孙哥的波场 Meme 又来了,这次能行吗?

深潮TechFlowPublicado a 2025-03-20Actualizado a 2026-06-29

Resumen

哥,节奏慢点,有点跟不上了。

撰文:深潮 TechFlow

孙宇晨阁下坐不住了。

这几天 CZ、何一亲自下场进社区互动,给 BSC 带来新 Meme 与泼天流量的现象,整个 BSC 生态基本都在涨,社区一片喜气洋洋。

论个人影响力给生态带来流量这回事,玩得最熟练的还得是孙哥。

看着隔壁 BSC Meme 的热闹,孙哥 @justinsuntron 也开始再次“带货”自家 Tron Meme 市场。

注:Meme 代币价格波动剧烈,存在高度风险,投资者应充分评估风险,谨慎参与。本文仅根据市场热点进行信息搬运分享,作者及平台对文章内容的完整性、准确性不做任何担保,同时本文无任何投资建议。

新热点出现,Tron Meme 季复现?

今夜,孙哥开始频繁提及 Tron Meme 相关话题,首先发推提到“Tron meme szn👀”(Tron meme 季)。

推文中关键词「szn」也迅速被社区捕捉并发币 $szn,之后 $szn 市值在今早触及 1700 万美元附近。之后可能是由于其他 Tron Meme 分流,市值骤减,一路回落至 170 万美金附近。

14:51,孙哥又发推称:“全球最大的两家交易所即将上线 TRX szn”。不管此举是否暗示新 Meme $szn 会上所,总之社区选择买单。而后 HTX 交易所 @HuobiGlobal 发布公告确认上线 $szn 现货, $szn 价格迅速反弹,最高反弹至 1300 万美元市值附近。

经历一番大起大落后,$szn 当前市值在 900 万美金附近,价格波动较大。

$snz 初具热度后,孙哥也是积极跟上“建设”脚步。宣布提供 TRX 能量补贴(即减免用户交易手续费),并贴出了充值能量的地址:

TU3rMHyWHzeEJBReWLzHko728hbz6MtfNg

社区将此地址解读为孙哥个人的地址。并且扒出该地址在221 天前,向另一个地址

TU17mpNpzFZUK2NuKb1tHLCNcSC4pZHaTw

转账 24.2 $TRX,而这个结尾为 4pZHaTw 的钱包地址推出了一个代币$Knight(DARKNESS)

THvqUNvSRvV1DRJ9wuugBVKeq3rFxpxJej

Yes,到了 Meme 玩家熟悉的分流环节了。这一发现让没能第一时间上车 $szn 的人找到新的机会。$Knight 价格迅速上涨,最高触及 888 万美元市值,涨幅接近 100 倍。之后孙哥还与带有 $Knight 图片的推文互动,自然分走一部分 $snz 的流量,这也是前文提到 $snz 下跌的原因之一。

上一波火过的 Meme 们怎么样了?

关于 Meme 热度轮流转的剧情,和去年夏天那会儿基本上一模一样。只不过当时是孙哥的 Tron Meme 先行起势,跑出 $SUN、$SUNDOG、$SUNWUKONG 等新 Meme。

今天 Tron Meme 热度重回,上一波的头部 Meme 们还好吗?

$SUNDOG(Sundog)

合约地址:

TXL6rJbvmjD46zeN1JssfgxvSo99qC8MRT

24H 交易量:140 万美元

当前市值:6100 万美元

最高市值:3.8 亿美元

$SUNWUKONG (SunWukong)

合约地址:

TP3prcvQknVthrVnn281cKST56eWiLgJJM

24H 交易量:110 万美元

当前市值:126 万美元

最高市值:3800 万美元

$TBULL (Tron Bull)

合约地址:

TPeoxx1VhUMnAUyjwWfximDYFDQaxNQQ45

24H 交易量:95 万美元

当前市值:400 万美元

最高市值:3100 万美元

结语

从价格看,上波热门 Meme 的表现一般,都是跟着热度拉升的一波流,并且距离之前的最高市值还有好几倍距离。目前 Tron Meme 的热度尚有限,还不足以让整个生态都热起来。究竟这波热度是刚刚开始还是又一次的热闹之后一地鸡毛,还是与 Tron 的热度中心孙哥后续操作密切相关。

同时今天孙哥这一波通过社区互动→经社区“过度解读”→拉升两个 Meme 的热度的玩法,让 Meme 玩家们印象深刻。

面对快速转变但共识支撑脆弱的热点,作为市场参与者,如果错失早期入场的机会,或许“多看少动”是后续最好的操作方式。

希望孙宇晨阁下这次能带回热度,在花式操作的时候不要伤害韭菜,给市场一些玩下去的信心。

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