【重磅解读】 LDO出现启动迹象,BTC交易所抛压较小

jinjin说币2022-12-14 tarihinde yayınlandı2022-12-15 tarihinde güncellendi

Özet

BTC进一步确认底部支撑

1、BTC快速反弹

BTC价格短线仍然表现出较强韧性,反弹走势持续以后,价格达到了近期的收盘价高位。成交量方面,日K线图中显示BTC的量能维持高位运行,继续支撑BTC反弹节奏。价格方面,BTC 布林线上轨的上方,是近期11月8日大幅度下跌以来最有力度的反弹表现之一。

2、主力抛售占比较低

BTC的交易所主力抛售占比较低,数量上看,12月13日前十大流入与交易所总流入的比率为0.348。该数值为1年来的较低水平,同时也是近期BTC抛压占比的低位。虽然BTC反弹节奏较低,价格仍然在抛压降低的情况下小幅回升。可以确认的是,目前仍然是BTC确认底部支撑的阶段,行情在不断向好,但是低位的震荡还可能延续。

3、ETH小幅放量

虽然ETH短线涨幅空间不多,但是成交量从低位回升的迹象明确,ETH日K线图中显示,已经连续2个交易日放量,成交量轻松达到了等量线上方。这说明,ETH正在验证短期缩量底部。成交量继续回升,表明ETH在1200美元的底部形态不断确认。

4、LDO表现强势

随着主流币开始小幅反弹,LDO的短线表现也更为强势。从日K线图判断,LDO已经连续3个交易日回升,成交量也同步上行,预示着更好的涨幅前景出现。LDO日K线图中交易量萎缩到非常低的水平以后,已经显示出明确的调整到位信号。因此,作为ETH质押概念的主要币种,可关注涨幅表现。

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