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Lee, Jongeun
Intelligent Computing and Codesign Lab.
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Learning to Predict IR Drop with Effective Training for ReRAM-based Neural Network Hardware

Author(s)
Lee, SugilJung, GijuFouda, Mohammed E.Lee, JongeunEltawil, AhmedKurdahi, Fadi
Issued Date
2020-07-20
DOI
10.1109/dac18072.2020.9218735
URI
https://scholarworks.unist.ac.kr/handle/201301/78370
Citation
Design Automation Conference
Abstract
Due to the inevitability of the IR drop problem in passive ReRAM crossbar arrays, finding a software solution that can predict the effect of IR drop without the need of expensive SPICE simulations, is very desirable. In this paper, two simple neural networks are proposed as software solution to predict the effect of IR drop. These networks can be easily integrated in any deep neural network framework to incorporate the IR drop problem during training. As an example, the proposed solution is integrated in BinaryNet framework and the test validation results, done through SPICE simulations, show very high improvement in performance close to the baseline performance, which demonstrates the efficacy of the proposed method. In addition, the proposed solution outperforms the prior work on challenging datasets such as CIFAR10 and SVHN.
Publisher
IEEE

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