Classical and quantum regression analysis for the optoelectronic performance of NTCDA/p-Si UV photodiode

2 Jan 2020Ahmed M. El-MahalawyKareem H. El-Safty

Due to the pivotal role of UV photodiodes in many technological applications in tandem with the high efficiency achieved by machine learning techniques in regression and classification problems, different artificial intelligence techniques are adopted model the performance of organic/inorganic heterojunction UV photodiode. Herein, the performance of a fabricated Au/NTCDA/p-Si/Al photodiode was explained in details and showed an excellent responsivity, and detectivity for UV light of intensities ranges from 20 to 80 ${mW/cm^2}$... (read more)

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