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CMOS analogue amplifier circuits optimisation using hybrid backtracking search algorithm with differential evolution

机译:使用具有差分演化的混合回溯搜索算法优化CMOS模拟放大器电路

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This paper proposes a novel hybrid optimisation algorithm which combines the recently proposed evolutionary algorithm Backtracking Search Algorithm (BSA) with another widely accepted evolutionary algorithm, namely, Differential Evolution (DE). The proposed algorithm called BSA-DE is employed for the optimal designs of two commonly used analogue circuits, namely Complementary Metal Oxide Semiconductor (CMOS) differential amplifier circuit with current mirror load and CMOS two-stage operational amplifier (op-amp) circuit. BSA has a simple structure that is effective, fast and capable of solving multimodal problems. DE is a stochastic, population-based heuristic approach, having the capability to solve global optimisation problems. In this paper, the transistors' sizes are optimised using the proposed BSA-DE to minimise the areas occupied by the circuits and to improve the performances of the circuits. The simulation results justify the superiority of BSA-DE in global convergence properties and fine tuning ability, and prove it to be a promising candidate for the optimal design of the analogue CMOS amplifier circuits. The simulation results obtained for both the amplifier circuits prove the effectiveness of the proposed BSA-DE-based approach over DE, harmony search (HS), artificial bee colony (ABC) and PSO in terms of convergence speed, design specifications and design parameters of the optimal design of the analogue CMOS amplifier circuits. It is shown that BSADE- based design technique for each amplifier circuit yields the least MOS transistor area, and each designed circuit is shown to have the best performance parameters such as gain, power dissipation, etc., as compared with those of other recently reported literature.
机译:本文提出了一种新颖的混合优化算法,它将最近提出的进化算法回溯搜索算法(BSA)与另一种广为接受的进化算法,即差分进化(DE)相结合。所提出的算法称为BSA-DE,用于两个常用模拟电路的最佳设计,即具有电流镜负载的互补金属氧化物半导体(CMOS)差分放大器电路和CMOS两级运算放大器(op-amp)电路。 BSA具有有效,快速且能够解决多模式问题的简单结构。 DE是一种基于人口的随机启发式方法,具有解决全局优化问题的能力。在本文中,使用建议的BSA-DE对晶体管的尺寸进行了优化,以最大程度地减少电路占用的面积并改善电路的性能。仿真结果证明了BSA-DE在全局收敛性和微调能力方面的优越性,并证明它是模拟CMOS放大器电路优化设计的有希望的候选者。从这两个放大器电路获得的仿真结果证明了所提出的基于BSA-DE的方法在收敛速度,设计规范和设计参数方面优于DE,和声搜索(HS),人工蜂群(ABC)和PSO的有效性。模拟CMOS放大器电路的最佳设计。结果表明,与每个新近报道的电路相比,针对每个放大器电路的基于BSADE的设计技术产生的MOS晶体管面积最小,并且每个设计电路都具有最佳的性能参数,例如增益,功耗等。文献。

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