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Cat Swarm Optimization algorithm for optimal linear phase FIR filter design

机译:最优线性相位FIR滤波器设计的Cat群算法

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摘要

In this paper a new meta-heuristic search method, called Cat Swarm Optimization (CSO) algorithm is applied to determine the best optimal impulse response coefficients of FIR low pass, high pass, band pass and band stop filters, trying to meet the respective ideal frequency response characteristics. CSO is generated by observing the behaviour of cats and composed of two sub-models. In CSO, one can decide how many cats are used in the iteration. Every cat has its' own position composed of M dimensions, velocities for each dimension, a fitness value which represents the accommodation of the cat to the fitness function, and a flag to identify whether the cat is in seeking mode or tracing mode. The final solution would be the best position of one of the cats. CSO keeps the best solution until it reaches the end of the iteration. The results of the proposed CSO based approach have been compared to those of other well-known optimization methods such as Real Coded Genetic Algorithm (RGA), standard Particle Swarm Optimization (PSO) and Differential Evolution (DE). The CSO based results confirm the superiority of the proposed CSO for solving FIR filter design problems. The performances of the CSO based designed FIR filters have proven to be superior as compared to those obtained by RGA, conventional PSO and DE. The simulation results also demonstrate that the CSO is the best optimizer among other relevant techniques, not only in the convergence speed but also in the optimal performances of the designed filters.
机译:本文采用一种新的元启发式搜索方法,称为Cat Swarm Optimization(CSO)算法,确定FIR低通,高通,带通和带阻滤波器的最佳最优脉冲响应系数,试图满足各自的理想要求。频率响应特性。 CSO是通过观察猫的行为生成的,并由两个子模型组成。在CSO中,可以决定在迭代中使用多少只猫。每只猫都有自己的位置,该位置由M个维度,每个维度的速度,代表该猫对适应函数的适应度的适应性值以及一个标识该猫是处于搜索模式还是跟踪模式的标志组成。最终的解决方案将是其中一只猫的最佳位置。 CSO保持最佳解决方案,直到迭代结束。提议的基于CSO的方法的结果已与其他众所周知的优化方法(如实编码遗传算法(RGA),标准粒子群优化(PSO)和差异进化(DE))进行了比较。基于CSO的结果证实了所提出的CSO在解决FIR滤波器设计问题方面的优越性。与基于RGA,常规PSO和DE的性能相比,基于CSO设计的FIR滤波器的性能已被证明是优越的。仿真结果还表明,CSO是其他相关技术中的最佳优化器,不仅在收敛速度方面而且在设计滤波器的最佳性能方面也是如此。

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