Минимальный объём валютных резервов за два года подготавливает сиба-ину к ралли «Uptober»

cryptonews.ruPubblicato 2025-10-14Pubblicato ultima volta 2025-10-14

  • Валютный резерв сиба-ину упал до двухлетнего минимума.
  • Снижение валютного резерва обычно предшествует росту цен.
  • Снижение валютных резервов SHIB, похоже, произошло вовремя для потенциального подъема.

По мнению криптовалютного аналитика, сиба-ину ожидает заметный рост после двухлетнего минимума резервов. В своей последней публикации на X криптоаналитик сообщил, что резервы сиба-ину упали до 84,55 триллиона токенов, что вызвало новый бычий импульс в сообществе мем-монеты.

$SHIB exchange reserves Falls to 84.55T tokens (~$998M), the lowest since 2023…. What This Means For Price?🐾

Fresh on-chain data suggesting tokens are moving into self-custody/staking instead of sitting on exchanges.

Why it matters 👇
🔥 Shrinking supply = less sell… pic.twitter.com/ZIkNm1Ovv7

— Crypto Zayn (@Zaynnode) September 29, 2025

Как валютные резервы влияют на цены криптовалют?

Аналитик продолжил объяснение потенциального влияния сокращения резервов бирж на цены криптовалют. По его словам, такой сценарий предполагает, что пользователи выводят свои криптоактивы с бирж и переводят их в программы самостоятельного хранения или стейкинга. Технически сокращение предложения конкретного криптоактива подразумевает снижение давления. Между тем, исторические данные показывают, что снижение резервов предшествует волнам накопления.

По теме: Прогноз цен на сиба-ину: аналитики отслеживают скачок сопротивления в преддверии октябрьской волатильности

Тем временем аналитик отметил, что большинство членов сообщества сиба-ину, включая аналитиков криптовалютного рынка в целом, согласны с тем, что сиба-ину находится в зоне накопления. Однако текущая тенденция опускает криптовалюту ниже уровня сопротивления нисходящему тренду в районе $0,000011. Следовательно, прорыв этого уровня может спровоцировать ралли и изменить динамику криптовалюты на бычий.

Сиба-ину и эффект «Аптобера»

Валютные резервы сиба-ину сократились с примерно 190 триллионов в январе 2023 года и с тех пор не смогли восстановиться. Показатель неуклонно снижался, пока в начале этого года не достиг 140 триллионов. Продолжающееся падение объёма привело к тому, что валютные резервы сиба-ину опустились до текущего уровня, отмеченного аналитиком.

Аналитик считает, что нынешние бычьи тенденции сиба-ину соответствуют традиционному феномену «аптобер», широко распространенному в криптовалютном сообществе. Криптовалютные энтузиасты используют этот термин для описания октября, учитывая репутацию этого месяца как месяца с бычьей динамикой на крипторынке. Кстати, в октябре 2021 года сиба-ину достигла своего исторического максимума в $0,00008845.

По данным TradingView, на момент написания статьи акции SHIB торговались по цене $0,00001174 после снижения на 20% за последние две недели.

По теме: Риски для породы сиба-ину растут, поскольку лидерство колеблется, а цена ожидает резкого роста

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