光致发光
材料科学
光谱学
光致发光激发
光电子学
半导体
硫化锌
硫化镉
氮化镓
分析化学(期刊)
化学
锌
纳米技术
物理
冶金
量子力学
图层(电子)
色谱法
作者
Yinchuan Yu,Matthew D. McCluskey
标识
DOI:10.1177/00037028211031618
摘要
Photoluminescence spectroscopy is a nondestructive optical method that is widely used to characterize semiconductors. In the photoluminescence process, a substance absorbs photons and emits light with longer wavelengths via electronic transitions. This paper discusses a method for identifying substances from their photoluminescence spectra using machine learning, a technique that is efficient in making classifications. Neural networks were constructed by taking simulated photoluminescence spectra as the input and the identity of the substance as the output. In this paper, six different semiconductors were chosen as categories: gallium oxide (Ga2O3), zinc oxide (ZnO), gallium nitride (GaN), cadmium sulfide (CdS), tungsten disulfide (WS2), and cesium lead bromide (CsPbBr3). The developed algorithm has a high accuracy (>90%) for assigning a substance to one of these six categories from its photoluminescence spectrum and correctly identified a mixed Ga2O3/ZnO sample.
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