比特币再次下探 回调过后将开启暴涨?Meme板块再次出现黄金坑

币界网Published on 2024-08-12Last updated on 2024-08-12

币界网报道:

最近的行情对于散户来说属实是很难操作,心里基本都没底,因为 8.5 暴雷的情况大家都心有余悸,这都是心理作祟,不要想得那么复杂,简单一点,就是别盲目进场,有机会就上,没有机会就等,每天24小时都在波动,又没有休盘这一说,机会总会到来!

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今日以及本周看点

中东局势稍微缓和了点,不过俄罗斯和乌克兰战场我们不得不再次关注,周末乌克兰无人机直接打到了莫斯科

市场担心战争会进一步升级,比特币再次跌破了60000美金。

本周有两个重磅数据要发布

周二20:30,美国7月PPI发布,高于预期利空,低于预期利好。

周三20:30,美国7月CPI发布,高于预期利空,低于预期利好。

本周主要关注两个点位:

第一个支撑位置54000–56000区间

第二个位置主要关注52000点,这个位置如果跌破,行情会直接跌破48000点

4小时级别跌破59000之后,又进入了震荡模式,大盘还会反复试探和测试支撑位置。

大家注意控制好风险,日线级别的短线方面可以关注日内58000点,跌破再看56000–56600区间的日内支撑位置,日线级别的阻力位置59200附近一线,行情客观看点是等待企稳。

上周的周线收的还算不错,基本上告诉市场50000附近就是这轮回撤的最强支撑位置了。但是要想真正企稳并且走出上涨的趋势还需要时间,大盘大跌之后需要时间修复。

比特币(BTC)的月度回报表

8–9月的行情不怎么好,已经是过去10年的周期规律了,但是第四季度往往是表现最好的!

再坚持40天,平均收益最高的一个季度就开始了!

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比特币一旦企稳,这些meme板块值得关注

以太坊: pepe 龙头 floki token turbo people

比特币生态:ordi sats

SOL 生态: wif bome bonk

BNB 生态:why

大家最看好哪个 MEME 币觉得有十倍百倍潜力的?

关注我,一起迎接超级大牛市!!!

温馨提示:玩合约,赚钱只是过程,爆仓一定是最终结果。珍爱生命,远离合约!!!

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