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Azam Khalili

Azam Khalili

Academic rank: Associate Professor
ORCID:
Education: PhD.
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Faculty: Technical Engineering
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Research

Title
Performance analysis of quantized incremental LMS algorithm for distributed adaptive estimation
Type
JournalPaper
Keywords
Adaptive networks; Distributed estimation; Energy conservation; DILMS algorithm
Year
2010
Journal SIGNAL PROCESSING
DOI
Researchers Amir Rastegarnia ، Azam Khalili

Abstract

Recently distributed adaptive estimation algorithms have been proposed as a solution to the issue of linear estimation over distributed networks. In all previous works, the performance of such algorithms is considered only for infinite-precision arithmetic implementation. In this paper we study the performance of distributed incremental least mean square (DILMS) estimation algorithm when it is implemented in finite-precision arithmetic. To this aim, we first derive the quantized version of the DILMS algorithm. Then a spatial–temporal energy conservation argument is used to derive theoretical expressions that evaluate the steady-state performance of individual nodes in the network. Simulation results show that there is a good match between the theory and simulation.