The design automation of analog circuits is a longstanding challenge. This paper presents a reinforcement learning method enhanced by graph learning to automate the analog circuit parameter optimization at the pre-layout stage, i.e., finding device parameters to fulfill desired circuit specifications. Unlike all prior methods, our approach is inspired by human experts who rely on domain knowledge of analog circuit design (e.g., circuit topology and couplings between circuit specifications) to tackle the problem. By originally incorporating such key domain knowledge into policy training with a multimodal network, the method best learns the complex relations between circuit parameters and design targets, enabling optimal decisions in the optimization process. Experimental results on exemplary circuits show it achieves human-level design accuracy (99%) 1.5X efficiency of existing best-performing methods. Our method also shows better generalization ability to unseen specifications and optimality in circuit performance optimization. Moreover, it applies to design radio-frequency circuits on emerging semiconductor technologies, breaking the limitations of prior learning methods in designing conventional analog circuits.
翻译:模拟电路的设计自动化是一个长期的挑战。 本文展示了一种强化学习方法,通过图形学习使模拟电路参数优化在预置阶段自动化,即寻找设备参数以达到理想的电路规格。 与以往所有方法不同,我们的方法是由依赖模拟电路设计领域知识的人类专家启发的(例如,电路地形和电路规格之间的连接)来解决这个问题。 最初,将这类关键领域知识纳入多式网络的政策培训,这种方法最能了解电路参数和设计目标之间的复杂关系,从而在优化过程中促成最佳决策。 示范电路的实验结果表明,它达到了现有最佳方法的人类水平设计精度(99%) 1. 5x效率。 我们的方法还显示,在超视技术的通用能力和电路性能优化方面的最佳性能。 此外,它适用于设计新兴半导技术的无线电频率电路,打破了在设计常规模拟电路方面先前学习方法的局限性。