Интеллектуальные самоорганизующиеся когнитивные регуляторы. Ч. 2: Модели когнитивных интерфейсов «мозг – устройство»

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И.А. Бархатова
И.А. Соколов
Г.Ю. Шмыков
С.В. Ульянов

Аннотация

Рассматриваются основные типы управляющих сигналов с коры головного мозга, методы регистрации и возможность их обработки на основе оптимизатора баз знаний на мягких вычислениях для формирования соответствующих баз знаний когнитивных регуляторов. Приведена схема когнитивного интерфейса «мозг – устройство» и примеры эффективного применения. Рассмотрена связь процессов проектирования когнитивных регуляторов с методами Kansei / Affective инженерии. 

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Бархатова , И., Соколов , И., Шмыков, Г. и Ульянов , С. 2021. Интеллектуальные самоорганизующиеся когнитивные регуляторы. Ч. 2: Модели когнитивных интерфейсов «мозг – устройство» . Системный анализ в науке и образовании. 1 (сен. 2021), 81–116.
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