Ионика твердого тела 2011–2021 гг.: тренды и перспективы
- Авторы: Иванов-Шиц А.К.1,2
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Учреждения:
- Институт кристаллографии им. А.В. Шубникова ФНИЦ “Кристаллография и фотоника” РАН
- МГИМО МИД РФ
- Выпуск: Том 59, № 1 (2023)
- Страницы: 4-15
- Раздел: Статьи
- URL: https://journals.rcsi.science/0424-8570/article/view/139220
- DOI: https://doi.org/10.31857/S0424857023010188
- EDN: https://elibrary.ru/JXPPJA
- ID: 139220
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Аннотация
На основании анализа публикационной активности с использованием единой библиографической и реферативной базы данных рецензируемой научной литературы Scopus установлены тенденции развития основных разделов ионики твердого тела. Указаны перспективные области исследований, связанные с in situ и operando экспериментами, искусственным интеллектом (машинным обучением) и конструированием новых устройств с использованием суперионных материалов.
Ключевые слова
Об авторах
А. К. Иванов-Шиц
Институт кристаллографии им. А.В. Шубникова ФНИЦ “Кристаллография и фотоника” РАН; МГИМО МИД РФ
Автор, ответственный за переписку.
Email: alexey.k.ivanov@gmail.com
Россия, Москва; Россия, Москва
Список литературы
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