학술논문

Pre-Layout Parasitic-Aware Design Optimizing for RF Circuits Using Graph Neural Network
Document Type
article
Source
Electronics, Vol 12, Iss 2, p 465 (2023)
Subject
analog circuit
machine learning
graph neural network
RF circuit
Electronics
TK7800-8360
Language
English
ISSN
2079-9292
Abstract
The performance of analog and RF circuits is widely affected by the interconnection parasitic in the circuit. With the progress of technology, interconnection parasitics plays a larger role in performance deterioration. To solve this problem, designers must repeat layout design and validation process. In order to achieve an upgrade in the design efficiency, in this paper, a Graph Neural Network (GNN)-based pre-layout parasitic parameter prediction method is proposed and applied to the design optimization of a 28 nm PLL. With the new method adopted, the frequency band overlap rate of the VCO is improved by 2.3 percents for an equal design effort. Similarly, the optimized CP is superior to the traditional method with a 15 ps mismatch time. These improvements are achieved under the premise of greatly saving the optimization iteration and verification costs.