磷烯
晶体管
晶体管型号
计算机科学
场效应晶体管
电子工程
材料科学
纳米技术
工程类
电气工程
单层
电压
标识
DOI:10.1109/ted.2021.3085701
摘要
Design optimization of emerging nanoscale transistor technologies often requires careful design tradeoff between many objectives, including speed, power, variability, and so on. By leveraging machine learning (ML) methods, we develop a multiobjective optimization (MOO) framework for 2-D-material-based field-effect transistors (FETs) near the scaling limit. The MOO design framework performs gradient-free efficient global optimization and offers the option of using active learning. Optimum designs with a tradeoff between transistor speed, power, and variability are identified automatically for transition metal dichalcogenide (TMDC) and black phosphorene FETs by applying the MOO design framework that couples ML methods to quantum transport device simulations. The design optimization results show that the International Roadmap of Devices and Systems (IRDS) target of 2025 and 2028 technology nodes can be met by 2-D FETs.
科研通智能强力驱动
Strongly Powered by AbleSci AI