Adaptive genetic algorithm-based approach to improve the synthesis of two-dimensional finite impulse response filters

The design of finite impulse response (FIR) filters can be formulated as a non-linear optimization problem reputed to be difficult for conventional approaches. The constraints are high and a large number of parameters have to be estimated, especially when dealing with two-dimensional FIR filters. In...

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Veröffentlicht in:IET signal processing 2014-07, Vol.8 (5), p.429-446
Hauptverfasser: Boudjelaba, Kamal, Ros, Frédéric, Chikouche, Djamel
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Ros, Frédéric
Chikouche, Djamel
description The design of finite impulse response (FIR) filters can be formulated as a non-linear optimization problem reputed to be difficult for conventional approaches. The constraints are high and a large number of parameters have to be estimated, especially when dealing with two-dimensional FIR filters. In order to improve the performance of conventional approaches, the authors explore several stochastic methodologies capable of handling large spaces. The authors specifically propose a new genetic algorithm (GA) in which some innovative concepts are introduced to improve the convergence and make its use easier for practitioners. The algorithm is globally improved by adapting the mutation and crossover and selection operators with the genetic advances. A dynamic ranking selection scheme is introduced to limit the promotion of extraordinary chromosomes. A refreshing mechanism is investigated to manage the trade-off between diversity and elitism. The key point of the proposed approach stems from the capacity of the GA to adapt the genetic operators during the genetic life while remaining simple and easy to implement. Most of the parameters and operators are changed by the GA itself. From an initial calibration, the GA performs the design problem while calibrating and repeatedly re-calibrating itself for solving it. The authors demonstrate on various cases of filter design a significant improvement in performance.
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The constraints are high and a large number of parameters have to be estimated, especially when dealing with two-dimensional FIR filters. In order to improve the performance of conventional approaches, the authors explore several stochastic methodologies capable of handling large spaces. The authors specifically propose a new genetic algorithm (GA) in which some innovative concepts are introduced to improve the convergence and make its use easier for practitioners. The algorithm is globally improved by adapting the mutation and crossover and selection operators with the genetic advances. A dynamic ranking selection scheme is introduced to limit the promotion of extraordinary chromosomes. A refreshing mechanism is investigated to manage the trade-off between diversity and elitism. The key point of the proposed approach stems from the capacity of the GA to adapt the genetic operators during the genetic life while remaining simple and easy to implement. 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subjects 2D finite impulse response filters
2D FIR filters
adaptive genetic algorithm‐based approach
Algorithms
Applied sciences
Computer Science
convergence improvement
crossover operator
Detection, estimation, filtering, equalization, prediction
dynamic ranking selection scheme
Engineering Sciences
Exact sciences and technology
FIR filters
Genetic algorithms
genetic life
Genetics
Impulse response
Information, signal and communications theory
Mathematical analysis
mutation operator
nonlinear optimization problem
nonlinear programming
Operators
selection operator
Signal and communications theory
Signal, noise
Stems
Telecommunications and information theory
Two dimensional
two‐dimensional digital filters
title Adaptive genetic algorithm-based approach to improve the synthesis of two-dimensional finite impulse response filters
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