Elastos представил стейблкоин на базе биткоина

cryptonews.ruPublicado a 2025-04-19Actualizado a 2025-06-19

BTCFi-проект Elastos выпустил стейблкоин BTCD, обеспеченный первой криптовалютой.

The wait is over. Introducing the first fully Bitcoin-backed stablecoin, The Bitcoin Dollar — $BTCD⚡️

BTCD is the world’s first Bitcoin-native stablecoin, fully collateralized with BTC and governed by Elastos. It's time to put Bitcoin’s trillion-dollar balance sheet to work! pic.twitter.com/DDbzRUsVQS

— Elastos (@ElastosInfo) June 18, 2025

Команда стремится создать «цифровую версию Бреттон-Вудской системы» — послевоенного соглашения, которое закрепило привязку доллара США к золоту и утвердило его в роли мировой резервной валюты для укрепления финансовой стабильности.

«[Мы] переосмысливаем Бреттон-Вудс, положив в основу биткоин», — заявили в Elastos.

Привязанные к доллару стейблкоины обычно обеспечены фиатными валютами и краткосрочными гособлигациями США, отличающимися высокой ликвидностью.

BTCD, в отличие от традиционных «стабильных монет», обеспечен волатильным активом — биткоином.

В разговоре с CoinDesk представители Elastos пояснили, что решают проблему ценовых колебаний за счет избыточного обеспечения — на уровне 160-200% от стоимости BTCD.

«Оракулы обновляют курс первой криптовалюты к доллару в каждом блоке. Если покрытие снижается до 110%, арбитражеры могут погасить долг, выкупить цифровое золото с небольшим дисконтом и устранить риск», — отметили разработчики.

Таким образом, курс регулируется алгоритмически, путем выпуска и сжигания BTCD в зависимости от соотношения спроса и предложения.

Совокупная рыночная капитализация сегмента стейблкоинов превысила $260 млрд.

Данные: CoinGecko.

Общий TVL децентрализованных приложений на базе биткоина составляет $6,41 млрд. Сегмент занимает третью строчку рейтинга DeFi Llama, уступая лишь экосистемам на основе Ethereum и Solana.

Данные: DeFi Llama.

Крупнейшая BTCFi-платформа — Babylon Protocol. TVL рестейкингового сервиса составляет $4,9 млрд.

Напомним, основатель Cardano Чарльз Хоскинсон предложил выделить из резервов проекта $100 млн в токенах ADA на покупку биткоинов и стейблкоинов.

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