Algorithm-Based Linearly Graded Compositions of GeSn on GaAs (001) via Molecular Beam Epitaxy.
Calbi GunderMohammad Zamani-AlavijehEmmanuel WangilaFernando Maia de OliveiraAida SheibaniSerhii KryvyiPaul C AttwoodYuriy I MazurShui-Qing YuGregory J SalamoPublished in: Nanomaterials (Basel, Switzerland) (2024)
The growth of high-composition GeSn films in the future will likely be guided by algorithms. In this study, we show how a logarithmic-based algorithm can be used to obtain high-quality GeSn compositions up to 16% on GaAs (001) substrates via molecular beam epitaxy. Herein, we use composition targeting and logarithmic Sn cell temperature control to achieve linearly graded pseudomorph Ge 1-x Sn x compositions up to 10% before partial relaxation of the structure and a continued gradient up to 16% GeSn. In this report, we use X-ray diffraction, simulation, secondary ion mass spectrometry, and atomic force microscopy to analyze and demonstrate some of the possible growths that can be produced with the enclosed algorithm. This methodology of growth is a major step forward in the field of GeSn development and the first ever demonstration of algorithmically driven, linearly graded GeSn films.
Keyphrases
- machine learning
- deep learning
- atomic force microscopy
- single molecule
- mass spectrometry
- high resolution
- electron microscopy
- high speed
- neural network
- single cell
- cell therapy
- computed tomography
- magnetic resonance imaging
- cancer therapy
- drug delivery
- current status
- ms ms
- mesenchymal stem cells
- virtual reality
- dual energy