학술논문

Fault Feature Extraction Method of Rolling Bearing Based on IAFD and TKEO
Document Type
Academic Journal
Source
Journal of Sensors. February 15, 2024, Vol. 2024
Subject
Case Western Reserve University
Investment analysis -- Case studies -- Methods -- Analysis
Mathematical optimization -- Case studies -- Methods -- Analysis
Algorithms -- Case studies -- Analysis -- Methods
Computers
Algorithm
Analysis
Case studies
Methods
Language
English
ISSN
1687-725X
Abstract
The study of bearing fault feature extraction using adaptive Fourier decomposition (AFD) holds significant practical importance. However, AFD is constrained by its reliance on prior knowledge for determining decomposition levels, which can result in either underdecomposition or overdecomposition based on a single indicator. Consequently, an improved adaptive Fourier decomposition (IAFD) is proposed. First, a combined weight index called SP is constructed, and the whale optimization algorithm is employed to optimize the SP weight parameter. Second, the IAFD decomposition levels can be adaptively determined using the optimized SP. Finally, a feature extraction method-based IAFD and Teager-Kaiser energy operator is applied in rolling bearing fault diagnosis. Case studies on the Case Western Reserve University and self-made KUST-SY datasets validate the effectiveness of the proposed method.
Author(s): Kai Guo [1,2]; Jun Ma (corresponding author) [1,2]; Xin Xiong [1,2]; Yuming Hu [1,2]; Xiang Li [1,2] 1. Introduction Rolling bearing is one of the essential components in rotating [...]