基于强化学习的运算放大器拓扑优化

Zihao Chen, Songlei Meng, F. Yang, Li Shang, Xuan Zeng
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摘要

随着设计复杂性和上市时间压力的不断增加,需要用于运算放大器的自动化拓扑合成工具来生产满足不同规格的设计。本文提出了一种基于强化学习的运算放大器拓扑优化方法TOTAL。我们将电路拓扑设计分解为一个马尔可夫决策过程,以解决设计空间的高维性,并固定了三级级联代码范式,以避免无意义的结构。因此,从基本的行为级拓扑开始,智能体逐步修改电路。具体来说,该智能体主要采用图神经网络来理解每个设计状态,包括规格和设计历史,并采用卷积神经网络来修改当前拓扑。然后通过定制的奖励函数对每个完成的电路进行模拟和评估,以指导智能体找到合格的电路,其中只有记录的最优电路才会映射到晶体管级别进行进一步评估。实验结果表明,训练后的智能体不仅可以生成高性能的电路,而且可以作为预训练模型转移到其他规范中,并具有可重用性和竞争性。
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TOTAL: Topology Optimization of Operational Amplifier via Reinforcement Learning
With ever-increasing design complexity and stringent time-to-market pressure, automated topology synthesis tools for operational amplifiers are required to produce designs meeting different specifications. This paper proposes TOTAL, a reinforcement learning-based topology optimization method for operational amplifiers. We decompose the circuit topology design as a Markov decision process to solve the high dimensionality of the design space, with the three-stage cascode paradigm fixed to avoid meaningless structures. Therefore, starting from a basic behavior-level topology, an agent modifies the circuit step by step. Specifically, this agent mainly adopts a graph neural network to understand each design state, including specifications and the design history, and a convolutional neural network to modify the current topology. Every completed circuit is then simulated and evaluated by a customized reward function to guide the agent in finding qualified circuits, among which only the optimal one ever recorded is mapped to the transistor level for further evaluation. Experimental results show that the trained agent can not only generate high-performance circuits, but also be reusable by transferring to other specifications as a pre-trained model and achieving competitive results.
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