HT起底飙升,预期涨幅会达40美元?

数字币Published on 2022-10-13Last updated on 2022-10-14

Abstract

HT发力飙升,最高涨幅不限于10美元。

7日涨幅榜单:

过去7日的涨幅榜单显示,平台币HT、稳定币USTC和TKX的涨幅居前。其中,最值得关注的当然是平台币HT,一周累计涨幅达到了79.5%。尽管涨幅巨大,其市场表现仍然可圈可点。

HT三大交易所交易量占比

HT交易量虽然多数在Huobi Global产生,但是也仅占比总交易量的30%左右,剩余的交易量分别在Bibox、AAX和 GATE.IO产生。也就是说,关注这些交易所的HT表现,可以看到HT能够提示的看涨信息是否清晰可见。

Huobi Global交易所在10月12日的24小时交易量达到了3085万美元。其余的Bibox、AAX和GATE.IO交易所的交易量达到了1174万美元、1116万美元和687万美元。

HT放量表现

Gate.io交易所的HT价格上涨与Huobi Global交易所的价格表现联动,但是HT的放量表现更为明确。Gate.io交易所的HT价格在10月10日相对前一日放量达到了112.9倍,而其价格涨幅上达到了23%,价格振幅达到了31%。10月10日开始的3个交易日里,交易量维持在放量状态,预示着HT的上涨或将延续下去。

Huobi Global交易所上,HT价格短线上涨达到了前期高位6.8美元的高位期间,成交量显著回升。其中,10月10日的放量效果达到了7.4倍。这说明,交易量达到了2022年以来最大峰值以后,启动特征非常明显。从能够到达的压力位来看,目前HT成功突破前期5月中旬开始的7美元价格平台。而接下来的价格平台是前期10美元平台。目前短期平均交易量较高,超过了2022年年初10美元平台对应的量能表现。涨幅预期方面,可以继续关注10美元上方的目标潜力。

整体交易量回升

HT的整体交易量回升,近期3个交易日内的最高24小时成交量达到了9137万美元,这表明HT的放量效果较好,能够继续推动价格上行。整体成交量与前期8月份的交易量峰值相比放大了一倍,HT若能高位加速上行,可关注成交量的表现。目前来看,10月13日交易量峰值再次形成以后,表明HT刚刚步入上行趋势,持币待涨。

压力位判断和涨幅预期

目前HT日K线的放量效果较好,短期涨幅目标在10美元价格平台。由于该平台的横盘时间较长,因此套牢盘也很大。HT若能一步飙升到10美元到12美元的价格区间,那么将有效减少抛售压力。更高的压力位在15美元位置。更高的15美元压力位若能突破,那么HT的跳涨潜力在历史高位40美元以上。

近期HT放量拉升效果已经表明,主力决心一定在10美元以上价格区间。因此,目前持币待涨会获得更高收益。从5美元整数位开始计算,短期涨幅潜力在100%到200%。

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