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A hybrid of WO A and mGWO algorithms for global optimization and analog circuit design automation

机译:WO A和mGWO算法的混合,用于全局优化和模拟电路设计自动化

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Purpose This paper aims to resolve the sizing issues of analog circuit design by using proposed metaheuristic optimization algorithm. Design/methodology/approach The hybridization of whale optimization algorithm and modified gray wolf optimization (WOA-mGWO) algorithm is proposed, and the same is applied for the automated design of analog circuits. Findings The proposed hybrid WOA-mGWO algorithm demonstrates better performance in terms of convergence rates and average fitness of the function after testing it with 23 classical benchmark functions. Moreover, a rigorous performance evaluation is done with 20 independent runs using Wilcoxon rank-sum test.Practical implications - For evaluating the performance of the proposed algorithm, a conventional two-stage operational amplifier is considered. The aspect ratios calculated by simulating the algorithm in MATLAB are later used to design the operational amplifier in Cadence environment using 180nm CMOS standard process.Originality/value - The hybrid WOA-mGWO algorithm is tailored to improve the exploration ability of the algorithm by combining the abilities of two metaheristic algorithms, i.e. whale optimization algorithm and modified gray wolf optimization algorithm. To build further credence and to prove its profound existence in the latest state of the art, a statistical study is also conducted over 20 independent runs, for the robustness of the proposed algorithm, resulting in best, mean and worst solutions for analog IC sizing problem. A comparison of the best solution with other significant sizing tools proving the efficiency of hybrid WOA-mGWO algorithm is also provided. Montecarlo simulation and corner analysis are also performed to validate the endurance of the design.
机译:目的本文旨在通过提出的元启发式优化算法解决模拟电路设计的规模问题。设计/方法/方法提出了鲸鱼优化算法和改进的灰狼优化(WOA-mGWO)算法的混合体,并将其应用于模拟电路的自动化设计。研究结果在使用23种经典基准函数对其进行测试之后,提出的混合WOA-mGWO算法在收敛速度和平均适应度方面展示了更好的性能。此外,使用Wilcoxon秩和检验对20个独立运行进行了严格的性能评估。实际意义-为了评估所提出算法的性能,考虑了传统的两级运算放大器。通过在MATLAB中模拟算法计算出的宽高比随后用于在Cadence环境中使用180nm CMOS标准工艺设计运算放大器。原创性/价值-量身定制的WOA-mGWO混合算法通过结合以下两种方法来提高算法的探索能力:鲸鱼优化算法和改进的灰太狼优化算法这两种元算法的能力。为了建立进一步的信誉并证明其在最新技术中的深刻存在,还针对20种独立运行进行了统计研究,以确保所提出算法的鲁棒性,从而为模拟IC尺寸问题提供最佳,平均和最差的解决方案。还提供了最佳解决方案与其他重要的大小确定工具的比较,证明了混合WOA-mGWO算法的效率。还进行了蒙特卡洛模拟和拐角分析,以验证设计的耐久性。

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