We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Multi-parameter-adjusting stochastic resonance in a standard tri-stable system and its application in incipient fault diagnosis.
- Authors
Lai, Z. H.; Liu, J. S.; Zhang, H. T.; Zhang, C. L.; Zhang, J. W.; Duan, D. Z.
- Abstract
The weak-signal detection approaches based on stochastic resonance (SR) are beneficial in detecting weak vibration signals from strong background noise. Therefore, many SR-based methods for mechanical incipient fault diagnosis appear. Among various nonlinear SR models, the underdamped tri-stable SR system, which has better output performance than other ones, has shown its potential superiority in weak-signal detection. The shortcomings for this model include its nonstandard forms of nonlinear potential functions and its inadequate research on parameter-adjusting mechanism for parameter-fixed noisy signals. In order to solve these issues, a standard tri-stable SR system is introduced in this paper and its SR performance is studied. Furthermore, a multi-parameter-adjusting SR (MPASR) model for the standard tri-stable system is proposed and its parameter adjustment rules for different input signals to produce SR are fully studied. At last, we propose a weak-signal detection method based on MPASR of the standard tri-stable system and employ two practical examples to demonstrate its feasibility in incipient fault diagnosis.
- Subjects
FAULT diagnosis; STOCHASTIC resonance; NONLINEAR functions; POTENTIAL functions; PERFORMANCE theory
- Publication
Nonlinear Dynamics, 2019, Vol 96, Issue 3, p2069
- ISSN
0924-090X
- Publication type
Article
- DOI
10.1007/s11071-019-04906-w