сотрудник с 01.01.2019 по 01.01.2021
Воронежская область, Россия
Воронежская область, Россия
Россия
АО "Научно-исследовательский институт электронной техники"
Россия
В статье говорится о создании поведенческой модели металлооксидных латеральных транзисторов (LDMOS), базирующихся на нейронной сети типа многослойный персептрон. Модель идентифицируется с использованием алгоритма обратного распространения. Продемонстрирован процесс создания модели ИНС с использованием Pytorch, фреймворка машинного обучения для языка Python, с последующим переносом на стандартный язык моделирования аналоговых схем Verilog-A.
LDMOS, ИНС, Verilog-A, Pytorch, поведенческая модель
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