Solana vs以太坊——为什么Brandt认为SOL比ETH上涨了100%

币界网Published on 2024-08-10Last updated on 2024-08-10

币界网报道:
    根据最近的复苏表现,SOL在未来几个月的表现将超过ETH

市场评论员一直预计Solana[SOL]在价格图表上的表现将超过以太坊[ETH],就像2023年底至2024年初一样。著名交易员和价格图分析师彼得·勃兰特是最新加入这一预测的人物。

Brandt表示,在未来几个月内,SOL的表现可能会比ETH高出100%。

“在$SOL和$ETH之间的战斗中,不可避免地会有一个明显的赢家……$SOL在未来几个月应该会在$ETH上获得100%的收益。”

他的展望是基于SOLETH比率,该比率最近第三次重新测试了历史最高水平。

Brandt的SOL价格预测

对于不熟悉的人来说,SOLETH比率跟踪SOL相对于ETH的表现。在撰写本文时,SOLETH比率的读数为0.059,这意味着SOL的价值为0.059 ETH。

比率的上升突显出SOL的表现一直优于ETH。另一方面,比率的下降意味着SOL的表现不如ETH。

根据所附图表,SOLETH的整体价格走势形成了一个杯状和手柄模式——这是一个典型的看涨形态。突破和看涨目标将与“杯”或“槽”的深度或高度有关正如勃兰特所标记的那样,直接突破将是0.11。

如果预测实现,SOL持有者将比ETH持有者更有利可图。除了长期前景外,SOL在最近的复苏中也超过了ETH。例如,在过去的五个交易日里,SOL上涨了12%,截至发稿时交易价格超过150美元。

然而,ETH同期下跌了2.7%,尽管其交易价格超过2500美元。

尽管最近出现了FUD(恐惧、不确定性、虚假信息),但索拉纳的价格在一定程度上具有弹性。事实上,由于模因币的狂热,SOL也被贴上了“赌博链”的标签。

然而,Helius Labs的Mert Mumtaz认为,赌博是一个加密货币问题,并不特定于Solana。他补充说,

“SOL的表现优于ETH,因为人们更关心可用性而不是智力圈的波动”

Solana在多个方面超越了以太坊,从每日活跃地址到偶尔的DEX交易量和收入。

然而,ETH在TVL(总价值锁定)方面保持领先地位,与SOL的49亿美元相比,同样值得注意的数字为480亿美元。这意味着以太坊相对于Solana具有更高的投资者信心。

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