Abstract

As an important production equipment of the offshore platform, the operation reliability of submersible motors is critical to oil and gas production, natural gas energy supplies, and social and economic benefits, etc. In order to realize the health management and fault diagnosis of submersible motors, a motor fault-monitoring method based on multi-signal fusion is proposed. The current signals and vibration signals were selected as characteristic signals. Through fusion correlation analysis, the correlation between different signals was established to enhance the amplitude at the same frequency, so as to highlight the motor fault characteristic frequency components, reduce the difficulty of fault identification, and provide sample data for motor fault pattern identification. Furthermore, the wavelet packet node energy analysis and back propagation neural network were combined to identify the motor faults and realize the real-time monitoring of the operating status of the submersible motor. The genetic algorithm was used to optimize the parameters of the neural network model to improve the accuracy of motor fault pattern recognition. The results show that the combination of multi-signal fusion monitoring and an artificial intelligence algorithm can diagnose motor fault types with high confidence. This research originally proposed the fusion correlation spectrum technology, which solved the shortcomings of the small amplitude and complex composition of the single signal spectrum components in the fault diagnosis and improved the reliability of the fault diagnosis. It further combined the neural network to realize the automatic monitoring and intelligent diagnosis of submersible motors, which has certain application value and inspiration in the field of electrical equipment intelligent monitoring.

Highlights

  • There are abundant oil and gas resources in the ocean

  • The natural gas needs to be obtained through the electric submersible pumps of the offshore platform

  • The electric submersible pump production system is related to the oil and gas production and economic benefits of offshore platform, and directly provides primary energy to ensure the normal operation of the platform

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Summary

Introduction

There are abundant oil and gas resources in the ocean. As the main source of power for the exploitation of resources, the reliable and efficient operation of the offshore platform power system plays an important role in the exploitation and utilization of marine resources. Due to the narrow space of the offshore platform and the difficulty of equipment maintenance and replacement, the large-scale troubleshooting of the submersible pump system will lead to the stagnation of production tasks and primary energy supply of the offshore platform, resulting in huge economic losses. It is of great significance for the accurate monitoring and fault prevention of the electric submersible pump. The implementation principles of fault diagnosis algorithms were introduced in turn, including the fusion correlation spectrum algorithm, energy calculation of wavelet packet node, back propagation neural network learning algorithm, and genetic algorithm. The effectiveness and practicability of the method were verified by simulation, and future research directions were proposed

Study on Failure Mechanism of Submersible Motor
Energy Calculation of Wavelet Packet Node
BP Neural Network Learning Algorithm
Optimization of BP Neural Network by Genetic Algorithm
Simulation Analysis
Findings
62 Va6l1ue
Full Text
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