巨鲸离场,蓝筹 NFT 还会继续跌吗?

FОпубліковано о 2022-09-07Востаннє оновлено о 2022-09-08

Анотація

本周 NFT 总交易量较上周再次下降 6%,没有强势反弹的迹象。

本周 NFT 总交易量较上周再次下降 6%,没有强势反弹的迹象。

本周市场趋势

Weekly NFT Market Volume (Source: echoo.substack.com)

Oracle Gas Prices,(Source: etherscan.io)

本周 NFT 总交易量较上周再次下降 6%,虽然 Gas Prices 已经到达今年最低区间,但也没有引起人们买卖的欲望。目前现状:NFT 市场的交易量依然萎靡,并没有强势反弹的迹象。

(自今年 5 月以来,NFT 交易量走低的趋势已经持续了 16 周,我们仍然在持续关注翻转信号出现)

Weekly NFT Market Traders (Source: echoo.substack.com)

本周参与交易的人数较上周下降 3%,人数波动越来越小,市场上参与交易的人正在变少,大多数交易者处于「观望」态度。同时买卖人数的差值为今年最大(卖出者远远多于买入者),这证明目前市场上大多数人更倾向于「卖出」。

Blue Chip Index (Source: echoo.substack.com)

蓝筹 NFT 指数连续 5 周下跌后,在今年的最低值附近得到暂时的「支撑」,与此同时,我们上周所提到的「反弹力度小,有走平的趋势」在本周得到了验证。

整个蓝筹 NFT 集合已经处在了历史价格的低点,但并没有迎来强有力的反弹,再加上整体市场的不景气,这是非常危险的信号。

Weekly Trend On The Net Value Of Whale Capital (Source: echoo.substack.com)

在本周,巨鲸在 NFT 市场上流出了 $105,685 的资金,从趋势上看已经是今年最接近零的一周,这代表本周的大部分的巨鲸已经「离场」。这也像我们多次强调的:当前 NFT 市场大多是散户在进行交易,受到巨鲸的影响很微弱。

指数信号

1.巨鲸上周抄底的 NFT

下表为巨鲸的买入前 20 名 NFT,详细的购入数量及平均成本如下:

(受个别极端交易的影响,部分数值会有影响,仅供投资参考。)

NFTs Bought By Whales In The 36th Week

2.蓝筹的 NFT 买卖信号

本期 Echoo Research 为大家提供的指标是蓝筹的 NFT 买卖信号,对于买卖行为具有一定的参考性。

最近价格波动开始减小,导致绝大部分蓝筹 NFT 的信号显示了「待定」策略,但仍有一些短线操作的机会。

Buy-Sell Signals Of Blue Chip NFTs In The 36th Week

指标说明

RSI Strategy:根据 RSI 的买卖相对强弱的特性而设计的买卖信号。

简单使用方法:在波动区间下方为买入信号,在波动区间上方为卖出信号,偏离度越大信号越强烈。

3.蓝筹集合的 SMA 趋势

反弹力度不大造成了短、中、长期趋势线的纠缠,形式并不明朗,保持持续观察。

SMA Trend Of Blue Chip NFTs In The 36th Week

指标说明

该指标综合了蓝筹 NFT 的市值,运用均线进行计算,用来反映 NFT 大盘的趋势。

SMA:反映短周期于长周期的趋势。

简单使用方法:短周期线从下方穿过长周期线时为买入信号,短周期线从上方穿过长周期线时为卖出信号。

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