Login / Signup

Machine-learning-assisted and real-time-feedback-controlled growth of InAs/GaAs quantum dots.

Chao ShenWenkang ZhanKaiyao XinManyang LiZhenyu SunHui CongChi XuJian TangZhaofeng WuBo XuZhong-Ming WeiChunlai XueChao ZhaoZhanguo Wang
Published in: Nature communications (2024)
The applications of self-assembled InAs/GaAs quantum dots (QDs) for lasers and single photon sources strongly rely on their density and quality. Establishing the process parameters in molecular beam epitaxy (MBE) for a specific density of QDs is a multidimensional optimization challenge, usually addressed through time-consuming and iterative trial-and-error. Here, we report a real-time feedback control method to realize the growth of QDs with arbitrary density, which is fully automated and intelligent. We develop a machine learning (ML) model named 3D ResNet 50 trained using reflection high-energy electron diffraction (RHEED) videos as input instead of static images and providing real-time feedback on surface morphologies for process control. As a result, we demonstrate that ML from previous growth could predict the post-growth density of QDs, by successfully tuning the QD densities in near-real time from 1.5 × 10 10  cm -2 down to 3.8 × 10 8  cm -2 or up to 1.4 × 10 11  cm -2 . Compared to traditional methods, our approach can dramatically expedite the optimization process and improve the reproducibility of MBE. The concepts and methodologies proved feasible in this work are promising to be applied to a variety of material growth processes, which will revolutionize semiconductor manufacturing for optoelectronic and microelectronic industries.
Keyphrases