Lighter创下0.91美元历史新低——LIT还能跌到多低?

ambcryptoPubblicato 2026-03-23Pubblicato ultima volta 2026-03-24

Introduzione

LIT(Lighter)价格持续下跌,已跌破1美元关键支撑位,创下0.91美元的历史新低,当前报价0.92美元,单日跌幅10.19%,周内累计下跌17%。市场卖压显著增强,买方力量几乎消失,卖方主导地位达到280万,强度指数高达91,而买方为-8。 衍生品市场资金大量外流,未平仓合约从1.93亿美元降至1.4亿美元,超过1.71亿美元资金撤离期货市场。空头持仓者获利丰厚,某鲸鱼空头仓位浮动盈利达207万美元。 技术指标显示RSI降至32,接近超卖区间,且价格持续位于移动平均线(MA)和指数移动平均线(EMA)下方,表明下跌趋势可能延续。若0.9美元支撑位失守,LIT可能进一步下探0.85美元。唯有重新站稳1美元上方,才可能扭转当前跌势。

Lighter [LIT] 正经历近乎崩溃的压力,该山寨币持续处于强劲下跌趋势中。自一周前LIT在1.3美元遭遇阻力后,其收盘价持续走低,反映出强烈的看跌压力。

因此,在跌破1美元支撑位后,LIT跌至0.91美元的历史新低。事实上,截至发稿时,该山寨币交易价格为0.92美元,日内下跌10.19%,周累计跌幅已达17%。

随着山寨币大幅下跌,空头持仓者的利润率飙升。Onchain Lens报告称,一名持有2倍空头头寸的鲸鱼目前浮动利润已达207万美元。

空头利润率的上升反映了当前强烈的下行势头。

Lighter面临巨大抛售压力

由于LIT未能守住1美元支撑位,卖家恐慌性增加抛售,导致价格进一步下跌。

事实上,买家几乎从市场中消失,其主导率降至零。与此同时,卖家主导率飙升至280万,表明卖盘活动活跃。

来源:TradingView

过去七天卖家一直主导市场,其主导率峰值达到400万,而需求持续下降。

与此同时,卖方强度跃升至91,而买方强度下降至-8,进一步验证了卖方的市场主导地位。

在衍生品方面,市场参与者减少头寸并从市场撤出大量资金。

来源:CoinGlass

Coinglass数据显示,Lighter的未平仓合约从1.93亿美元降至1.4亿美元,减少5400万美元。

未平仓合约下降表明交易者正在积极退出市场,很可能是预期会有更多损失。因此,超过1.71亿美元资金流出期货市场。

传统上,需求减弱和卖盘活动加强往往会加速下行势头,导致价格进一步走低。因此,当前市场条件使LIT面临更大的下行风险。

是否存在进一步下行风险?

随着卖家愈发激进,Lighter跌破了1美元支撑位。抛压加剧使得下行势头进一步加强。

因此,相对强弱指数(RSI)降至32,接近超卖区域。RSI从55连续下降至32,反映出卖方的强烈意愿。

来源:TradingView

由于该山寨币持续位于均线(MA)和指数移动平均线(EMA)下方(两者均位于1美元上方),下行势头进一步加强。这两个动量指标表明趋势可能延续,当前市场条件保持不变。

因此,如果趋势持续,LIT很可能会跌破0.9美元支撑位,向下测试0.85美元。要实现趋势反转,LIT不仅需要守住0.9美元,更要重新收复1美元关口。

若能实现,上行动量将足够强劲以推动显著上涨。

最终总结

  • Lighter [LIT] 跌破关键1美元支撑位,在持续走低中创下0.91美元附近的历史新低
  • 价格仍受空头强力控制,周跌幅达17%且下行压力持续

Domande pertinenti

QLighter (LIT) 的价格跌破了哪个关键支撑位并创下历史新低?

ALighter (LIT) 的价格跌破了1美元的关键支撑位,并创下了0.91美元的历史新低。

Q根据文章,LIT 的周跌幅是多少?

ALIT 的周跌幅为17%。

Q文章中提到的鲸鱼通过做空LIT获得了多少浮动利润?

A一位持有2倍空头头寸的鲸鱼获得了207万美元的浮动利润。

Q哪些技术指标显示LIT可能继续下跌趋势?

A相对强弱指数(RSI)降至32,接近超卖区域,且价格持续位于移动平均线(MA)和指数移动平均线(EMA)下方,这些指标显示下跌趋势可能持续。

QLIT 需要达到什么条件才能实现趋势反转?

ALIT 需要守住0.9美元的支撑位并重新站上1美元的关键阻力位,才能实现趋势反转。

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