比特币 (BTC) 价格跌至 27,000 美元,下一步是什么?

BiteyeОпубликовано 2023-05-09Обновлено 2023-05-09

Введение

比特币 (BTC) 价格在过去几周一直在下跌。它现在有跌破短期看跌形态的风险。 这种模式的崩溃可能是导致 BTC 价格急剧下跌的原因,使BTC价格达到自 3 月初以来的最低水平。

比特币 (BTC) 价格在过去几周一直在下跌。它现在有跌破短期看跌形态的风险。

这种模式的崩溃可能是导致 BTC 价格急剧下跌的原因,使BTC价格达到自 3 月初以来的最低水平。

BTC自 4 月初以来的价格走势一直看跌。 4 月 17 日至 24 日这一周的看跌吞没烛台形态突出了这一点,并在接下来的几周内两次被拒绝(红色图标)。

此举确认 29,800 美元区域是每周时间框架的阻力位。所以它可以在当地达到顶峰。

尽管看跌,但每周相对强弱指数 (RSI) 显示长期趋势仍然看涨,因为它位于 50 上方并正在上升。

BTC/USDT 每周走势图 |资料来源: TradingView

每日时间框架的技术分析显示看跌比特币价格预测。这是由于形成了有利的头肩形态,通常被认为是看跌形态。

该模式由在其他两个峰之间创建的最高峰组成。之后,颈线突破将催化大幅下跌。

模式(白色)的完整高度的细分可能会使BTC价格跌至最低 23,400 美元。该水平与 0.5 斐波拉契回撤支撑(黑色)重合。

根据斐波那契原理,价格在一个方向上发生显着变化后,通常会部分回撤或回到之前的价格水平,然后再继续原来的方向。

BTC/USDT日线图|资料来源: TradingView

尽管有这种看跌预测,但如果价格移动到右肩顶部(红线)上方 30,000 美元,则表明趋势并不看跌。

相反,它可能导致下一个长期阻力位 36,500 美元的增加。

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