风力发电
状态监测
方位(导航)
海上风力发电
希尔伯特-黄变换
工程类
可靠性工程
断层(地质)
海底管道
计算机科学
汽车工程
实时计算
白噪声
人工智能
电信
地震学
地质学
电气工程
岩土工程
作者
Libowen Xu,Qing Wang,Ioannis Ivrissimtzis,Shisong Li
摘要
Abstract The operation and maintenance costs of wind farms are always high due to high labor costs and the high replacement cost of parts. Thus, it is of great importance to have real-time monitoring and an early fault diagnostic system to prevent major events, reduce time-based maintenance, and minimize the cost. In this paper, such a two-step system for early stage rolling bearing failures in offshore wind turbines is introduced. First, empirical mode decomposition is applied to minimize the effect of ambient noise. Next, correlation coefficients between a reference signal and test signals are obtained and incipient fault detection is achieved by comparing the results with a threshold value. Through further analysis of the envelope spectrum, sample entropy for selected intrinsic mode functions is obtained, which is further used to train a support vector machine classifier to achieve fault classification and degradation state recognition. The proposed diagnostic approach is verified by experimental tests, and an accuracy of 98% in identifying and classifying rolling bearing failures under various loading conditions is obtained.
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