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Design and implementation of sharp edge FIR filters using hybrid differential evolution particle swarm optimization

机译:使用混合差分演进粒子群优化的尖锐边缘灭菌器的设计与实现

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摘要

The filter is an important building block of modern communication and electronic systems. Based on well-defined bandwidth, it extracts the desired portion of the spectrum when the raw input signal is applied. Efficacy of filtering depends on the preciseness of bandwidth to avoid co-channel interference and signal loss. In addition, it must provide higher stopband attenuation and passband attenuation very close to unity with a tolerable quantity of pass/stop band ripple. Design/implementation of sharp edge modern FIR filter is structured as a multi-objective, constrained, complex, and highly nonlinear (hence multimodal) error minimization challenge. Hence, this work proposes a novel objective (normalized error fitness) function and a robust hybrid algorithm for the effective searching of the optimal filter coefficients for providing excellent sharp edge frequency response during the filtering action. Most popular particle swarm optimization (PSO) and differential evolution (DE) algorithm are effectively combined together to frame the proposed hybrid DE-PSO algorithm for enhancing the exploration and exploitation abilities of it. The proposed hybrid algorithm is validated using twelve different benchmark functions. Through simulations, the qualitative performance of the proposed approach is compared with the conventional PSO, DE, real-coded genetic algorithm and the Parks McClellan method. (C) 2019 Elsevier GmbH. All rights reserved.
机译:过滤器是现代通信和电子系统的重要构建块。基于良好的带宽,当施加原始输入信号时,它提取光谱的所需部分。滤波的功效取决于带宽的精确度,以避免共信道干扰和信号损耗。此外,它必须提供更高的停止带衰减和通带衰减,非常接近统一,具有可容许的通行/停止频段纹波。锐利边缘现代FIR滤波器的设计/实施是一种多目标,约束,复杂,高度非线性(因此多模式)误差最小化挑战。因此,这项工作提出了一种新颖的目标(归一化误差健康)功能和坚固的混合算法,用于有效地搜索最佳滤波器系数,以在过滤动作期间提供优异的尖锐边缘频率响应。大多数流行的粒子群优化(PSO)和差分演进(DE)算法有效地组合在一起,以框架提高探索和剥削能力的提出的混合DE-PSO算法。使用12个不同的基准函数验证所提出的混合算法。通过模拟,将所提出的方法的定性表现与传统的PSO,DE,实际编码遗传算法和公园McClellan方法进行比较。 (c)2019年Elsevier GmbH。版权所有。

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