币圈丽盈:11.13索拉纳(SOL)主力信心溃败预示跌无止境 最新行情分析及操作建议解析

金色财经Published on 2025-11-12Last updated on 2025-11-12

币圈丽盈:11.13索拉纳(SOL)最新行情分析

文章发布时间2025.11.13—00点:30分

    索拉拉目前价格为154,丽盈判断目前索拉纳SOL2小时周期明显的下跌趋势,技术面信号显示下行压力较强。K线形态中出现了看跌吞没形态,结合均线系统的向下倾斜,进一步确认了市场的看跌倾向。最近在155至161区间震荡低位有一定买盘支撑,但整体反弹力度较弱。MACD空头力量占优,EMA死叉趋势偏空,丽盈判断主力对多头信心不足,所以呈现如此疲惫状态,那么思路上做空的同时做好风控确保安全

 

今日最新点位参考

做多点153,补150,止148,目标163

  做空点160,补170,止172,目标153

  以上分析丽盈基于市场数据和盘口的趋势分析得出的结论,并不构成投资建议。供家人们参考。期望能助力其他怀揣梦想的人在这个波谲云诡的市场中找准自己的位置,开启属于自己的成功之旅。

  

  文章内容具有实时性,仅供参考,风险自担

 

 

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