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 <front>
  <journal-meta>
   <journal-id journal-id-type="publisher-id">Modeling of systems and processes</journal-id>
   <journal-title-group>
    <journal-title xml:lang="en">Modeling of systems and processes</journal-title>
    <trans-title-group xml:lang="ru">
     <trans-title>Моделирование систем и процессов</trans-title>
    </trans-title-group>
   </journal-title-group>
   <issn publication-format="print">2219-0767</issn>
  </journal-meta>
  <article-meta>
   <article-id pub-id-type="publisher-id">45382</article-id>
   <article-id pub-id-type="doi">10.12737/2219-0767-2021-14-2-28-34</article-id>
   <article-categories>
    <subj-group subj-group-type="toc-heading" xml:lang="ru">
     <subject>Технические науки</subject>
    </subj-group>
    <subj-group subj-group-type="toc-heading" xml:lang="en">
     <subject></subject>
    </subj-group>
    <subj-group>
     <subject>Технические науки</subject>
    </subj-group>
   </article-categories>
   <title-group>
    <article-title xml:lang="en">Creation of a behavioral model of a LDMOS transistor based on an artificial MLP neural network and its description in Verilog-A language</article-title>
    <trans-title-group xml:lang="ru">
     <trans-title>Создание поведенческой модели LDMOS транзистора на основе искусственной MLP нейросети и ее описание на языке Verilog-A</trans-title>
    </trans-title-group>
   </title-group>
   <contrib-group content-type="authors">
    <contrib contrib-type="author">
     <name-alternatives>
      <name xml:lang="ru">
       <surname>Победа</surname>
       <given-names>Сергей Александрович</given-names>
      </name>
      <name xml:lang="en">
       <surname>Pobeda</surname>
       <given-names>Sergey Aleksandrovich</given-names>
      </name>
     </name-alternatives>
     <email>pobeda-km-121@mail.ru</email>
     <xref ref-type="aff" rid="aff-1"/>
    </contrib>
    <contrib contrib-type="author">
     <name-alternatives>
      <name xml:lang="ru">
       <surname>Черных</surname>
       <given-names>М. И.</given-names>
      </name>
      <name xml:lang="en">
       <surname>Chernyh</surname>
       <given-names>M. I.</given-names>
      </name>
     </name-alternatives>
     <xref ref-type="aff" rid="aff-2"/>
    </contrib>
    <contrib contrib-type="author">
     <name-alternatives>
      <name xml:lang="ru">
       <surname>Макаренко</surname>
       <given-names>Филипп Владимирович</given-names>
      </name>
      <name xml:lang="en">
       <surname>Makarenko</surname>
       <given-names>F. V.</given-names>
      </name>
     </name-alternatives>
     <xref ref-type="aff" rid="aff-3"/>
    </contrib>
    <contrib contrib-type="author">
     <name-alternatives>
      <name xml:lang="ru">
       <surname>Зольников</surname>
       <given-names>Константин Владимирович</given-names>
      </name>
      <name xml:lang="en">
       <surname>Zolnikov</surname>
       <given-names>Konstantin Vladimirovich</given-names>
      </name>
     </name-alternatives>
     <xref ref-type="aff" rid="aff-4"/>
    </contrib>
   </contrib-group>
   <aff-alternatives id="aff-1">
    <aff>
     <institution xml:lang="ru">АО &quot;НИИЭТ&quot;</institution>
     <city>Воронеж</city>
     <country>Россия</country>
    </aff>
    <aff>
     <institution xml:lang="en">АО &quot;НИИЭТ&quot;</institution>
     <city>Воронеж</city>
     <country>Russian Federation</country>
    </aff>
   </aff-alternatives>
   <aff-alternatives id="aff-2">
    <aff>
     <institution xml:lang="ru">АО &quot;Научно-исследовательский институт электронной техники&quot;</institution>
     <city>Воронеж</city>
     <country>Россия</country>
    </aff>
    <aff>
     <institution xml:lang="en">АО &quot;Научно-исследовательский институт электронной техники&quot;</institution>
     <city>Воронеж</city>
     <country>Russian Federation</country>
    </aff>
   </aff-alternatives>
   <aff-alternatives id="aff-3">
    <aff>
     <institution xml:lang="ru">Воронежский государственный лесотехнический университет имени Г.Ф. Морозова</institution>
    </aff>
    <aff>
     <institution xml:lang="en">Voronezh State University of Forestry and Technologies named after G.F. Morozov</institution>
    </aff>
   </aff-alternatives>
   <aff-alternatives id="aff-4">
    <aff>
     <institution xml:lang="ru">Воронежский государственный лесотехнический университет имени Г.Ф. Морозова</institution>
     <country>Россия</country>
    </aff>
    <aff>
     <institution xml:lang="en">Voronezh State University of Forestry and Technologies named after G.F. Morozov</institution>
     <country>Russian Federation</country>
    </aff>
   </aff-alternatives>
   <volume>14</volume>
   <issue>2</issue>
   <fpage>28</fpage>
   <lpage>34</lpage>
   <history>
    <date date-type="received" iso-8601-date="2021-02-25T00:00:00+03:00">
     <day>25</day>
     <month>02</month>
     <year>2021</year>
    </date>
   </history>
   <self-uri xlink:href="https://naukaru.ru/en/nauka/article/45382/view">https://naukaru.ru/en/nauka/article/45382/view</self-uri>
   <abstract xml:lang="ru">
    <p>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.</p>
   </abstract>
   <trans-abstract xml:lang="en">
    <p>The article deals with the creation of a behavioral model of lateral metal oxide transistors (LDMOS) based on a neural network of the multilayer percep-tron type. The model is identified using a backpropa-gation algorithm. Demonstrated the process of creating an ANN model using Pytorch, a machine learning framework for the Python language, with subsequent transfer to the standard analog circuit modeling lan-guage Verilog-A.</p>
   </trans-abstract>
   <kwd-group xml:lang="ru">
    <kwd>LDMOS</kwd>
    <kwd>ИНС</kwd>
    <kwd>Verilog-A</kwd>
    <kwd>Pytorch</kwd>
    <kwd>поведенческая модель</kwd>
   </kwd-group>
   <kwd-group xml:lang="en">
    <kwd>LDMOS</kwd>
    <kwd>ANN</kwd>
    <kwd>Verilog-A</kwd>
    <kwd>Pytorch</kwd>
    <kwd>behavioral model</kwd>
   </kwd-group>
  </article-meta>
 </front>
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