The post XLM Price Prediction: Stellar Targets $0.25-$0.27 Recovery by February 2026 appeared on BitcoinEthereumNews.com. Iris Coleman Jan 26, 2026 15:46 StellarThe post XLM Price Prediction: Stellar Targets $0.25-$0.27 Recovery by February 2026 appeared on BitcoinEthereumNews.com. Iris Coleman Jan 26, 2026 15:46 Stellar

XLM Price Prediction: Stellar Targets $0.25-$0.27 Recovery by February 2026



Iris Coleman
Jan 26, 2026 15:46

Stellar (XLM) consolidates near $0.21 support with neutral RSI signals. Technical analysis suggests potential recovery toward $0.25-$0.27 resistance zone within weeks.

XLM Price Prediction Summary

Short-term target (1 week): $0.22-$0.23
Medium-term forecast (1 month): $0.25-$0.27 range
Bullish breakout level: $0.24 (Upper Bollinger Band)
Critical support: $0.20 (Lower Bollinger Band)

What Crypto Analysts Are Saying About Stellar

Recent analyst coverage has been cautiously optimistic for XLM’s near-term prospects. Zach Anderson noted on January 25, 2026: “Stellar (XLM) consolidates at $0.21 with neutral RSI signals. Technical analysis suggests potential recovery toward $0.25-$0.27 resistance zone by February 2026.”

Peter Zhang echoed similar sentiment on January 24, stating: “Stellar (XLM) trades at $0.21 with technical indicators suggesting potential recovery toward $0.25-$0.27 resistance zone by February 2026, despite current bearish momentum signals.”

Earlier this week, Jessie A Ellis provided additional context: “Stellar (XLM) trades at $0.21 with oversold RSI at 38.8. Technical analysis suggests potential recovery to $0.25 resistance if support at $0.20 holds through January.”

The consensus among analysts points to a potential 19-29% upside if XLM can maintain current support levels.

XLM Technical Analysis Breakdown

Stellar’s current technical picture presents a mixed but potentially constructive setup. Trading at $0.209, XLM sits precisely at its 7-day simple moving average, indicating short-term equilibrium.

The RSI reading of 42.29 places XLM in neutral territory, having recovered from oversold conditions earlier this month. This suggests selling pressure may be exhausting without yet confirming bullish momentum.

MACD analysis reveals bearish momentum with the histogram at 0.0000, indicating the potential for a momentum shift. The MACD line (-0.0052) remains below its signal line, but the converging values suggest a possible bullish crossover ahead.

Bollinger Bands positioning shows XLM trading near the lower band at $0.20, with the upper band at $0.24 representing immediate resistance. The current position of 0.1937 indicates the token is closer to oversold than overbought conditions.

Key resistance levels emerge at $0.22 (20-day SMA) and $0.24 (upper Bollinger Band), while critical support holds at the $0.20 psychological level.

Stellar Price Targets: Bull vs Bear Case

Bullish Scenario

In the bullish case, XLM price prediction targets the $0.25-$0.27 zone identified by multiple analysts. This scenario requires:

  • Immediate catalyst: Break above $0.22 resistance (20-day SMA)
  • Confirmation level: Sustained trading above $0.24 (upper Bollinger Band)
  • Target achievement: February 2026 timeframe for $0.25-$0.27

The Stellar forecast becomes increasingly positive if XLM can reclaim the $0.24 level, potentially triggering momentum-driven buying toward the analyst consensus targets.

Bearish Scenario

The bearish case centers on a breakdown below the critical $0.20 support level. Risk factors include:

  • Immediate concern: Failure to hold $0.20 psychological support
  • Technical breakdown: RSI falling back below 40 into oversold territory
  • Downside targets: $0.18-$0.19 representing the next significant support zone

A break below $0.20 would invalidate the current consolidation pattern and could trigger further selling pressure.

Should You Buy XLM? Entry Strategy

For traders considering XLM positions, the current setup offers defined risk parameters:

The reward-to-risk ratio favors bullish positions, with potential 20%+ upside against 6% initial risk to stop-loss levels.

Conclusion

The XLM price prediction for the coming month points toward a recovery rally targeting $0.25-$0.27, representing 19-29% upside potential. The Stellar forecast relies on maintaining current support at $0.20 while building momentum above the $0.22 resistance level.

Technical indicators suggest XLM is positioned for a potential reversal, though confirmation through higher timeframe momentum indicators remains necessary. The analyst consensus around $0.25-$0.27 targets provides a reasonable framework for expectations through February 2026.

Risk Disclaimer: Cryptocurrency price predictions are highly speculative and subject to extreme volatility. Past performance does not guarantee future results. Always conduct your own research and never invest more than you can afford to lose.

Image source: Shutterstock

Source: https://blockchain.news/news/20260126-price-prediction-xlm-stellar-targets-025-027-recovery-by

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