Из централизованных бирж вывели ETH на $1,2 млрд за неделю

cryptonews.ruPublished on 2025-04-14Last updated on 2025-05-14

На рынке эфира (ETH) фиксируется устойчивый отток монет с централизованных бирж. За последние 7 дней пользователи вывели монеты на сумму около $1,2 млрд, что стало одним из крупнейших недельных показателей за 2025 год. Об этом свидетельствуют данные платформы IntoTheBlock, ныне Sentora, за период с 6 по 13 мая.

Согласно графику, начиная с 7 мая чистый отток эфира резко вырос, достигнув максимума 8 мая и продолжая оставаться на отрицательных значениях большую часть недели. Общая тенденция демонстрирует последовательное сокращение предложения ETH на торговых платформах, что указывает на активную фазу накопления среди инвесторов и уменьшения объема монет, доступных для быстрой продажи.

На фоне этого оттока цена ETH уверенно росла, закрепившись выше отметки $2600 к 13 мая. Показательно, что наиболее заметное укрепление курса произошло в дни максимальных оттоков, когда чистые потери бирж по ETH превысили 190 тыс. монет в сутки. Это подтверждает связь между сокращением предложения на спотовом рынке и повышением спроса со стороны долгосрочных держателей.

Аналитики отмечают, что такой тренд снижает краткосрочное давление продаж и формирует предпосылки для продолжения роста цены цифрового актива. Обычно подобная динамика отражает ожидания инвесторов относительно будущего удорожания и подготовку к удержанию монет вне бирж, к примеру, в целях участия в стейкинге или других DeFi-протоколах.

Если отток ETH продолжится в ближайшие недели, это может создать дополнительный дефицит ликвидности на централизованных биржах и спровоцировать дальнейшее укрепление котировок. По прогнозам IntoTheBlock, текущая ситуация способна стать драйвером нового роста эфира, особенно в случае сохранения положительных настроений на крипторынке в целом.

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