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PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network

Publication ,  Conference
Xie, Z; Ren, H; Khailany, B; Sheng, Y; Santosh, S; Hu, J; Chen, Y
Published in: Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC
January 1, 2020

IR drop is a fundamental constraint required by almost all chip designs. However, its evaluation usually takes a long time that hinders mitigation techniques for fixing its violations. In this work, we develop a fast dynamic IR drop estimation technique, named PowerNet, based on a convolutional neural network (CNN). It can handle both vector-based and vectorless IR analyses. Moreover, the proposed CNN model is general and transferable to different designs. This is in contrast to most existing machine learning (ML) approaches, where a model is applicable only to a specific design. Experimental results show that PowerNet outperforms the latest ML method by 9% in accuracy for the challenging case of vectorless IR drop and achieves a 30× speedup compared to an accurate IR drop commercial tool. Further, a mitigation tool guided by PowerNet reduces IR drop hotspots by 26% and 31% on two industrial designs, respectively, with very limited modification on their power grids.

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Published In

Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC

DOI

ISBN

9781728141237

Publication Date

January 1, 2020

Volume

2020-January

Start / End Page

13 / 18
 

Citation

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Xie, Z., Ren, H., Khailany, B., Sheng, Y., Santosh, S., Hu, J., & Chen, Y. (2020). PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network. In Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC (Vol. 2020-January, pp. 13–18). https://doi.org/10.1109/ASP-DAC47756.2020.9045574
Xie, Z., H. Ren, B. Khailany, Y. Sheng, S. Santosh, J. Hu, and Y. Chen. “PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network.” In Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC, 2020-January:13–18, 2020. https://doi.org/10.1109/ASP-DAC47756.2020.9045574.
Xie Z, Ren H, Khailany B, Sheng Y, Santosh S, Hu J, et al. PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network. In: Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC. 2020. p. 13–8.
Xie, Z., et al. “PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network.” Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC, vol. 2020-January, 2020, pp. 13–18. Scopus, doi:10.1109/ASP-DAC47756.2020.9045574.
Xie Z, Ren H, Khailany B, Sheng Y, Santosh S, Hu J, Chen Y. PowerNet: Transferable Dynamic IR Drop Estimation via Maximum Convolutional Neural Network. Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC. 2020. p. 13–18.

Published In

Proceedings of the Asia and South Pacific Design Automation Conference, ASP-DAC

DOI

ISBN

9781728141237

Publication Date

January 1, 2020

Volume

2020-January

Start / End Page

13 / 18