从模拟网表的隐式功能层次学习

H. Graeb, Markus Leibl
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引用次数: 0

摘要

模拟电路设计的特点是丰富的隐式设计和技术方面可供经验丰富的设计师使用。为了创建有用的计算机辅助设计方法,必须以系统和分层的方式捕获这些隐性知识。实现这一目标的一个关键方法是从模拟电路的网络表中“学习”知识。这需要一个模拟电路的结构和功能模块库,以及它们各自的约束和性能方程,识别具有不同结构实现和I/O引脚的模块的图同态技术,以及利用所学知识的综合方法。在这篇文章中,我们将介绍如何利用运算放大器的功能和结构层次。作为一项应用,我们探索了机器学习在结构和功能属性背景下的能力,并表明通过使用传统的功能块分析方法预处理数据可以大大改善结果。这一说法在大约10万个现成大小和模拟运算放大器的数据集上得到了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning from the Implicit Functional Hierarchy in an Analog Netlist
Analog circuit design is characterized by a plethora of implicit design and technology aspects available to the experienced designer. In order to create useful computer-aided design methods, this implicit knowledge has to be captured in a systematic and hierarchical way. A key approach to this goal is to "learn" the knowledge from the netlist of an analog circuit. This requires a library of structural and functional blocks for analog circuits together with their individual constraints and performance equations, graph homomorphism techniques to recognize blocks that can have different structural implementations and I/O pins, as well as synthesis methods that exploit the learned knowledge. In this contribution, we will present how to make use of the functional and structural hierarchy of operational amplifiers. As an application, we explore the capabilities of machine learning in the context of structural and functional properties and show that the results can be substantially improved by pre-processing data with traditional methods for functional block analysis. This claim is validated on a data set of roughly 100,000 readily sized and simulated operational amplifiers.
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