LTC 的购买力上升、这会帮助它攀升至 80 美元吗?

币界网Publicado a 2024-08-21Actualizado a 2024-08-21

币界网报道:

LTC 的 150 天 SMA 已经移至价格下方,表明长期趋势是积极的。

  • 自 8 月 5 日以来,在购买活动的推动下,LTC 一直呈现逐步稳定的上升趋势。

  • LTC 在四小时图上形成了看涨 SMA 交叉,其目标价格可能为 79-80 美元。

根据CoinMarketCap的数据,在撰写本文时,LTC 的交易量上涨了 16% ,与此同时,围绕该代币的购买活动也在增加。

自8 月 5 日因美国疲软、就业数据和科技股表现不佳导致加密货币市场崩盘以来,LTC 一直处于稳步上升趋势。

截至发稿时,其七天涨幅约为 7%。

LTC 已形成 V 型复苏。该代币一直在直线上涨,没有出现大幅价格下跌来扰乱涨势。

图表看起来很奇怪,因为这不是我们在加密货币中经常看到的东西。自本月初的涨势以来,基本上一直呈直线上升趋势,没有出现大幅下跌。有趣的价格走势值得关注。

买家推动 LTC 上涨

LTC 在过去两周的稳步上涨可能归因于该代币持续的购买压力。

日线图上的相对强弱指数 (RSI) 显示购买活动逐渐增加。自 8 月初以来,RSI 线也不断创下新高。

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资金流量指数 (MFI) 在稳步上涨后维持在 68 点,表明流入 LTC 的资金多于流出的资金。这通常是一个看涨信号,表明买家一直在推动价格走势。

然而,由于 LTC 的上涨似乎完全是由购买活动推动的,交易者应该对任何可能的逆转保持警惕。

尽管处于正值区域,Awesome Oscillator (AO) 仍显示红色直方图条。此形态通常表示 LTC 仍处于看涨势头。

然而,上升趋势的强度正在减弱,随后可能出现逆转或短暂的暂停。

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尽管如此,简单移动平均线 (SMA) 仍支持看涨论点。150 日 SMA 已移至价格下方,表明长期趋势为正。

此外,50 日均线试图在 150 日均线上方形成重大看涨交叉。该指标表明看涨势头正在形成,以支持持续的上升趋势。

LTC 多次在 100% 斐波那契水平(68 美元)处受阻。如果价格再次瞄准这一阻力位并突破,LTC 可能会跌至 79 美元。

数据显示,有 577,000 个地址购买了 65 至 69 美元之间的货币。这意味着,如果这些交易者决定出售以减少损失,68 美元的阻力位可能会继续保持。

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从 Coinglass 的多头/空头比率来看,期货市场对 LTC 的看跌情绪正在消退。截至发稿时,该比率已降至 0.91,表明空头仓位略多于多头仓位。

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Discusiones

Bienvenido a la comunidad de HTX. Aquí puedes mantenerte informado sobre los últimos desarrollos de la plataforma y acceder a análisis profesionales del mercado. A continuación se presentan las opiniones de los usuarios sobre el precio de LTC (LTC).

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