机构投资者抛售 695,000 SOL 但仍持有价值 2.55 亿美元的 Solana 股份

金色财经Published on 2024-09-03Last updated on 2024-09-03

原文来源:加密阿瑶

根据 Lookonchain 的数据,主要的 Solana 鲸鱼(可能是一个机构实体)在 2024 年一直在清算其持有的资产。

自 1 月 1 日以来,这只鲸鱼已售出695,000 索尔,价值 9,950 万美元。这种稳定的销售活动反映了每周平均 19,306 索尔,即 276 万美元。

尽管进行了大量的销售,该实体仍然在 Solana 中占据重要地位,目前持有 188 万 SOL,价值约 2.5589 亿美元。

正在进行的转账和质押活动

该鲸鱼最近的交易包括值得注意的提现转账,例如 7,500 SOL、12,500 SOL 和几笔 10,000 SOL 的转账。这些动向表明其对 Solana 资产的管理采取了严谨的方法。

此外,巨额用户一直在积极提取质押奖励,以“提取质押”行为为证据,其中 20,000 SOL 等金额在不同情况下被提取。

社区内部的猜测

加密社区一直在热议这位鲸鱼的动机以及对 Solana 市场表现的潜在影响。

值得注意的是,一些评论者担心这些大规模抛售可能会给SOL带来看跌压力。一位观察人士指出,鲸鱼可能会“再次猛涨,获利回吐”,这表明鲸鱼可能采取获利回吐然后再投资的策略。

另一位评论者对更广泛的市场影响表示担忧,他指出,此类出售可能会导致经济衰退,但他承认这位巨头仍然持有 Solana 的大量股份。

近期 Solana 市场表现

Solana 的市场表现在最近几个月有所下滑。Crypto Basic 最近强调,过去四个月中,Solana 的价值与 XRP 相比下跌了 25.91%。

月度蜡烛图和相对强弱指数 (RSI) 进一步证明了这一趋势,目前该指数徘徊在 60-70 左右,表明可能出现看跌背离。

包括艾伦桑塔纳 (Alan Santana) 在内的分析师已经修改了他们的预测,预计价格可能会跌至 55 美元,而关键的斐波那契回撤位 137.03 美元和 58.82 美元则被视为关键支撑区,受到密切关注。

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