Robust adaptive filtering algorithms based on (inverse)hyperbolic sine function
Document Type
Article
Publication Date
10-1-2021
Abstract
Recently, adaptive filtering algorithms were designed using hyperbolic functions, such as hyperbolic cosine and tangent function. However, most of those algorithms have few parameters that need to be set, and the adaptive estimation accuracy and convergence performance can be improved further. More importantly, the hyperbolic sine function has not been discussed. In this paper, a family of adaptive filtering algorithms is proposed using hyperbolic sine function (HSF) and inverse hyperbolic sine function (IHSF) function. Specifically, development of a robust adaptive filtering algorithm based on HSF, and extend the HSF algorithm to another novel adaptive filtering algorithm based on IHSF; then continue to analyze the computational complexity for HSF and IHSF; finally, validation of the analyses and superiority of the proposed algorithm via simulations. The HSF and IHSF algorithms can attain superior steady-state performance and stronger robustness in impulsive interference than several existing algorithms for different system identification scenarios, under Gaussian noise and impulsive interference, demonstrate the superior performance achieved by HSF and IHSF over existing adaptive filtering algorithms with different hyperbolic functions.
Identifier
85117068935 (Scopus)
Publication Title
Plos One
External Full Text Location
https://doi.org/10.1371/journal.pone.0258155
e-ISSN
19326203
PubMed ID
34634059
Issue
10 October
Volume
16
Grant
61871420
Recommended Citation
Guan, Sihai; Cheng, Qing; Zhao, Yong; and Biswal, Bharat, "Robust adaptive filtering algorithms based on (inverse)hyperbolic sine function" (2021). Faculty Publications. 3796.
https://digitalcommons.njit.edu/fac_pubs/3796