柴犬销毁率高达 612% – SHIB 的看跌势头是否正在消退?

币界网Publicado a 2025-01-24Actualizado a 2025-01-24

Resumen

如果 SHIB 能够设法守住 0.0000197 美元的支撑位,那么这可能会开辟一条整合甚至逆转的道路。未能守住该水平可能会为进一步下跌打开大门。

Shib的烧伤率飙升了612%,总计超过320万个令牌。

Memecoin的看跌压力逐渐消失,长/短比例显示出销售势头降低。

在上周下跌超过 20% 后,shiba inu的[shib]看跌势头终于开始减弱。

Memecoin已开始以0.0000197美元的价格接近关键支持水平,这可能标志着决定其进一步价格行动的转折点。

正如历史所指示的那样,强大的支持水平的作用像是心理锚点,吸引了买家并逮捕了下降。

有趣的是,据Shibburn数据显示,在过去的24小时内,Shiba INU的燃烧率急剧飙升。

Memecoin的燃烧率跃升了612%,总计超过3,244,007个shib,从循环中永久删除。

虽然仅此一项可能不会立即推高价格,但供应的减少会增加 SHIB 的需求——如果需求上升,这一因素可能会提振长期价值。

SHIB抛售压力正在减弱

随着 memecoin 接近 0.0000197 美元的关键支撑位,看跌势头的消退可能表明卖家已经失去了动力。

然而,这种看跌势头的减弱并不能保证价格立即回升。

为了使 SHIB 显着反弹,抛售压力减少、代币销毁增加和需求改善的结合需要收敛。

尽管612%的销毁率增长令人印象深刻,但其对价格的影响在很大程度上取决于市场需求和交易量。

如果 SHIB 能够设法守住 0.0000197 美元的支撑位,那么这可能会开辟一条整合甚至逆转的道路。未能守住该水平可能会为进一步下跌打开大门。

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Cómo comprar SHIB

¡Bienvenido a HTX.com! Hemos hecho que comprar SHIBA INU (SHIB) sea simple y conveniente. Sigue nuestra guía paso a paso para iniciar tu viaje de criptos.Paso 1: crea tu cuenta HTXUtiliza tu correo electrónico o número de teléfono para registrarte y obtener una cuenta gratuita en HTX. Experimenta un proceso de registro sin complicaciones y desbloquea todas las funciones.Obtener mi cuentaPaso 2: ve a Comprar cripto y elige tu método de pagoTarjeta de crédito/débito: usa tu Visa o Mastercard para comprar SHIBA INU (SHIB) al instante.Saldo: utiliza fondos del saldo de tu cuenta HTX para tradear sin problemas.Terceros: hemos agregado métodos de pago populares como Google Pay y Apple Pay para mejorar la comodidad.P2P: tradear directamente con otros usuarios en HTX.Over-the-Counter (OTC): ofrecemos servicios personalizados y tipos de cambio competitivos para los traders.Paso 3: guarda tu SHIBA INU (SHIB)Después de comprar tu SHIBA INU (SHIB), guárdalo en tu cuenta HTX. Alternativamente, puedes enviarlo a otro lugar mediante transferencia blockchain o utilizarlo para tradear otras criptomonedas.Paso 4: tradear SHIBA INU (SHIB)Tradear fácilmente con SHIBA INU (SHIB) en HTX's mercado spot. Simplemente accede a tu cuenta, selecciona tu par de trading, ejecuta tus trades y monitorea en tiempo real. Ofrecemos una experiencia fácil de usar tanto para principiantes como para traders experimentados.

485 Vistas totalesPublicado en 2024.12.11Actualizado en 2026.06.02

Cómo comprar SHIB

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Bienvenido a la comunidad de HTX. Aquí puedes mantenerte informado sobre los últimos desarrollos de la plataforma y acceder a análisis profesionales del mercado. A continuación se presentan las opiniones de los usuarios sobre el precio de SHIB (SHIB).

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