【重磅解读】ADA会跟风LTC飙升,融资利率暴涨意味着什么?

jinjin说币Опубліковано о 2022-11-24Востаннє оновлено о 2022-11-25

Анотація

BTC和ETH同步反弹,关注涨幅预期。

1、BTC即将触及压力位

BTC短线反弹的效率很高,如果价格继续回升,就会在短时间内触及到斐波那契78.6%对应的17246美元的压力位。从BTC价格表现看,还没有迹象表明反弹能够延续。在BTC进一步提示价格方向以前,可继续关注长期投资者的交易动向。这部分投资者短期内获利交易,将提示抛售信号。

2、BTC长期投资者短线出逃

目前来看, 长期投资者对BTC的反弹走势关注度较高,使得这部分投资者的抛售显著提升。从目前来看,长期投资者的持币获利转账显著增长,11月23日的数据显示,长期投资者的SOPR指标强劲反弹到了1.4027,也就是说,长期投资者是以获利40%转账了大量的BTC,据此判断这部分投资者的成本价至少低至12939美元。

3、ETH短线回撤到支撑位

随着反弹走势的延续,ETH价格从斐波那契78.6%走强的迹象明显持续。涨幅上看,ETH反弹强度已经触及12.7%。近期不仅收盘点位没有出现破位,价格反弹的强度很快形成。从ETH价格区间波动的空间来看,支撑有效意味着ETH有望在近期得到区间上限以下的区域。斐波那契61.8%对应的1910美元的价格空间较大,值得进一步关注。

4、ADA明显超跌

ADA价格目前处在明确的超跌状态,价格下跌趋势中并未持续如何强劲反弹表现。特别是2022年6月份以后,ADA价格走势维持弱势整理,并且在震荡中不断走低。即便如此,技术反弹仍然值得关注。明确ADA触及低位0.29美元后开始反弹,关注涨幅预期。

5、ADA融资利率高企

从融资利率上判断,ADA前期融资利率曾经出现了较大的反弹表现。数值上看,11月10日的融资利率达到了0.2292%,峰值表现异常强势。11月10日以后,ADA近期融资利率继续维持强势,平均融资利率维持在了0.01%附近。

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