This work introduces a model-based optimization approach for on-chip copper-graphene interconnects. The aim of this study is to optimize the signal integrity (SI) characteristics of these nano interconnects. Employing existing optimization techniques to improve the SI performance of advanced technology node copper-graphene interconnects remains challenging due to prohibitive computational costs as these interconnects require precise characterization through computationally exhaustive full-wave simulations. Our current work proposes a flexible and efficient modeling and optimization framework that improves SI compared to electromagnetic (EM) simulations using advanced, data-intensive optimization algorithms such as Genetic Algorithm (GA) and Pattern Search. We use the Gamultiobjective and Paretosearch algorithms to demonstrate the capabilities of the proposed framework and verify the accuracy of results in both single- and multiobjective scenarios with the help of two numerical examples.
Kushwaha et al. (Thu,) studied this question.