Zhou Jin, Haojie Pei, Yichao Dong, Xiang Jin, Xiao Wu, Weipeng Xing, Dan Niu
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引用次数: 2

摘要

直流分析是非线性电子电路仿真的基础。在各种延拓算法中,伪瞬态分析(PTA)方法取得了很大的成功。然而,如果没有仔细调整参数和适当的步进策略,PTA往往是计算密集型的。在本文中,我们利用机器学习的最新进展来同时解决这些挑战。特别地,利用主动学习来提供一个良好的初始求解器环境,其中实现了基于td3的强化学习(RL)来加速动态仿真。采用双代理、优先抽样和合作学习等方法增强RL智能体的鲁棒性和收敛性。所提出的算法在一个开箱即用的spice模拟器中实现,该模拟器显示出显着的加速:初始阶段高达3.1倍,RL阶段高达234X。
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Accelerating nonlinear DC circuit simulation with reinforcement learning
DC analysis is the foundation for nonlinear electronic circuit simulation. Pseudo transient analysis (PTA) methods have gained great success among various continuation algorithms. However, PTA tends to be computationally intensive without careful tuning of parameters and proper stepping strategies. In this paper, we harness the latest advancing in machine learning to resolve these challenges simultaneously. Particularly, an active learning is leveraged to provide a fine initial solver environment, in which a TD3-based Reinforcement Learning (RL) is implemented to accelerate the simulation on the fly. The RL agent is strengthen with dual agents, priority sampling, and cooperative learning to enhance its robustness and convergence. The proposed algorithms are implemented in an out-of-the-box SPICElike simulator, which demonstrated a significant speedup: up to 3.1X for the initial stage and 234X for the RL stage.
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