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- Title
FOG De-Noising Algorithm Based on Augmented Nonlinear Differentiator and Singular Spectrum Analysis.
- Authors
Zhang, Xiaoming; Cao, Huiliang; Shao, Xingling; Liu, Jun; Shen, Chong
- Abstract
A novel algorithm based on singular spectrum analysis (SSA) and augmented nonlinear differentiator (AND) for extracting the useful signal from a noisy measurement of fiber optic gyroscope (FOG) is proposed in this paper. As a novel type of tracking differentiator, augmented nonlinear differentiator (AND) has the advantages of dynamical performance and noise-attenuation ability. However, there is a contradiction in AND, i.e., selecting a larger acceleration factor may cause faster convergence but bad random noise reduction, whereas selecting a smaller acceleration factor may lead to signal delay but effective random noise reduction. To overcome the contradiction of AND, multi-scale transformation is introduced. Firstly, the noisy signal is decomposed into components by SSA, and the correlation coefficients between each component and original signal are calculated, then the component with biggest correlation coefficient is reserved and other components are filtered by AND with designed selection criterion of acceleration factor, finally the de-noising result is obtained after reconstruction process. There are mainly two prominent advantages of the proposed SSA-AND algorithm: (i) Compared to traditional tracking differentiators, better de-noising ability can be achieved without signal delay; and (ii) compared to other widely used hybrid de-noising methods based on multi-scale transformation, a parameter determination method is given based on the correlation coefficient of each decomposed component, which improves the reliability of the proposed algorithm.
- Subjects
OPTICAL gyroscopes; SIGNAL denoising; NONLINEAR differential equations
- Publication
Applied Sciences (2076-3417), 2018, Vol 8, Issue 10, p1710
- ISSN
2076-3417
- Publication type
Article
- DOI
10.3390/app8101710