Comparison of advanced signal-processing methods for roller bearing faults detection

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Abstract

Wind turbines are nowadays one of the most promising energy sources. Every year, the amount of energy produced from the wind grows steadily. Investors demand turbine manufacturers to produce bigger, more efficient and robust units. These requirements resulted in fast development of condition-monitoring methods. However, significant sizes and varying operational conditions can make diagnostics of the wind turbines very challenging. The paper shows the case study of a wind turbine that had suffered a serious rolling element bearing (REB) fault. The authors compare several methods for early detection of symptoms of the failure. The paper compares standard methods based on spectral analysis and a number of novel methods based on narrowband envelope analysis, kurtosis and cyclostationarity approach. The very important problem of proper configuration of the methods is addressed as well. It is well known that every method requires setting of several parameters. In the industrial practice, configuration should be as standard and simple as possible. The paper discusses configuration parameters of investigated methods and their sensitivity to configuration uncertainties. © 2012 Polish Academy of Sciences. All rights reserved.

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APA

Urbanek, J., Barszcz, T., & Uhl, T. (2012). Comparison of advanced signal-processing methods for roller bearing faults detection. Metrology and Measurement Systems, 19(4), 715–726. https://doi.org/10.2478/v10178-012-0063-2

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