Shiba Inu爆发可能会引发130%的飙升至0.00005美元,交易员预测

币界网Published on 2024-07-18Last updated on 2024-07-18

币界网报道:

加密货币投资者SHIB KNIGHT认为Shiba Inu有可能突破,预计突破将引发130%的价格反弹。

这位分析师在X上最近的一篇帖子中做出了这一预测。他的分析指出,市场出现了逆转,表明在周线图上确认突破后,可能会飙升至0.00005美元。

SHIB KNIGHT提供的图表显示了一个下降的三角形模式。随着SHIB接近三角形的顶点,潜在的突破迫在眉睫。这种模式表明,如果价格突破三角形的上限,可能会上涨。

据分析师称,突破后的目标价格可能比突破点上涨130.10%。SHIB KNIGHT强调需要密切关注周线图,因为它将提供更广泛的视角,说明突破是否是更大趋势逆转的一部分。

关键支撑位和阻力位

与此同时,围绕价格的入/出资金(IOMAP)分析根据SHIB代币持有者的购买价格提供了进一步的数据。在0.000016美元至0.000019美元的价格区间内,明显存在显著的支撑位,大量地址以低于当前价格的价格购买了SHIB。

IntoTheBlock

具体而言,支撑位在0.000016至0.000017美元、0.000017至0.000018美元和0.000018至0.000019美元的范围内表现强劲。围绕这些水平的购买兴趣表明了巨大的支撑,如果价格下跌,可能会限制下行空间。

市场条件有利

在最近的一项分析中,市场分析师Javon Marks还讨论了Shiba Inu的突破潜力,预计即将出现飙升。Marks曾准确预测SHIB今年早些时候的反弹至0.000045美元,现在预计可能会回到历史高点。

他在2月份的分析中发现了一个从下行通道突破的模式,导致价格飙升。Marks指出了一个隐藏的看涨分歧和有利的市场条件,表明SHIB可能会在即将到来的上升趋势中达到新的高度。

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