Deep-Learning-Based Pre-Layout Parasitic Capacitance Prediction on SRAM Designs
Deep-Learning-Based Pre-Layout Parasitic Capacitance Prediction on SRAM Designs
To achieve higher system energy efficiency, SRAM in SoCs is often customized. The parasitic effects cause notable discrepancies between pre-layout and post-layout circuit simulations, leading to difficulty in converging design parameters and excessive design iterations. Is it possible to well predict the parasitics based on the pre-layout circuit, so as to perform parasitic-aware pre-layout simulation? In this work, we propose a deep-learning-based 2-stage model to accurately predict these parasitics in pre-layout stages. The model combines a Graph Neural Network (GNN) classifier and Multi-Layer Perceptron (MLP) regressors, effectively managing class imbalance of the net parasitics in SRAM circuits. We also employ Focal Loss to mitigate the impact of abundant internal net samples and integrate subcircuit information into the graph to abstract the hierarchical structure of schematics. Experiments on 4 real SRAM designs show that our approach not only surpasses the state-of-the-art model in parasitic prediction by a maximum of 19X reduction of error but also significantly boosts the simulation process by up to 598X speedup.
Shan Shen、Dingcheng Yang、Yuyang Xie、Chunyan Pei、Wenjian Yu、Bei Yu
微电子学、集成电路电子技术应用计算技术、计算机技术
Shan Shen,Dingcheng Yang,Yuyang Xie,Chunyan Pei,Wenjian Yu,Bei Yu.Deep-Learning-Based Pre-Layout Parasitic Capacitance Prediction on SRAM Designs[EB/OL].(2025-07-09)[2025-07-23].https://arxiv.org/abs/2507.06549.点此复制
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