Shen Chao, Zhan Wenkang, Pan Shujie, Hao Hongyue, Zhuo Ning, Xin Kaiyao, Cong Hui, Xu Chi, Xu Bo, Ng Tien Khee, Chen Siming, Xue Chunlai, Wang Zhanguo, Zhao Chao
Laboratory of Solid State Optoelectronics Information Technology, Institute of Semiconductors, Chinese Academy of Sciences, Beijing, 100083, China.
College of Materials Science and Opto-Electronic Technology, University of Chinese Academy of Sciences, Beijing, 101408, China.
Adv Sci (Weinh). 2025 Jul;12(27):e2503059. doi: 10.1002/advs.202503059. Epub 2025 May 2.
Traditional methods for optimizing light source emissions rely on a time-consuming trial-and-error approach. While in situ optimization of light source gain media emission during growth is ideal, it has yet to be realized. In this work, in situ reflection high-energy electron diffraction (RHEED) is integrated with machine learning (ML) to correlate the surface reconstruction with the photoluminescence (PL) of InAs/GaAs quantum dots (QDs), which serve as the active region of lasers. A lightweight ResNet-GLAM model is employed for the real-time processing of RHEED data as input, enabling effective identification of optical performance. This approach guides the dynamic optimization of growth parameters, allowing real-time feedback control to adjust the QDs emission for lasers. InAs QDs on GaAs substrates are successfully optimized, with a 3.2-fold increase in PL intensity and a reduction in full width at half maximum (FWHM) from 36.69 to 28.17 meV. Automated, in situ self-optimized lasers with 5-layer InAs QDs achieved electrically pumped continuous-wave operation at 1240 nm with a low threshold current of 150 A cm at room temperature, an excellent performance comparable to samples grown through traditional manual multi-parameter optimization methods. These results mark a significant step toward intelligent, low-cost, and reproductive light emitters production.
传统的优化光源发射的方法依赖于耗时的试错法。虽然在生长过程中对光源增益介质发射进行原位优化是理想的,但尚未实现。在这项工作中,原位反射高能电子衍射(RHEED)与机器学习(ML)相结合,将表面重构与作为激光器有源区的InAs/GaAs量子点(QD)的光致发光(PL)相关联。采用轻量级ResNet-GLAM模型对RHEED数据作为输入进行实时处理,从而有效识别光学性能。这种方法指导生长参数的动态优化,允许实时反馈控制来调整用于激光器的量子点发射。成功优化了GaAs衬底上的InAs量子点,PL强度提高了3.2倍,半高宽(FWHM)从36.69 meV降低到28.17 meV。具有5层InAs量子点的自动化原位自优化激光器在室温下实现了1240 nm的电泵浦连续波操作,阈值电流低至150 A cm ,其优异性能可与通过传统手动多参数优化方法生长的样品相媲美。这些结果标志着朝着智能、低成本和可重复生产发光器件迈出了重要一步。