A data-driven approach for sensor fault diagnosis in gearbox of wind energy conversion system

M. Krueger, S. Ding, Adel Haghani, P. Engel, T. Jeinsch
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引用次数: 11

Abstract

Due to the increase in worldwide energy demand, wind energy technology has been developed rapidly over the past years. With a fast growing of wind power installed capacity, an efficient monitoring system for wind energy conversion system (WEC) is required to ensure operational reliability, high availability of energy production and at the same time reduce operating and maintenance (O&M) costs. The state of the art methodologies for WEC condition monitoring are signal analysis, observer-based approach, neural networks, etc. In this paper, an effective and easy adaptable multivariate data-driven method for wind turbine monitoring and fault diagnosis is introduced, which consists of three parts: 1) off-line training process 2) on-line monitoring phase 3) on-line diagnosis phase. The performance of this method is validated for detection of sensor abnormalities that have occurred in real wind turbines.
风电转换系统齿轮箱传感器故障诊断的数据驱动方法
由于全球能源需求的增加,风能技术在过去几年得到了迅速发展。随着风电装机容量的快速增长,需要一套高效的风电转换系统监测系统,以保证风电运行的可靠性、发电量的高可用性,同时降低运维成本。WEC状态监测的最新方法有信号分析、基于观测器的方法、神经网络等。本文提出了一种有效且适应性强的多变量数据驱动风电机组监测与故障诊断方法,该方法由三个部分组成:1)离线训练过程2)在线监测阶段3)在线诊断阶段。该方法的性能已在实际风力涡轮机中发生的传感器异常检测中得到验证。
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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