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An evolutionary approach for Nominal design and yield enhancement of analog amplifiers

机译:标称设计和屈服增强模拟放大器的进化方法

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The microelectronic industry is driven by the continuous demand for processing speed and capacity. To answer such demands, novel design paradigms target design automation. While digital design is mostly automatic, design automation in the analog domain is limited and mainly used for high-level synthesis. A promising solution to overcome limitations and constrains of automatic analog design is to involve computational intelligence techniques. This work proposes an evolutionary design methodology to bring contributions to transistor-level design automation. The proposed framework is built around a typical design automation workflow: Feasibility design, Nominal design and Design centering. The Feasibility design layer employs an artificial neural network to generate an initial solution. The following two layers employ genetic algorithms to optimize the amplifier for performance and yield respectively. The proposed design methodology is illustrated on the design of a folded-cascode operational transconductance amplifier and is validated by the results of extensive simulation.
机译:微电子工业通过对加工速度和容量的连续需求驱动。回答此类需求,新颖的设计范式目标设计自动化。虽然数字设计大多是自动的,但模拟域的设计自动化是有限的,主要用于高级合成。有希望的解决方案来克服自动模拟设计的限制和约束是涉及计算智能技术。这项工作提出了一种进化设计方法,为晶体管级设计自动化提供贡献。拟议的框架是在典型的设计自动化工作流程中建立的:可行性设计,标称设计和设计定心。可行性设计层采用人工神经网络来产生初始解决方案。以下两层采用遗传算法,以分别优化放大器进行性能和产量。所提出的设计方法示出了折叠共级操作跨导放大器的设计,并通过广泛的模拟结果验证。

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