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Reinforcement Learning-Based Decap Optimization Method for High-Performance Solid-State Drive

Authors :
Jung-Hwan Choi
Kihyun Sung
Hyunwoo Jung
Jae-young Shin
Hyung-Jong Ko
Soo-Min Kim
Jinwook Song
Wooshin Choi
Sanghyun Lee
Source :
2021 IEEE International Joint EMC/SI/PI and EMC Europe Symposium.
Publication Year :
2021
Publisher :
IEEE, 2021.

Abstract

In this paper, we propose an improved optimal decoupling capacitor (decap) design method based on Q-learning algorithm for high-performance solid-state drive (SSD). The proposed method selects optimal decap combinations that satisfies target impedance with minimum decap number. Based on Q-learning algorithm combined with transmission line theory, optimal decap combinations of power distribution network (PDN) can be provided. The proposed method was verified with voltage ripple measurement and PDN impedance simulation using SSD for high-performance server application. Conventional decap optimization method are using complex and time-consuming analytical tool with power integrity (PI) domain expertise. However, the proposed method requires only the PDN and decap information along with a simple Q-learning model without PI knowledge, providing faster and accurate results than full search optimization method. For example, in 21 decaps combination problem, the proposed method’s computing time consumes only few minutes, 89.09 sec, which is significantly reduced result compared with the conventional full search simulation. Therefore, we expected the proposed method can be widely used to solve for decap optimization problem with complex PDN.

Details

Database :
OpenAIRE
Journal :
2021 IEEE International Joint EMC/SI/PI and EMC Europe Symposium
Accession number :
edsair.doi...........4d6d02627de99c11e9c53472321ade97
Full Text :
https://doi.org/10.1109/emc/si/pi/emceurope52599.2021.9559162