看涨模式的出现, AAVE 有望突破154 美元

币界网Pubblicato 2024-08-22Pubblicato ultima volta 2024-08-22

币界网报道:

AAVE 已突破双底形态的颈线,为上涨至 154 美元铺平了道路

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截至撰写本文时,Aave [AAVE]已延续其每周 37% 的涨势,交易价格为 141.23 美元。过去 24 小时内,价格上涨了 7.8%,与此同时交易量也增加了 14.7%。

随着市场对 AAVE 的兴趣和购买活动不断增加,AAVE 的涨势也随之而来。鲸鱼们已经在代币领域掀起波澜,最近几个小时内购买了价值超过 800 万美元的 AAVE。

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我认为现在可能是关注 AAVE 的时候了,因为价格显示出突破 2.5 年区间的迹象。

那么,AAVE 是否能够获得更多收益?

查看技术指标

回顾 AAVE 自 2022 年 6 月跌至两年低点以来的价格走势,可以发现它已经突破了关键阻力位。

AAVE 已两次测试 0.618 斐波那契水平 112 美元,并将价格保持在该区域之上。

该代币还测试并突破了另一个关键阻力位 130 美元,如果突破,下一个目标将是两年高点 154 美元。

自 2024 年 3 月从高点下跌以来,AAVE 已形成双底形态。这通常是一种看涨反转形态,先出现大幅反弹。

该代币还突破了双底形态的颈线,为上涨至 154 美元铺平了道路。

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相对强弱指数 (RSI) 为 74,表明 AAVE 上涨的背后是强劲的购买压力。

虽然 RSI 正在走向超买区域,但在可能出现回调之前仍有上涨空间。在短期交易者获利回吐之前,RSI 在之前的反弹中曾达到 86 的峰值。

移动平均线收敛散度 (MACD) 线位于信号线上方,也呈看涨趋势。MACD 柱状图自 8 月 15 日以来不断变长,反映出看涨情绪增强。

只要 MACD 直方图条随着购买活动的激增而变长,反弹就可能持续。

AAVE 有更多看涨信号吗?

Santiment 的数据显示,AAVE 每日活跃地址数量已达到 2023 年 7 月以来的最高水平。这是一个看涨指标,表明代币需求增加且市场兴趣上升。

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通过对Coinglass数据的观察还显示,AAVE 的未平仓合约已飙升至 2021 年以来的最高水平。自 8 月 1 日以来,未平仓合约已从 9300 万美元飙升至撰写本文时的 1.91 亿美元。

简单来说

截至发稿时,AAVE 继续上涨,RSI 为 74,表明购买活动激增。同时价格已经突破双底形态,下一个关键阻力位在 154 美元,活跃地址与未平仓合约大幅上涨,表明了市场需求巨大与兴趣的上涨。

综上所述,技术指标与市场情绪等支持 AAVE 短期内的看涨前景。长期来看随着双底形态的突破为其价格上升至154 美元铺平了道路,与此同时看涨情绪延续与购买活动激增预计将会推动其持续反弹预计后续将推动测试突破 154美元的关键阻力位,即使如此投资者也要更多注意即将到来的宏观事件对市场的影响以及潜在的波动。

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323 Totale visualizzazioniPubblicato il 2024.12.11Aggiornato il 2025.03.21

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