Shiba Inu价格分析:SHIB牛市能否突破1700万美元的阻力位?

币界网Pubblicato 2024-08-10Pubblicato ultima volta 2024-08-10

币界网报道:

Shiba Inu的价格从周一的市场崩盘中反弹了25%,8月8日达到0.000014美元。然而,链上数据显示,583万SHIB的抛售墙如何威胁到复苏阶段。

Shiba Inu 25%的价格反弹停止在0.000014美元

Shiba Inu(SHIB)在最近的市场动荡中表现出了韧性,从8月5日的重大市场崩盘中反弹了25%。

在低点0.000011美元之后,SHIB在8月8日飙升至0.000014美元,这是由一系列看涨催化剂推动的,包括ETF流入、对Ripple的1.25亿美元罚款以及俄罗斯决定将加密货币挖矿合法化。然而,随着SHIB接近0.000014美元的阻力位,看涨势头开始减弱。

Shiba Inu价格行动SHIBUSD | TradingView

最近SHIB价格的上涨可以追溯到这些催化剂,这些催化剂在更广泛的加密货币市场上产生了乐观情绪。受益于整个行业的反弹,Shiba Inu的价格在短短三天内从8月5日的低点上涨了近33%,达到8月8日的高点。

价格图显示,在大幅上涨之后,SHIB遇到了0.000014美元左右的强劲阻力位,大量卖出订单开始累积。

剩余卖出订单阻碍牛市势头

尽管最初的看涨情绪,但自周一市场崩盘以来,现有卖出订单的高发生率似乎正在抵消这一积极势头。在过去的24小时里,SHIB经历了4%的回调,从最近的0.000014美元高点回落。这一调整发生在SHIB无法突破阻力位的时候,这与大盘资产在反弹期间触及阻力点导致的更广泛的市场回落相吻合。

交易所订单簿显示,几天前还在控制局面的空头仍然持有大量卖出订单,阻碍了SHIB突破0.000015美元。

Shiba Inu订购书SHIBUSD | IntoTheBlock

Shiba Inu(SHIB)的链上市场深度图显示看跌前景,卖出订单超过买入订单。以0.000014美元的平均价格计算,卖出订单中约有5.43万亿SHIB,而买入订单中有3.03万亿SHIC,两者之间存在2.4万亿SHIB的负差,即约1700万美元。

这种需求下降表明缺乏强有力的购买支持,如果这种趋势持续下去,可能会导致价格进一步下跌。

Shiba Inu价格预测:突破0.00015美元可能带来更多收益

价格图上的布林带表明,SHIB目前在较低的区间附近交易,表明其处于超卖状态,这可能预示着潜在的反弹。相对强弱指数(RSI)也暗示可能出现看涨逆转,因为它徘徊在超卖区域附近。

如果SHIB能够维持在0.000013美元的支撑位,买家介入以吸收抛售压力,价格可能会重新测试0.000015美元的阻力位。成功突破这一水平可能会为进一步上涨打开大门,下一个阻力点约为0.000018美元。

Shiba Inu价格预测SHIBUSD | TradingView

然而,如果未能守住0.000013美元的支撑位,SHIB可能会重新测试之前发现强烈买入兴趣的0.000012美元水平。

总之,虽然技术指标表明可能会有更多上行空间,但SHIB突破0.000015美元阻力位的能力可能取决于更广泛的市场情绪,以及是否会出现任何新的看涨消息来抵消现有的抛售压力。如果这些条件得到满足,SHIB的价格走势可能会再次上涨。

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