学习设计模拟电路以满足阈值规格

Dmitrii Krylov, Pooya Khajeh, Junhan Ouyang, Thomas Reeves, Tongkai Liu, Hiba Ajmal, Hamidreza Aghasi, Roy Fox
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引用次数: 0

摘要

利用从仿真数据中获得的监督学习或强化学习来自动设计模拟电路和射频电路,最近被研究作为人工专家设计的替代方案。对于设计代理来说,从期望的性能指标到电路参数学习反函数是很简单的。然而,更常见的情况是用户拥有阈值性能标准,而不是可行性能度量的精确目标向量。在这项工作中,我们提出了一种从模拟数据生成数据集的方法,在该数据集上,系统可以通过监督学习进行训练,以设计满足阈值规格的电路。此外,我们还对自动化模拟电路设计进行了迄今为止最广泛的评估,包括在比以前的工作更多样化的电路中进行实验,涵盖线性,非线性和自主电路配置,并表明我们的方法在5%的误差范围内始终达到90%以上的成功率,同时还将数据效率提高了一个数量级。该系统的演示可以在circuits.streamlit.app上获得
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Learning to Design Analog Circuits to Meet Threshold Specifications
Automated design of analog and radio-frequency circuits using supervised or reinforcement learning from simulation data has recently been studied as an alternative to manual expert design. It is straightforward for a design agent to learn an inverse function from desired performance metrics to circuit parameters. However, it is more common for a user to have threshold performance criteria rather than an exact target vector of feasible performance measures. In this work, we propose a method for generating from simulation data a dataset on which a system can be trained via supervised learning to design circuits to meet threshold specifications. We moreover perform the to-date most extensive evaluation of automated analog circuit design, including experimenting in a significantly more diverse set of circuits than in prior work, covering linear, nonlinear, and autonomous circuit configurations, and show that our method consistently reaches success rate better than 90% at 5% error margin, while also improving data efficiency by upward of an order of magnitude. A demo of this system is available at circuits.streamlit.app
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