SOL ETF 的上市,将推动SOL价格上涨

金色财经Publicado em 2024-07-10Última atualização em 2024-07-10

Solana 的原生代币在 7 月 7 日至 7 月 10 日期间上涨了 17%,收复了 140 美元的水平。这一反弹收复了前三天跌至 121 美元底部的所有损失。

截至本文发稿时,Solana 的交易价格为 141 美元,过去 24 小时内上涨了 3%。这让交易员们怀疑 SOL 的看涨趋势能否再次将其价格推高至 200 美元以上。

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现货 Solana ETF 可能会推高 SOL 价格

随着VanEck 和21Shares 向美国证券交易委员会提交了现货 Solana 交易所交易基金 (ETF) 的申请,SOL 的交易活动在过去 24 小时内激增。

2024 年 7 月 8 日,芝加哥期权交易所 (Cboe) 的文件证实了这一发展,标志着基于加密的投资产品的发展又迈出了一步。

该交易所向美国证券交易委员会提交了两份 19b-4 文件,要求在监管机构批准后将这些产品上市。

一旦美国证券交易委员会确认收到该文件,就会出现一个为期 240 天的窗口期,在此期间,监管机构必须对产品做出决定,而这将受到《SOL》的支持。

虽然这些发展提振了交易员对现货 Solana ETF 的希望,但彭博高级 ETF 分析师 Eric Balchunas 表示,SOL ETF 的命运取决于 11 月美国总统大选的结果。

加密货币做市商 GSR Markets 在 6 月 27 日的一份研究报告中预测,美国批准并随后推出现货 Solana ETF 可能会将SOL 的价格推高九倍。

链上活动的增加支撑了 SOL 的复苏

Solana 的网络活动和扩展解决方案为其性能做出了贡献。DappRadar 的数据显示,过去 24 小时内,Solana 顶级 DApp 的交易量增长了 7.27%,这得益于 Raydium、Jupiter exchange、Sol Incinerator 和 Pumf.fun 的增长。

目前,Solana 的 24 小时 DApp 交易量同比增长 76%,达到 1.0363 亿美元,而同期的总独立活跃钱包(UAW)和 NFT 交易量分别增长了 1.71% 和 27.5%。

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随着越来越多的用户参与网络,SOL 的最新价格上涨也伴随着总锁定价值 (TVL) 的增加,从而推动了其增长势头。

DefiLlama 的数据显示,Solana 网络上的 TVL 在过去 24 小时内增加了 4.5%,从 42.2 亿美元增至 44.05 亿美元,这表明用户和开发人员与网络的互动更多。

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对 Solana 的 DApp 和链上活动的分析证明了 SOL 价格在当前水平的强势,并增加了在不久的将来进一步上涨的可能性。

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