Monero Gains Momentum After Recent Sell-Off, Faces Resistance at $363

TheNewsCryptoPubblicato 2026-02-11Pubblicato ultima volta 2026-02-11

Introduzione

Monero (XMR) is showing signs of stabilization around $340.26 after a sharp sell-off from its January highs near $790. The cryptocurrency is currently consolidating within a range of $320 to $350. Despite the recent rebound from intra-week lows, the overall trend remains bearish, with XMR trading below key moving averages including the 200-day SMA at $363.14, which now acts as a major resistance level. Immediate support is found near the 7-day SMA at $326.43. The RSI indicates oversold conditions but suggests a potential short-term recovery. If support fails, XMR could retest the $270 level.

Monero (XMR), the privacy‐focused cryptocurrency, showing signs of stabilization on the daily chart after a significant sell-off from its January highs near $790. As of today, XMR trades around $340.26, consolidating in the $320 to $350 range following a sharp downtrend over the past week.

After being triggered by a technical break‐and‐fail pattern, the current pattern reflects a rebound from recent intra‐week lows. This move follows a surge earlier in the year and subsequent correction.

Monero Shows Bearish Trend, Key Levels in Focus

Technical indicators from Binance’s daily chart highlight a predominantly bearish trend. The XMR price remains below critical moving averages, including the 30-day SMA at $470.47, 50-day SMA at $464.86, 100-day SMA at $431.80, and 200-day SMA at $363.14. However, it is holding just above the short-term 7-day SMA at $326.43, which currently provides immediate support.

Zooming in, the Relative Strength Index (RSI) shows that momentum is still oversold, with a reading near -20.27, but recent RSI movements suggest a slight easing of bearish pressure, indicating a possible short-term recovery or consolidation phase.

If XMR continues the uptrend the Key resistance lies at the 200-day SMA around $363, with stronger resistance expected between $430 and $470, where it failed to boost the bull earlier. A break above these levels would be necessary to signal a sustained reversal from the current bearish trend.

If the price fails to maintain support near the 7-day SMA, it may retest recent lows near $270, marking another critical support zone.

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TagsAltcoinCrypto MarketMoneroXMR

Domande pertinenti

QWhat is the current trading price of Monero (XMR) and what range has it been consolidating in?

AMonero is currently trading around $340.26 and has been consolidating in the $320 to $350 range.

QWhat is the key resistance level that Monero is facing according to the 200-day SMA?

AThe key resistance level is at the 200-day Simple Moving Average (SMA), which is around $363.

QWhat does the Relative Strength Index (RSI) reading near -20.27 indicate about Monero's momentum?

AThe RSI reading near -20.27 indicates that the momentum is still oversold, but recent movements suggest a slight easing of bearish pressure, pointing to a possible short-term recovery or consolidation.

QWhat could happen if Monero fails to maintain support near its 7-day SMA?

AIf Monero fails to maintain support near the 7-day SMA at $326.43, it may retest recent lows near $270, which is another critical support zone.

QBetween which price levels is stronger resistance expected for Monero, according to the article?

AStronger resistance is expected between $430 and $470, where it previously failed to boost the bull run.

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