В Норвегии электроэнергия подорожала на 20% из-за биткоин-майнеров

investing.ruPublished on 2024-09-15Last updated on 2024-09-15

Happycoin.club - В норвежской коммуне Хадсель, в которой проживают около 8236 человек, электроэнергия подорожала на 20% из-за закрытия предприятия по майнингу биткоинов.

Центр по добыче криптовалюты открылся в Хадселе весной 2022 года, и местные жители практически сразу ополчились на компанию из-за шума, создаваемого при работе оборудования. Старания активистов, требующих прекращения майнинга цифровых активов, увенчались успехом 9 сентября, когда предприятие официально закрыли.

Норвежцы обрадовались наступившей тишине, но столкнулись с неожиданной проблемой. Стоимость электроэнергии резко повысилась на 20%, потому что энергетической фирме Noranett пришлось компенсировать значительное падение дохода вследствие сворачивания майнинга биткоинов. Дата-центр ежегодно потреблял примерно 80 гигаватт-час электроэнергии, что составляет около 40% мощности, расходуемой в Хадселе.

Управляющий Noranett Робин Якобсен предупредил жителей коммуны о предстоящем росте расходов на электроэнергию из-за прекращения добычи криптовалюты. По его словам, ежегодно каждое домохозяйство будет платить на 2500-3000 норвежских крон больше (₽21 250-23 500).

Коммуна Хадсель

Американцы решили бороться с шумовым загрязнением от добывающих цифровые активы предприятий на законодательном уровне. Недавно в штате Арканзас приняли указ, устанавливающий ограничения на шум, издаваемый майнинговыми центрами. Нормативный акт вступит в силу после того, как его подпишет губернатор региона Сара Сандерс, публично поддержавшая инициативу.

Читайте оригинальную статью на сайте Happycoin.club

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