卡尔达诺反弹,但这就是为什么周末前价格可能下跌的原因

币界网Published on 2024-08-22Last updated on 2024-08-22

币界网报道:
    卡尔达诺市场结构在突破0.355美元后,在日线图上看涨。AMBCrypto发现,ADA的价格很有可能在周末前下跌。

卡尔达诺[ADA]从上周0.32美元的低点反弹14.4%。这鼓励了短期买家,但该代币再次在阻力区交易。最近的一份报告预测了这一反弹。

交易员应该谨慎还是做多,0.42美元是下一个关键阻力位?AMBCrypto的分析发现,谨慎是有必要的,空头仍然是占主导地位的一方。

卡尔达诺接近61.8%的阻力位

根据前面提到的报告,0.36美元和0.42美元的流动性口袋是最接近的重大阻力区。它们与斐波那契回撤水平一致。

截至发稿时,ADA处于0.366美元的50%水平。RSI升至中性50以上,预示着看涨势头的转变。然而,OBV未能创下新高,这表明尽管价格反弹,但缺乏购买压力。

因此,尽管日结构看跌,但较高的时间段下跌趋势可能会持续下去。跌至0.388美元和0.418美元可能会出现看跌逆转。

波段交易者可以等待这些水平的拒绝,然后再做空。当地低点0.3-0.312美元将是看跌目标。

价格下跌似乎迫在眉睫

清算水平数据显示,在未来24-48小时内,不太可能突破0.38美元。


阅读卡尔达诺的[ADA]价格预测2024-25


累积液体水平增量为高度正值。反过来,价格下跌可能会让这些过于乐观的看涨者越位。

0.353美元和0.345美元的区域可能是近期的目标。比特币[BTC]的波动性也可能影响卡尔达诺的短期走势。

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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