Title of article :
Two low computational complexity improved multiband-structured subband adaptive flter algorithms
Author/Authors :
Shams Esfand Abadi, M. Shahid Rajaee Teacher Training University - Tehran, Iran , Husoy, J.H. Department of Electrical Engineering and Computer Science - Faculty of Science and Engineering - University of Stavanger, Norway , Ahmadi, M.J. Shahid Rajaee Teacher Training University - Tehran, Iran
Pages :
16
From page :
3396
To page :
3411
Abstract :
The Improved Multiband-structured Subband Adaptive Filter (IMSAF) applies the input regressors at each subband to speed up the convergence rate of Multiband-Structure Subband Adaptive Filter (MSAF). When the projection order increases, the convergence rate of the IMSAF algorithm improves at the cost of increased complexity. The present research introduces two new IMSAF algorithms with low computational complexity feature. In the first algorithm, the Selective Partial updat‎e (SPU) approach is extended to IMSAF algorithms and SPU-IMSAF is established. In SPU-IMSAF, the filter coecients are partially updated at each subband for every adaptation. In the second algorithm, the Set-Membership (SM) strategy is utilized in IMSAF and SM-IMSAF is established. The SM-IMSAF has a fast convergence rate, low steady-state error, and low computational complexity features at the same time. Also, by combining SM and SPU methods, the SM-SPU-IMSAF is introduced. Simulation results demonstrate the good performance of the proposed algorithms.
Farsi abstract :
فاقد وابستگي سازماني
Keywords :
Improved Multibandstructured Subband Adaptive Filter (IMSAF) , Selective Partial updat‎e (SPU) , Set-Membership (SM) , Convergence rate , Computational complexity
Journal title :
Scientia Iranica(Transactions D: Computer Science and Electrical Engineering)
Serial Year :
2021
Record number :
2703993
Link To Document :
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