Wafer-scale functional circuits based on two dimensional semiconductors with fabrication optimized by machine learning.
Xinyu ChenYufeng XieYaochen ShengHongwei TangZeming WangYu WangYin WangFuyou LiaoJingyi MaXiaojiao GuoLing TongHanqi LiuHao LiuTianxiang WuJiaxin CaoSitong BuHui ShenFuyu BaiDaming HuangJianan DengAntoine RiaudZihan XuChenjian WuShiwei XingYe LuShunli MaZhengzong SunZhongyin XueZengfeng DiXiao GongDavid Wei ZhangPeng ZhouJing WanWen-Zhong BaoPublished in: Nature communications (2021)
Triggered by the pioneering research on graphene, the family of two-dimensional layered materials (2DLMs) has been investigated for more than a decade, and appealing functionalities have been demonstrated. However, there are still challenges inhibiting high-quality growth and circuit-level integration, and results from previous studies are still far from complying with industrial standards. Here, we overcome these challenges by utilizing machine-learning (ML) algorithms to evaluate key process parameters that impact the electrical characteristics of MoS2 top-gated field-effect transistors (FETs). The wafer-scale fabrication processes are then guided by ML combined with grid searching to co-optimize device performance, including mobility, threshold voltage and subthreshold swing. A 62-level SPICE modeling was implemented for MoS2 FETs and further used to construct functional digital, analog, and photodetection circuits. Finally, we present wafer-scale test FET arrays and a 4-bit full adder employing industry-standard design flows and processes. Taken together, these results experimentally validate the application potential of ML-assisted fabrication optimization for beyond-silicon electronic materials.
Keyphrases
- machine learning
- artificial intelligence
- room temperature
- reduced graphene oxide
- quantum dots
- big data
- low cost
- tissue engineering
- deep learning
- highly efficient
- signaling pathway
- transition metal
- wastewater treatment
- atomic force microscopy
- high density
- gold nanoparticles
- high speed
- mass spectrometry
- single molecule