Solana на пути к $400: вероятность одобрения ETF растет

cryptonews.ruPublished on 2021-05-03Last updated on 2025-01-03

Цена на Solana начала новый год с подъема после послерождественского спада, в результате которого SOL опустилась ниже психологически важной отметки в 200 долларов.

Solana начала расти с минимумов в $187 1 января и достигла внутридневных максимумов в $209,18 на торгах в четверг, что стало самой высокой ценой SOL с 19 декабря. SOL выросла более чем на 10,8% за последний день и достигла отметки около $206,89. Сейчас она упала на 21,3% с момента установления нового исторического максимума в $263 в ноябре.

Solana восстановила цену выше $200 на фоне ожиданий одобрения SOL ETF. Вероятность запуска ETF в США оценивается в 85%.

Влияние Bitcoin и других активов

Укрепление Bitcoin также поддерживает рост Solana. После снижения до $91,800 в декабре, BTC вернулся к отметке $97,287, поднявшись на 3% за сутки.
Ripple (XRP) и другие крупные криптоактивы также демонстрируют рост — XRP прибавил около 5%, торгуясь на уровне $2.43.

Цена SOL может взлететь до $400 при одобрении ETF Solana в США

Стоимость криптовалюты SOL, по прогнозам аналитиков, имеет потенциал достичь отметки в $400. Такой сценарий базируется на исторических данных ценовой динамики и усилении ожиданий, связанных с запуском биржевого фонда Solana (ETF) на рынке США. Многие инвесторы выражают уверенность в том, что до конца 2025 года регуляторы дадут «зеленый свет» спотовому ETF для SOL.

На сегодняшний день ряд крупных управляющих компаний активно добивается одобрения таких фондов. Среди них значатся Grayscale, VanEck, 21Shares, Bitwise и Canary Capital. Заявки на создание ETF уже находятся на рассмотрении Комиссии по ценным бумагам и биржам США (SEC), а предварительные решения по ним могут появиться уже к концу текущего месяца.

Интересно, что Бразилия стала одной из первых стран, утвердивших ETF Solana – это произошло в августе 2024 года. Этот шаг создаёт пример для других государств, желающих ввести подобные фонды. Между тем, согласно данным криптовалютной платформы ставок Polymarket, вероятность того, что SEC одобрит спотовые ETF для SOL к 2025 году, оценивается в 85%.

При этом результат во многом будет зависеть от позиции регулятора в отношении Solana. Юридический статус актива в настоящее время неопределен из-за продолжающегося контроля со стороны SEC. Ранее агентство классифицировало SOL , наряду с несколькими другими криптоактивами, как ценную бумагу в своих делах о принудительном исполнении против известных криптокомпаний.

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