【重磅解读】链上成交飙升至535.5万枚BTC,ETH强势超买

火币资讯Published on 2022-09-08Last updated on 2022-09-09

Abstract

BTC在关键点位显著放量,ETH获得多头拉盘。

1、BTC交易量回升

BTC跌幅扩大的过程中,4小时K线图显示的交易量明显回升,这与投资者的抄底热情增长有关。实际上,本次价格下跌过程中,BTC始终维持在较高的成交量运行。直到目前为止,BTC在1.9万美元下方的低位获得了更多买盘支撑。现货交易量提升与链上转账增加同步进行,价格也出现了小幅上涨。

2、BTC链上成交量再次回升

链上交易量继续回升,9月7日的链上交易量达到了535.5万枚BTC的高位,数值明显高于近2个月内的交易量均值。由此可见,投资者在关键点位的转账增加,显然正在应对可能的价格波动。预期美联储9月份依然可能迹象加息75个基点的情况下,BTC价格在近期面临的调整压力较大。加息预期越强,投资者越看抛售BTC。因此,接下来一周或许是BTC非常关键的变盘时段。

3、USDT交易增长

从交易所交易钱包USDT的数量变化来,USDT在交易钱包的占比由0.149迅速回升到0.172,回升了空间可观,但是绝对数值不高。USDT在交易数量增多,也提示了投资者的抄底迹象增加。特别是从点位上看,BTC收盘价达到了2年来最低的18790美元以后,投资者的确增加了交易热情。

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4、ETH反弹超买

ETH短线反弹空间提升以后,价格并未回到短线高位1660美元附近。交易量方面,4小时K线图小时,ETH反弹阶段的脉冲交易量很大,与9月7日下跌阶段的脉冲交易量相似。但是,整体交易量依然小幅收缩,意味着反弹的阻力较大。同时,震荡指标RSI回升到80以上后回撤,提醒投资者ETH短期内已经超买上涨。因此,短期行情变化依然可能调整为主,追踪风险较高。

5、ETH主力抛售增加

ETH 流入到交易所的数量显著反弹,流入交易所前10地址的数量变化较大,9月7日流入交易日是ETH数量在7590枚ETH,价值可达1214万美元。从峰值的表现来看,9月7日峰值与前期峰值相差增加,但是依然为7月27日以来最高数值。这说明,来自主力的抛售压力的确持续了增长,意味着ETH价格正处在向下变盘的关键位置。

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