卡尔达诺价格预测——如果0.3美元保持不变,请关注这些价格水平!

币界网Published on 2024-08-08Last updated on 2024-08-08

币界网报道:
    ADA从0.3美元的年度低点有所反弹。0.3美元的支撑仍然至关重要;近54万个地址在该级别购买了ADA

卡尔达诺[ADA]在跌至0.27美元后,于2024年创下年度新低,打破了6月低点0.31美元的纪录。然而,ADA在6月和8月的反弹发生在图表上的0.3美元以上。

在一些艰难的价格行动之后,ADA在8月7日星期二实现了6%的反弹。事实上,在撰写本文时,它在24小时图表上上涨了1%,加密货币交易价格为0.33美元。简而言之,它似乎已准备好进一步推动整体市场复苏。

因此,问题是——在复苏反弹中需要注意哪些关键水平?

需考虑的ADA关键级别

与6月份的ADA抛售一样,最近的血洗在每周的突破点有所缓解,标记为白色,接近0.3美元。这证实了价格水平是看涨者的一个关键兴趣领域,正如2023年11月和最近2024年所看到的那样。

若ADA推动复苏,有两个直接的看涨目标需要考虑。第一个目标是78.6%的Fib水平(0.36美元),如果达到这一水平,可能会带来约9%的收益。其次,对趋势线阻力的重新测试可能会从突破性区块中获得29%的收益。

然而,关键技术图表在发稿时表现疲软,如RSI(相对强弱指数)和CMF(Chaikin资金流)所示。这意味着购买力和资本流入仍低于平均水平。

简而言之,保守的复苏目标将是78.6%的Fib水平,除非比特币进一步突破6万美元。

然而,跌破需求和突破点0.3美元也可能加速ADA的抛售。

大多数地址以接近0.3美元的价格购买了ADA

跌破0.3美元可能会加速大屠杀,因为大多数地址以0.3美元的价格购买了山寨币。持有5.56 ADA的近54万个地址以0.3至0.22美元的价格收购了山寨币。因此,跌破支撑位将引发大量用户恐慌性抛售以减少损失。

与此同时,期货市场的投机者,尤其是那些持有杠杆多头头寸的投机者,已经将ADA敞口降至最低。

根据Coinglass的多头/空头比率,8月2日至6日期间,杠杆多头头寸的数量从46%增加到49%。


阅读卡尔达诺价格预测2024–2025


相反,截至发稿时,这一数字略有下降,表明期货市场对ADA并不那么乐观。

简而言之,ADA可能会出现缓慢复苏,但0.3美元的支撑仍然至关重要。

免责声明:所提供的信息不构成财务、投资、交易或其他类型的建议,仅代表作者的意见。

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