ISSN 0430-6252. Physicochemical Mechanics of Materials. 2023.
Volume 59, Issue 4
Vibration analysis of the damaged bearing unit of the port crane lifting mechanism
Keywords
periodically non-stationary random processes, vibration signal, modulation, bearing unit, damage.
Cite as
Javorskyj I. M., Yuzefovych R. M., Lychak O. V., Semenov Р. O., and Varyvoda M. Z. Vibration analysis of the damaged bearing unit of the port crane lifting mechanism. Physicochemical Mechanics of Materials. 2023. 59(4), 14-22.
https://doi.org/10.15407/pcmm2023.04.014
Abstract
The methods of periodically non-stationary random processes were used to analyze the vibrations of the damaged bearing unit of the lifting mechanism. To identify and analyze periodical nonstationarity of the first and second orders the least squares method was used. On the basis of the calculated parameters, which describe the structure of periodical nonstationarity, a conclusion about the type of defect and its development was made.
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