Soft-computing based classification and design of quantum dot nanostructures on GaAs substrate

2017 IEEE 15th International Symposium on Intelligent Systems and Informatics (SISY)(2017)

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摘要
The parameters of the semiconductor devices can be improved by nanostructures significantly. For this reason, it is necessary to produce nanostructures with given parameters. The soft-computing design of the self-organized nanostructures and a new classification model will be discussed in this paper. These nanostructures are formed by droplet epitaxy on compound semiconductor substrate. The parameters of the nanostructures (type, size, distribution) depend on the applied technology. The key factors of the technology (substrate temperature, Ga flux, As pressure, annealing time and annealing temperature) will be determined as design parameters. These parameters are set in order to produce nanostructures with the desired property. The revised version of previously introduced nanostructure fuzzy-based classification model will be also discussed.
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关键词
soft-computing design,classification model,compound semiconductor substrate,quantum dot nanostructures,nanostructure fuzzy-based classification model,soft-computing based classification,GaAs substrate,semiconductor devices,self-organized nanostructures,droplet epitaxy,substrate temperature,Ga flux,As pressure,annealing time,annealing temperature,GaAs
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