Stacks 在 24 小时内飙升 11%:STX 的下一个价格是 3 美元吗?

金色财经Publicado em 2025-01-07Última atualização em 2025-01-07

原文来源公众号:陈摆烂不摆烂

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在经历了市场调整后,Stacks [STX]回撤至 1.89 美元,随后该山寨币在过去一天强势上涨,上涨 19.63% 后触及 2.62 美元的高位。

此后,该股略有回落。截至本文撰写时,Stacks 的交易价格为 2.53 美元。这标志着过去一天的涨幅为 11.63%。

据 Coinglass 称,同期 STX 的交易量飙升 202.25%,达到 5.3469 亿美元。

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在日线图上涨之前,STX 在周线图上出现下跌,下跌了 1.79%。不过,该山寨币在月线图上上涨了 29.42%。

尽管最近有所上涨,但 STX 仍比其 384 美元的高点低约 34.3%。

随着 Stacks 出现新的需求,随之而来的问题是,这种山寨币是否即将迎来更持续的上升趋势。

STX 图表说明了什么

根据AMBCrypto的分析,在购买压力增加的情况下,Stacks正经历强劲的上涨势头。

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随着 STX 收盘并形成双线交叉,这一上涨势头得到证实。因此,山寨币的相对强弱指数从 47 飙升至 56,而其 MA 则从 64 跌至 61。

这种上涨表明买家正在进入市场,而卖家的主导地位正在逐渐减弱。

这一现象进一步得到证实,方向运动指数的 +DI 持续上升,而 -DI 则下降。STX 的 +DI 已升至 24.86,而 -DI 已降至 25。

此走势表明 STX 即将出现看涨交叉。从此处开始的交叉将确认上升趋势的强度。

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进一步来看,这种看涨情绪在多头持仓者中得到了进一步体现。据 Coinglass 称,多头占据了市场主导地位。

值得注意的是,多头/空头比率显示,在 4 小时内,多头占主导地位,占总量的 54.69%。这种主导地位意味着大多数投资者押注价格上涨。

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最后,交易所聚合的正资金利率进一步支持了多头仓位的需求。

这表明投资者正在建立头寸,当山寨币下跌时,他们愿意为这些头寸支付溢价费用。

简而言之,随着买家进入市场,Stacks 目前正经历强劲的上升势头。

随着看涨交叉信号的出现,STX 的价格图表可能会出现更多上涨。因此,如果当前条件保持不变,并且看涨交叉得到确认,Stacks 将收回 2.7 美元的阻力位。

突破这一水平可能会使山寨币达到 3.04 美元。随后,如果卖家进入市场,STX 可能会跌至 2.4 美元。

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