Zheng Li,Xiao Chun Li,Ze-Ming Wu,Yuanxin Zhu,Junfa Mao
出处
期刊:IEEE Transactions on Microwave Theory and Techniques日期:2023-09-01卷期号:71 (9): 3784-3796
标识
DOI:10.1109/tmtt.2023.3251658
摘要
High-speed link consisting of drivers and interconnects is essential for high-speed data transmission. In this article, a surrogate modeling technique based on graph neural network (GNN) and recurrent neural network (RNN) is proposed for signal integrity (SI) analysis of high-speed links with variable physical parameters and variable topologies. First, GNN extracts global features that can fully characterize components of the high-speed link from their topologies and physical parameters. Second, RNN takes the extracted global features and the excitation waveforms as inputs to predict the response waveforms. Finally, the well-trained GNN -RNN surrogate models of components of the high-speed link are cascaded as the entire surrogate model of the high-speed link. Numerical examples of the dri- ver model, the interconnect model, and the entire high-speed link model are provided for validation. It is shown that the proposed GNN -RNN surrogate models achieve low mean squared errors (MSEs), mean absolute errors (MAEs), and high efficiency.