Применение Data Mining в космических приложениях

Автор: Деревянко Виктор Валерьевич

Журнал: Космические аппараты и технологии.

Рубрика: Информационные технологии

Статья в выпуске: 1 (1), 2012 года.

Бесплатный доступ

Представлен обзор направлений использования Data Mining в различных приложениях космической тематики: контроль качества изготовления микросхем, анализ телеметрических данных, мониторинг работы космических аппаратов в процессе полета, предпусковой анализ космических аппаратов, прогнозирование поломок, анализ данных на борту космического аппарата в процессе полета и так далее.

Поиск аномалий, контроль качества, космические аппараты

Короткий адрес: https://sciup.org/14117267

IDR: 14117267

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