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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Low power FIR filter design using modified multi-objective artificial bee colony algorithm
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Low power FIR filter design using modified multi-objective artificial bee colony algorithm

机译:使用改进的多目标人工蜂群算法的低功耗FIR滤波器设计

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摘要

Inspite of the significance of the requirement of low power consumption, most of the existing techniques on FIR filter design have only concentrated on minimizing the ripples in pass band and stop band. In this regard the present work proposes an optimization based approach for filter design, which not only minimizes the pass band and stop band ripples but also aims at reducing the power consumption during filter execution. The tradeoff between pass band ripple, stop band ripple and power consumption avoids the use of the classical single objective based optimization approaches. Hence the filter design task has been framed as a multi-objective optimization problem and solved using a modified version of multi-objective artificial bee colony algorithm. The final solution obtained post convergence of the algorithm provides a set of optimal filters (Pareto front) which maintains a tradeoff between the multiple specifications. It allows the designer to choose a particular filter (coefficients) based on the requirement and/ or application. The applicability of the proposed approach has been evaluated by comparing the ripples and power consumption with other state of the art evolutionary algorithms. In addition to the numerical results, the filters derived have been validated experimentally by implementing them in Vitex-7 FPGA.
机译:尽管要求低功耗很重要,但有关FIR滤波器设计的大多数现有技术仅集中在最大程度地减小通带和阻带中的纹波。在这方面,本工作提出了一种用于滤波器设计的基于优化的方法,该方法不仅使通带和阻带波纹最小化,而且旨在减少滤波器执行期间的功耗。通带纹波,阻带纹波和功耗之间的权衡避免了使用经典的基于单一目标的优化方法。因此,筛选器设计任务已被框架化为一个多目标优化问题,并使用多目标人工蜂群算法的改进版本进行了求解。算法收敛后获得的最终解决方案提供了一组最佳滤波器(Pareto前沿),可以在多个规格之间保持折衷。它允许设计人员根据需求和/或应用选择特定的滤波器(系数)。通过将纹波和功耗与其他现有技术的进化算法进行比较,评估了所提出方法的适用性。除数值结果外,通过在Vitex-7 FPGA中实现滤波器,已对实验得出的滤波器进行了实验验证。

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