Названы сроки возобновления запрета на майнинг в двух российских регионах

cryptonews.ruPublicado a 2025-04-11Actualizado a 2025-11-12

С 15 ноября в отдельных районах Забайкальского края и республики Бурятия возобновляется частичный запрет на добычу цифровых активов, сообщило агентство РИА Новости со ссылкой на нормативные акты.

Ограничения в этих регионах будут действовать в осенне-зимний период и сохранятся до 2031 года. Это связано с прогнозируемым дефицитом электроэнергии в пиковые месяцы потребления.

В июне правительственная комиссия по развитию электроэнергетики рассматривала вопрос полного запрета майнинга в Забайкальском крае Бурятии, но он был отложен на неопределенный срок.

В сентябре Минэнерго объявило об отсутствии новых обращений от губернаторов с просьбой о запрете добычи цифровых активов и маловероятности появления таких ограничений в среднесрочной перспективе.

С 1 января до 15 марта 2031 года российское правительство полностью запретило майнинг криптовалют в десяти субъектах, в том числе в регионах Северного Кавказа.

Ранее первый заместитель комитета Госдумы по информационной политике и связи Антон Горелкин рассказал, что несмотря на легализацию добычи криптовалют, у российских майнеров сложился чрезвычайно негативный имидж в обществе.

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