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Application of the largest Lyapunov exponent algorithm for feature extraction in low speed slew bearing condition monitoring

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posted on 2024-11-15, 07:14 authored by Wahyu Caesarendra, Prabuono KosasihPrabuono Kosasih, Anh TieuAnh Tieu, Craig Moodie
This paper presents a new application of the largest Lyapunov exponent (LLE) algorithm for feature extraction method in low speed slew bearing condition monitoring. The LLE algorithm is employed to measure the degree of non-linearity of the vibration signal which is not easily monitored by existing methods. The method is able to detect changes in the condition of the bearing and demonstrates better tracking of the progressive deterioration of the bearing during the 139 measurement days than comparable methods such as the time domain feature methods based on root mean square (RMS), skewness and kurtosis extraction from the raw vibration signal and also better than extracting similar features from selected intrinsic mode functions (IMFs) of the empirical mode decomposition (EMD) result. The application of the method is demonstrated with laboratory slew bearing vibration data and industrial bearing data from a coal bridge reclaimer used in a local steel mill.

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Citation

Caesarendra, W., Kosasih, B., Tieu, A. Kiet . & Moodie, C. A. S. (2015). Application of the largest Lyapunov exponent algorithm for feature extraction in low speed slew bearing condition monitoring. Mechanical Systems and Signal Processing, 50-51 116-138.

Journal title

Mechanical Systems and Signal Processing

Volume

50-51

Pagination

116-138

Language

English

RIS ID

91223

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