Fault Severity Sensing for Intelligent Remote Diagnosis in Electrical Induction Machines

Saad Chakkor, Mostafa Baghouri, Abderrahmane Hajraoui
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引用次数: 3

Abstract

Electrical induction machines are widely used in the modern wind power production. As their repair cost is important and since their down-time leads to significant income loss, increasing their reliability and optimizing their proactive maintenance process are critical tasks. Many diagnosis systems have been proposed to resolve this issue. However, these systems are failing to recognize accurately the type and the severity level of detected faults in real time. In this chapter, a remote automated control approach applied for electrical induction machines has been suggested as an appropriate solution. It combines developed Fast-ESPRIT method, fault classification algorithm, and fuzzy inference system interconnected with vibration sensors, which are located on various wind turbine components. Furthermore, a new fault severity indicator has been formulated and evaluated to avoid false alarms. Study findings with computer simulation in Matlab prove the satisfactory robustness and performance of the proposed technique in fault classification and diagnosis.
基于故障程度感知的感应电机智能远程诊断
电磁感应电机在现代风力发电中得到了广泛的应用。由于它们的维修成本很重要,而且由于它们的停机时间会导致巨大的收入损失,因此提高它们的可靠性和优化它们的主动维护过程是关键任务。许多诊断系统被提出来解决这个问题。然而,这些系统无法实时准确识别检测到的故障类型和严重程度。在本章中,提出了一种适用于感应电机的远程自动化控制方法作为一种适当的解决方案。它结合了已开发的Fast-ESPRIT方法、故障分类算法和模糊推理系统,并与安装在风力发电机组各部件上的振动传感器相连接。在此基础上,提出了一种新的故障等级指标,并对其进行了评估,以避免误报。仿真结果表明,该方法具有较好的鲁棒性和较好的故障分类诊断性能。
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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