以太坊ETF今晚开始交易、ETH能不能站稳3500?山寨币会跟涨吗?

币界网Published on 2024-07-23Last updated on 2024-07-23

币界网报道:

对于很多投资者来说,XRP 的上涨之路既艰难又漫长,而且痛苦。然而,7 月 12 日,XRP 的价格开始出现突破,很快就达到了 0.6 美元。不幸的是,事情变得复杂了,因为出现了看跌的蜡烛图形态,成交量也呈下降趋势。

在跌至 0.6 美元后,XRP开始表现出强势,突破了 50 EMA、100 EMA 和 200 EMA 等重要阻力位。在这一大动作之后,交易员和投资者都感到乐观。但最近出现的看跌蜡烛图模式表明未来可能出现困难。 

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50 EMA 支撑位:需要关注的直接支撑位是 50 EMA,位于 0.50 美元。如果 XRP 跌破该水平,则可能预示着进一步下跌。此外,200 EMA 为 0.53 美元,100 EMA 为 0.52 美元,是可能有助于保持价格稳定的关键支撑位。 

0.65 美元阻力位:0.65 美元水平是值得注意的上行阻力位。突破该阻力位可能会重新点燃看涨势头,并将XRP推向更高的目标 - 可能高达 0.70 美元。 

看跌反转:如果看跌蜡烛图模式维持,且成交量没有增加,XRP 可能会回落至之前指示的支撑位。这种情况可能预示着一段盘整期,或者抛售压力加剧,出现更深层次的修正。

横向移动:横向交易期间,XRP 在 0.50 美元至 0.65 美元之间波动,这是另一种可能性。这表明交易者在等待更明确的信号,不愿在市场上做出重大举动。 

以太坊受到打击 

以太坊在价格接近 3,550 美元时遭遇了意外的抛售压力。这导致以太坊立即跌至 3,400 美元区域,考虑到交易量不足,以太坊很可能从这里开始反转。  

持续下跌趋势:如果抛售压力不减弱且交易量不增加,以太坊可能会继续下跌。下一个重要支撑位是橙色 100 EMA 所代表的约 3,300 美元。交易者必须密切关注这一水平,因为如果ETH未能守住,它可能会跌至 200 EMA(黑色),即 3,118 美元。 

从支撑位反弹:相比之下,以太坊可能会在 3,400 美元处找到强劲支撑位,这可能会导致反弹。该支撑位位于蓝色 50 EMA 附近,该水平在历史上一直是关键水平。如果购买兴趣上升,ETH 的价格可能会试图恢复 3,550 美元大关,甚至可能达到 3,700 美元附近的更高阻力位。 

横向走势:另一种可能的结果就是出现一段盘整期。市场可能正在寻找方向,因此以太坊可能在 3,400 美元至 3,550 美元之间横向盘整。在主要催化剂促使任一方向突破之前,这种区间波动可能会持续下去。

Toncoin转为看跌 

Toncoin从 5 月到 7 月的增长令人印象深刻;该资产一直在不断升值,超过关键指标,并且没有出现任何逆转迹象。然而,一旦交易员看到更具吸引力的投资选择,TON 的势头就会消失。 

200 EMA 约为 5.49 美元,100 EMA 约为 6.62 美元,是下一个需要关注的支撑位。对于可能的逆转,这些区域至关重要。如果 TON 能够在这些水平找到支撑,它可能会稳定下来并重新获得一些上涨势头。 

从交易量下降可以看出,购买兴趣减少。除非有新买家介入支撑价格,否则交易量减少可能会导致价格进一步下跌。如果抛售压力随着 RSI 接近超卖区域而减轻,TON 可能会反弹。 

在这些水平上,如果能站稳脚跟,TON 可能会稳定下来,甚至进一步上涨。不过,如果抛售压力持续存在且这些支撑位被突破,TON 可能会遭受更多损失。密切关注任何市场逆转的迹象并谨慎行事。

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