Ocean Economy and Fault Diagnosis of Electric Submersible Pump applied in Floating platform

Panlong Zhang , Tingkai Chen , Guochao Wang , Changzheng Peng
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引用次数: 10

Abstract

Ocean economy plays a crucial role in the strengthening maritime safety industry and in the welfare of human beings. Electric Submersible Pumps (ESP) have been widely used in floating platforms on the sea to provide oil for machines. However, the ESP fault may lead to ocean environment pollution, on the other hand, a timely fault diagnosis of ESP can improve the ocean economy. In order to meet the strict regulations of the ocean economy and environmental protection, the fault diagnosis of ESP system has become more and more popular in many countries. The vibration mechanical models of typical faults have been able to successfully diagnose the faults of ESP. And different types of sensors are used to monitor the vibration signal for the signal analysis and fault diagnosis in the ESP system. Meanwhile, physical sensors would increase the fault diagnosis challenge. Nowadays, the method of neural network for the fault diagnosis of ESP has been applied widely, which can diagnose the fault of an electric pump accurately based on the large database. To reduce the number of sensors and to avoid the large database, in this paper, algorithms are designed based on feature extraction to diagnose the fault of the ESP system. Simulation results show that the algorithms can achieve the prospective objectives superbly.

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海洋经济与浮式平台电潜泵故障诊断
海洋经济对加强海上安全事业和人类福祉具有至关重要的作用。电潜泵(ESP)在海上浮式平台上得到了广泛的应用,为机械提供供油。然而,电潜泵的故障可能会导致海洋环境污染,另一方面,及时诊断电潜泵的故障可以改善海洋经济。为了满足海洋经济和环境保护的严格要求,ESP系统的故障诊断在许多国家越来越普及。典型故障的振动力学模型能够成功地诊断电潜泵的故障,并利用不同类型的传感器对振动信号进行监测,用于电潜泵系统的信号分析和故障诊断。同时,物理传感器也增加了故障诊断的难度。目前,神经网络方法在电潜泵故障诊断中得到了广泛的应用,该方法可以基于大型数据库对电潜泵进行准确的故障诊断。为了减少传感器数量和避免庞大的数据库,本文设计了基于特征提取的ESP系统故障诊断算法。仿真结果表明,该算法能较好地实现预期目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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