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

Zhiyao Xie, Haoxing Ren, Brucek Khailany, Ye Sheng, Santosh Santosh, Jiang Hu, Yiran Chen

202084 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Convolutional neural networkDrop (telecommunication)Computer sciencePower network designAlgorithmSpeedupArtificial neural networkConstraint (computer-aided design)Artificial intelligenceRobustness (evolution)Deep learningPattern recognition (psychology)Deep neural networksPower (physics)Machine learningMachine Learning and ELMLow-power high-performance VLSI designVLSI and Analog Circuit Testing