyuan Yu

Hong Kong Polytechnic University

Chao Lu

Hong Kong Polytechnic University

Abstract

Belt conveyors in mining are crucial, with downtime leading to significant losses and safety hazards. Unplanned shutdowns often result from idler failures. To address this, an online monitoring system for continuous idler health assessment is proposed. Considering the large number and dense spatial distribution of idlers over long distances, this work presents a system that utilizes a quasi-distributed optical fiber accelerometer array. This array incorporates phase-sensitive optical time domain reflectometry (Phase-OTDR) interrogation technology and ultra-weak fiber Bragg gratings (UWFBGs) to effectively capture idler vibrations. The designed array achieves high-sensitivity vibration sensing with a sensitivity of 2.4 rad/g and a resolution of 0.0146 g. After collecting the vibrations of idlers by the designed accelerometer array, an automatic fault classification algorithm based on self-supervised learning (SSL) is introduced, which requires only a small number of labeled samples. By leveraging large amount of unlabeled data in the pretext task, the algorithm efficiently extracts latent features from the quasi-distributed accelerometer array.  A diagnosis accuracy of 95.37% can be achieved on a seven-class classification task with only 3.6% labeled data (16 samples/class). This system offers a promising solution for idler monitoring, combining high sensitivity, distributed measurement capabilities, enhanced security, and superior fault detection accuracy.

Keywords: Mining conveyor monitoring, phase-sensitive optical time domain reflectometry (Phase-OTDR), accelerometer, distributed vibration sensing, self-supervised learning.

Suggested Citation

Zheng, Hua and Wu, Huan and Yin, Hao and Wang, Yuyao and Fang, Zheng and Ma, Ding and Zhou, Li and Yan, Min and Sun, Jie and Xiaoli, Ding and Miao, Yun and Yu, Changyuan and Lu, Chao, Novel Mining Conveyor Monitor Ing System Based on Quasi-Distributed Optical Fiber Accelerometer Arrayand S Elf-Supervised Learning. Available at SSRN: https://ssrn.com/abstract=4648370 or http://dx.doi.org/10.2139/ssrn.4648370

Hua Zheng

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Huan Wu (Contact Author)

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Hao Yin

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Yuyao Wang

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Zheng Fang

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Ding Ma

affiliation not provided to SSRN ( email )

Li Zhou

affiliation not provided to SSRN ( email )

Min Yan

affiliation not provided to SSRN ( email )

Jie Sun

affiliation not provided to SSRN ( email )

Ding Xiaoli

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Yun Miao

affiliation not provided to SSRN ( email )

Changyuan Yu

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Chao Lu

Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Downloads
37
Abstract Views
283
PlumX Metrics