Deep Reinforcement Learning-based Decoupling Capacitor Optimization Method for Multi-Power Domain considering Transfer Noise in 3D-ICs

Seonghi Lee, Hyunwoong Kim, Dongryul Park, Jangyong Ahn, Seung-Han Ryu, Gagyeong Park, Seungyoung Ahn
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Abstract

In this paper, we propose a deep reinforcement learning (DRL)-based multi-power distribution network (PDN) decoupling capacitor design optimization method considering transfer noise in 3D-ICs. The transfer noise from multi-PDN with vertical structures could cause system failure, the entire simultaneous switching noise (SSN) with the combined transfer noise should be considered. To address the multi-PDN problem, we use reinforcement learning suitable for solving complex optimization problems. The input dataset and Markov decision process (MDP) were designed to optimize various multi-PDN cases. The 5x4 size of two PDNs with a vertically stacked structure was used for verification. The proposed method successfully optimizes the decoupling capacitors of multi-PDN. In addition, the proposed method was compared to genetic algorithm (GA), the proposed method perfomed better optimization and reduced the time by about 99% compared to GA to 0.08 seconds.
三维集成电路中基于深度强化学习的多功率域解耦电容优化方法
在本文中,我们提出了一种基于深度强化学习(DRL)的多配电网络(PDN)解耦电容设计优化方法,该方法考虑了3d - ic中的传递噪声。垂直结构的多pdn传输噪声会导致系统故障,因此需要考虑传输噪声组合的全同步交换噪声。为了解决多pdn问题,我们使用了适合于解决复杂优化问题的强化学习。设计了输入数据集和马尔可夫决策过程(MDP)来优化各种多pdn情况。采用5x4尺寸的两个pdn垂直堆叠结构进行验证。该方法成功地优化了多pdn的去耦电容。此外,将所提方法与遗传算法(GA)进行了比较,结果表明,所提方法具有更好的寻优性能,寻优时间仅为0.08秒,比遗传算法缩短了约99%。
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