模拟电路自动合成中的名义产出面积权衡:一种使用免疫激励算子的遗传规划方法

P. Conca, Giuseppe Nicosia, Giovanni Stracquadanio, J. Timmis
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引用次数: 17

摘要

模拟电路的合成是一项复杂而昂贵的任务;虽然有各种方法来合成数字电路,模拟设计本质上是更困难的,因为模拟电路处理电压在一个连续的范围内。在模拟电路设计领域,遗传规划方法受到了广泛的关注,它提供了同时设计和优化电路的可能性。然而,这些算法具有有限的工业相关性,因为它们与理想的组件一起工作。从Koza和合著者的众所周知的结果开始,我们引入了一种新的进化算法,称为精英免疫规划(EIP),它能够使用工业元件系列合成模拟电路,以生产可靠和低成本的电路。该算法已用于低通滤波器的合成;结果与遗传规划方法进行了比较,分析表明,遗传规划方法在频率响应和元件数量方面都能设计出更好的电路。此外,我们对所发现的电路进行了完整的良率分析,发现EIP电路比通过遗传规划方法生成的电路获得更高的良率,特别是,算法发现了一个Pareto Front,它尊重标称性能(尺寸)、组件数量(面积)和良率(鲁棒性)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nominal-Yield-Area Tradeoff in Automatic Synthesis of Analog Circuits: A Genetic Programming Approach Using Immune-Inspired Operators
The synthesis of analog circuits is a complex and expensive task; whilst there are various approaches for the synthesis of digital circuits, analog design is intrinsically more difficult since analog circuits process voltages in a continuous range. In the field of analog circuit design, the genetic programming approach has received great attention, affording the possibility to design and optimize a circuit at the same time. However, these algorithms have limited industrial relevance, since they work with ideal components. Starting from the well known results of Koza and co-authors, we introduce a new evolutionary algorithm, called elitist Immune Programming (EIP), that is able to synthesize an analog circuit using industrial components series in order to produce reliable and low cost circuits. The algorithm has been used for the synthesis of low-pass filters; the results were compared with the genetic programming, and the analysis shows that EIP is able to design better circuits in terms of frequency response and number of components. In addition we conduct a complete yield analysis of the discovered circuits, and discover that EIP circuits attain a higher yield than the circuits generated via a genetic programming approach, and, in particular, the algorithm discovers a Pareto Front which respects nominal performance (sizing), number of components (area) and yield (robustness).
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