Abstract

Fault diagnosis of rope tension is significantly important for hoisting safety, especially in mine hoists. Conventional diagnosis methods based on force sensors face some challenges regarding sensor installation, data transmission, safety, and reliability in harsh mine environments. In this paper, a novel fault diagnosis method for rope tension based on the vibration signals of head sheaves is proposed. First, the vibration signal is decomposed into some intrinsic mode functions (IMFs) by the ensemble empirical mode decomposition (EEMD) method. Second, a sensitivity index is proposed to extract the main IMFs, then the de-noised signal is obtained by the sum of the main IMFs. Third, the energy and the proposed improved permutation entropy (IPE) values of the main IMFs and the de-noised signal are calculated to create the feature vectors. The IPE is proposed to improve the PE by adding the amplitude information, and it proved to be more sensitive in simulations of impulse detecting and signal segmentation. Fourth, vibration samples in different tension states are used to train a particle swarm optimization–support vector machine (PSO-SVM) model. Lastly, the trained model is implemented to detect tension faults in practice. Two experimental results validated the effectiveness of the proposed method to detect tension faults, such as overload, underload, and imbalance, in both single-rope and multi-rope hoists. This study provides a new perspective for detecting tension faults in hoisting systems.

Highlights

  • Hoisting systems are widely applied in various industries, especially the mining industry

  • The improved permutation entropy (IPE) is proposed to improve the permutation entropy (PE) by adding the amplitude information, and it proved to be more sensitive in simulations of impulse detecting and signal segmentation

  • Decompose the transverse vibration signal of the head sheave into intrinsic mode functions (IMFs) by the ensemble empirical mode decomposition (EEMD) method

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Summary

Introduction

Hoisting systems are widely applied in various industries, especially the mining industry. The vibration-based method provides a potential to techniques diagnose rope vibration signals are abundant tension faults in hoisting systems [7]. Forofexample, performance for complex signals, EMD-based methods been widelyand applied fault diagnosis applied the EEMD to the rub-impact fault diagnosis of ahave power generator earlyinrub-impact fault [15,16,17,18,19,20,21,22]. EMD-based methods industrial applications diagnosis of localized faults in multistage gearboxes, and they pointed out that. We propose a novel method to diagnose tension faults based on the vibration signal of the head sheave.

EEMD and the Proposed Sensitivity Index to Extract the Main IMFs
Permutation Entropy
Improved Permutation Entropy
PSO-SVM
Relationship Between Rope Vibration and Tension
Proposed Method
Experimental Setting and Data Collection
Two vibration sensors
Signal Decomposition
Feature Extraction
Feature Extraction dimension m in the plays
Optimized SVM
Experiment 2
It canwere be seen that the were
Findings
Conclusions

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