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    Título
    A Deep Learning-Monte Carlo Combined Prediction of Side-Effect Impact Ionization in Highly Doped GaN Diodes
    Autor(es)
    Sergio, García SánchezAutoridad USAL ORCID
    Rengel Estévez, RaúlAutoridad USAL ORCID
    Pérez Santos, María SusanaAutoridad USAL ORCID
    González Sánchez, TomásAutoridad USAL ORCID
    Mateos López, JavierAutoridad USAL ORCID
    Palabras clave
    Gunn diodes
    doped GaN
    THz generation
    Monte Carlo simulations
    electronic transport
    artificial intelligence (AI)
    deep learning
    Clasificación UNESCO
    1203.04 Inteligencia Artificial
    2203.06 Transporte de Electrones
    Fecha de publicación
    2023
    Citación
    S. García-Sánchez, R. Rengel, S. Pérez, T. González and J. Mateos, "A Deep Learning-Monte Carlo Combined Prediction of Side-Effect Impact Ionization in Highly Doped GaN Diodes," in IEEE Transactions on Electron Devices, vol. 70, no. 6, pp. 2981-2987, June 2023, doi: 10.1109/TED.2023.3265625.
    Resumen
    The existence of leakage current pathways leading to the appearance of impact ionization and the potential device breakdown in planar Gunn GaN diodes is analyzed by means of a combined Monte Carlo-deep learning approach. Front-view (lateral) Monte Carlo simulations of the devices show the appearance of a high-field hotspot at the anode corner of the etched region, just at the boundaries between the dielectric, the GaN-doped layer, and the buffer. Thus, if the isolation created by the etched trenches is not complete, a relevant hot carrier population within the buffer is observed at sufficiently high applied voltages, provoking the appearance of a very significant number of impact ionizations and the consequent avalanche process before the onset of Gunn oscillations. A neural network trained from Monte Carlo simulations allows predicting with extremely good precision the breakdown voltage of the diodes depending on the doping of the GaN active layer, the permittivity of the isolating dielectric, and the lattice temperature. Low doping, high temperature and high permittivity provide larger operational voltages, which implies a tradeoff with the conditions required to achieve THz Gunn oscillations at low voltages.
    URI
    https://hdl.handle.net/10366/154550
    ISSN
    0018-9383
    DOI
    10.1109/TED.2023.3265625
    Versión del editor
    https://ieeexplore.ieee.org/document/10105182
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    • GINEAF. Artículos [100]
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