Топ-5 криптовалют по ежедневной активности адресов в ноябре 2025

cryptonews.ruPublished on 2025-04-13Last updated on 2025-11-14

В последние месяцы среди участников крипторынка наблюдается смещение интереса от простых спекуляций к долгосрочным инвестициям и реальному использованию блокчейн-сетей. В этом контексте ежедневная активность адресов выступает одним из ключевых показателей, отражающим популярность тех или иных криптовалют. Редакция Crypto.ru выделила 5 монет, которые больше всего отметились по данному параметру.

Лидером рейтинга с крупным отрывом стал TRON. Текущая ежедневная активность в блокчейне криптовалюты оценивается в 2,69 млн адресов.

Проект TRON был запущен в 2017 году. Изначально разработчики ориентировались на создание децентрализованной платформы развлекательного контента. Впоследствии TRON превратился в глобальную экосистему в DeFi-пространстве.

На втором месте находится USD Coin (USDC). Число активных адресов в экосистеме стейблкоина оценивается в 2,16 млн в день. В целом USDC остается одним из наиболее востребованных цифровых активов на рынке. Стабильная монета обширно используется для расчетов и торговых операций, особенно в сегменте DeFi.

Третью строчку рейтинга занимает еще один популярный стейблкоин — Tether USD (USDT). Текущая численность активных адресов в данной экосистеме оценивается в 1,67 млн в день. Примечательно, что Tether время от времени сталкивается с критикой, многие пользователи отмечают: структура резервов компании не совсем прозрачна. Но это не мешает USDT стабильно поддерживать высокую популярность.

Есть и другие монеты, которые не вошли в топ-3, но стабильно демонстрируют высокое число активных адресов:

  • Ethereum (ETH) — 748 тыс.
  • Bitcoin (BTC) — 622 тыс.

Напоминаем, ранее на Crypto.ru публиковалась инфографика по криптовалютам с самой высокой волатильностью в октябре 2025 года.

Инфографика
Топ-5 криптовалют по суточной активности адресов в ноябре 2025 года

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