【重磅解读】29亿美元ETH抛压进入交易所,期货融资利率暴跌

火币资讯2022-09-15 tarihinde yayınlandı2022-09-21 tarihinde güncellendi

Özet

ETH重大看空信号出现,合约融资利率暴跌,融资买入成本大降,市场强震信号。

1、BTC短线处在蓄势阶段

BTC价格在成交密集区域的震荡延续,从短线来看,价格波动空间较小,仍然处在能量续集阶段。因此,短期内BTC运行维持平稳状态。目前来看,近期2周内的现货交易量非常高,使得BTC处在持币成本相对集中的价格区间。因此,在BTC顺利脱离该区间以前,典型的买卖信号还不会出现。

而从主力持币的集中度判断,目前巨鲸持币的集中度已经降低到了年内低点,意味着行情向下回撤的机会增多。

2、BTC巨鲸持币地址下降

从BTC的巨鲸地址的数量变化上看,近期持续下降的巨鲸地址数量表明,主力投资者已经处在持币发散阶段,并且抛售的迹象在不断增长。BTC巨鲸地址数从年初的高位2282降到9月14日的2119,减少了163个,合计163000个BTC被发散转移。从这个较大来看,目前BTC并不具备持续反弹的基础。

3、ETH放量回撤

在9月13价格持续下跌以后,ETH的震荡始终没有结束。特别是交易量连续2次出现脉冲峰值的情况下,主力对ETH的影响明显较强。值得注意的是,两次脉冲放量都出现在ETH价格回撤期间,表明空头主动交易ETH,使得行情却不确定性提升。放量下跌以后,ETH短期维持一段时间的放量表现。接下来,ETH仍然承受较大反弹压力,1600美元整数点位成重要压力线。

4、ETH融资利率暴跌

合约方面,ETH的融资利率大幅度下降,为一年来的最低水平。9月13日到9月15日的融资利率下降到了-0.053、-0.189和-0.441。其中-0.189和-0.441是非常态化下的融资利率,是2019年10月以来从未出现过的情况。据此判断,ETH短期内的合约交易主动性明显在空方,多头无意在低位抄底,使得ETH一边倒的持续被倾销的情况,看跌信号非常显著。

5、ETH大量流入交易所

现货交易方面,ETH流入交易所的数量维持高位运行。从9月9日开始,流入到交易所的ETH数量增长到了9月2362万枚,增加数量高达176万枚ETH。以1650美元计算,价值达到了29亿美元。相比过去1年当中的ETH流动量,目前是ETH流动速度最强劲的一次。考虑到交易所的ETH数量不大,流入到交易所的ETH数量井喷以后,近期对价格影响将显著提升。

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