比特币重回7万美元关口之际,卖家似乎越来越少

jin10Опубліковано о 2024-03-26Востаннє оновлено о 2024-03-26

尽管比特币的价格于周一升至7万美元以上,但比特币区块链上的实际交易活动仍在“蹒跚前行”,而不是全速前进。

一家研究公司表示,这种差异在一定程度上反映了市场上强烈的持有情绪

Blockware Solutions的分析师表示,“平均链上交易量(以美元计价)远低于2021年牛市的峰值,这可能暗示着——没人想卖。”

数据跟踪公司Glassnode将交易量定义为链上转移的比特币总额的美元价值,该指标只考虑成功的传输。

平均链上交易量远低于2021年牛市的峰值

Glassnode追踪的数据显示,截至周一,比特币7天和14天的平均交易量低于20万美元,与2021年牛市期间的100万美元及以上相去甚远

华尔街对在纳斯达克上市的现货比特币ETF的追捧,是比特币最近一轮上涨的主要原因。换句话说,现货交易量很可能集中在ETF,这也解释了链上交易量低的原因。

尽管如此,其他指标也表明,在2022年熊市中幸存下来的投资者正在继续持有他们的代币,并预计价格将继续上涨。

几位分析师预计,比特币的价格将在未来几个月涨至至六位数,最终达到远高于15万美元的峰值。

Blockware分析师表示,“一旦我们看到价格真正开始波动,那就是链上交易量激增的时候,旧的比特币将被转移到交易所出售,在那之前,较低链上交易量是供给侧流动性不足的一个迹象。

上周三,比特币价格一度跌至6.08万美元左右的低点。Galaxy Digital全公司研究主管Alex Thorn表示,这样的下跌“完全符合历史牛市短期调整的常态”。

周一大幅上涨的原因尚不清楚,但3月份加密货币的价格走势的特点是创新高,然后是健康的回调。Thorn暗示,投资者正在暂停出售现货比特币ETF。他说,“过去两周创纪录的GBTC资金流出,可能是由Genesis和Gemini破产清算造成的,导致现货ETF走软,但一些技术指标显示卖方已筋疲力尽。”

比特币服务公司Swan bitcoin的首席分析师Sam Callahan认为,比特币昨天的大涨可能与美联储上周发出的信息有关。他说:

“美联储官员上周明确表示,他们正在考虑今年降息和放慢量化紧缩计划的步伐。这些举措将改善流动性状况,对资产价格起到积极的催化剂作用。比特币作为流动性状况的晴雨表,对美联储有关货币政策可能在不久的将来放松的信息做出了积极回应。”

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