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Stochastic average gradient algorithm for multirate FIR models with varying time delays using self‐organizing maps

Jing Chen, Qianyan Shen, Junxia Ma, Yanjun Liu

2020International Journal of Adaptive Control and Signal Processing37 citationsDOI

Abstract

Summary A stochastic average gradient (SAG) algorithm is proposed for multirate (MR) finite impulse response (FIR) models with varying time delays in this article. The time delays at each sampling instant are computed through the self‐organizing maps technique, and then the parameters are estimated by using the SAG algorithm. Considering that the SAG algorithm updates the parameters using all the directions up to and including the current sampling instant, but only compute one gradient at each sampling instant, thus it has less computational efforts and quicker convergence rates. Furthermore, some modified SAG algorithms are also developed. Two simulation examples show that these algorithms identify MR FIR models with varying time delays correctly.

Topics & Concepts

AlgorithmConvergence (economics)Sampling (signal processing)Finite impulse responseImpulse (physics)Computer scienceInstantControl theory (sociology)MathematicsFilter (signal processing)Artificial intelligenceEconomicsPhysicsComputer visionEconomic growthQuantum mechanicsControl (management)Advanced Adaptive Filtering TechniquesSparse and Compressive Sensing TechniquesImage and Signal Denoising Methods
Stochastic average gradient algorithm for multirate FIR models with varying time delays using self‐organizing maps | Litcius