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- Title
Recursive Least Squares and Multi-innovation Stochastic Gradient Parameter Estimation Methods for Signal Modeling.
- Authors
Xu, Ling; Ding, Feng
- Abstract
The sine signals are widely used in signal processing, communication technology, system performance analysis and system identification. Many periodic signals can be transformed into the sum of different harmonic sine signals by using the Fourier expansion. This paper studies the parameter estimation problem for the sine combination signals and periodic signals. In order to perform the online parameter estimation, the stochastic gradient algorithm is derived according to the gradient optimization principle. On this basis, the multi-innovation stochastic gradient parameter estimation method is presented by expanding the scalar innovation into the innovation vector for the aim of improving the estimation accuracy. Moreover, in order to enhance the stabilization of the parameter estimation method, the recursive least squares algorithm is derived by means of the trigonometric function expansion. Finally, some simulation examples are provided to show and compare the performance of the proposed approaches.
- Subjects
MATHEMATICAL models of signal processing; LEAST squares; STOCHASTIC analysis; PARAMETER estimation; RECURSIVE functions
- Publication
Circuits, Systems & Signal Processing, 2017, Vol 36, Issue 4, p1735
- ISSN
0278-081X
- Publication type
Article
- DOI
10.1007/s00034-016-0378-4