The post Moodeng’s Hoax-Driven Pump Faces Sustainability Doubts Amid Profit-Taking appeared on BitcoinEthereumNews.com. The Moodeng price experienced a dramatic surge to $0.253 on Binance Futures on December 6, triggered by a death hoax that caused a 250% bounce in an hour due to low weekend liquidity. This volatility highlights the risks in meme coins, with profit-taking evident from declining accumulation/distribution indicators. Moodeng price pump: A 250% intraday spike on low liquidity, flipping the daily structure bullish but facing resistance at $0.1093. Funding rate at 0.61% signals strong long interest, yet accumulation/distribution divergence warns of potential pullback. Weekend volatility in Moodeng underscores the need for caution, with a demand zone at $0.095 potentially supporting a bounce to $0.12. Moodeng price surges 250% amid hoax news: Explore the volatility, technical shifts, and trading strategies for this meme coin rally. Stay informed on crypto fluctuations. What Caused the Recent Moodeng Price Surge? Moodeng price spiked nearly 250% within an hour on December 6, reaching $0.253 on Binance Futures, primarily due to a death hoax that fueled rapid buying amid low weekend liquidity. This event flipped the daily bearish structure to bullish as the price breached the previous lower high at $0.0958. However, at the time of writing, the token tested resistance from November’s swing high at $0.1093, raising questions about sustainability. Source: MOODENG/USD on TradingView The Directional Movement Index (DMI) confirmed the shift, with both the Average Directional Index (ADX) and positive directional indicator (+DI) rising above 20, indicating building upward momentum. Despite this, the accumulation/distribution (A/D) indicator declined even as spot buying increased, pointing to profit-taking by savvy traders. This bearish divergence suggests demand exhaustion, as the previous day’s close lagged far behind the intraday high. How Is Technical Analysis Indicating Moodeng’s Short-Term Outlook? Technical indicators on both daily and hourly charts reveal a mixed picture for Moodeng price. The daily chart shows a bullish… The post Moodeng’s Hoax-Driven Pump Faces Sustainability Doubts Amid Profit-Taking appeared on BitcoinEthereumNews.com. The Moodeng price experienced a dramatic surge to $0.253 on Binance Futures on December 6, triggered by a death hoax that caused a 250% bounce in an hour due to low weekend liquidity. This volatility highlights the risks in meme coins, with profit-taking evident from declining accumulation/distribution indicators. Moodeng price pump: A 250% intraday spike on low liquidity, flipping the daily structure bullish but facing resistance at $0.1093. Funding rate at 0.61% signals strong long interest, yet accumulation/distribution divergence warns of potential pullback. Weekend volatility in Moodeng underscores the need for caution, with a demand zone at $0.095 potentially supporting a bounce to $0.12. Moodeng price surges 250% amid hoax news: Explore the volatility, technical shifts, and trading strategies for this meme coin rally. Stay informed on crypto fluctuations. What Caused the Recent Moodeng Price Surge? Moodeng price spiked nearly 250% within an hour on December 6, reaching $0.253 on Binance Futures, primarily due to a death hoax that fueled rapid buying amid low weekend liquidity. This event flipped the daily bearish structure to bullish as the price breached the previous lower high at $0.0958. However, at the time of writing, the token tested resistance from November’s swing high at $0.1093, raising questions about sustainability. Source: MOODENG/USD on TradingView The Directional Movement Index (DMI) confirmed the shift, with both the Average Directional Index (ADX) and positive directional indicator (+DI) rising above 20, indicating building upward momentum. Despite this, the accumulation/distribution (A/D) indicator declined even as spot buying increased, pointing to profit-taking by savvy traders. This bearish divergence suggests demand exhaustion, as the previous day’s close lagged far behind the intraday high. How Is Technical Analysis Indicating Moodeng’s Short-Term Outlook? Technical indicators on both daily and hourly charts reveal a mixed picture for Moodeng price. The daily chart shows a bullish…

Moodeng’s Hoax-Driven Pump Faces Sustainability Doubts Amid Profit-Taking

2025/12/07 21:21
  • Moodeng price pump: A 250% intraday spike on low liquidity, flipping the daily structure bullish but facing resistance at $0.1093.

  • Funding rate at 0.61% signals strong long interest, yet accumulation/distribution divergence warns of potential pullback.

  • Weekend volatility in Moodeng underscores the need for caution, with a demand zone at $0.095 potentially supporting a bounce to $0.12.

Moodeng price surges 250% amid hoax news: Explore the volatility, technical shifts, and trading strategies for this meme coin rally. Stay informed on crypto fluctuations.

What Caused the Recent Moodeng Price Surge?

Moodeng price spiked nearly 250% within an hour on December 6, reaching $0.253 on Binance Futures, primarily due to a death hoax that fueled rapid buying amid low weekend liquidity. This event flipped the daily bearish structure to bullish as the price breached the previous lower high at $0.0958. However, at the time of writing, the token tested resistance from November’s swing high at $0.1093, raising questions about sustainability.

Source: MOODENG/USD on TradingView

The Directional Movement Index (DMI) confirmed the shift, with both the Average Directional Index (ADX) and positive directional indicator (+DI) rising above 20, indicating building upward momentum. Despite this, the accumulation/distribution (A/D) indicator declined even as spot buying increased, pointing to profit-taking by savvy traders. This bearish divergence suggests demand exhaustion, as the previous day’s close lagged far behind the intraday high.

How Is Technical Analysis Indicating Moodeng’s Short-Term Outlook?

Technical indicators on both daily and hourly charts reveal a mixed picture for Moodeng price. The daily chart shows a bullish flip, but the A/D line’s downward slide amid the surge highlights profit-taking rather than sustained buying pressure. On the hourly timeframe, the A/D dipped before a minor rebound, yet it fails to build strong bullish conviction despite the DMI signaling an uptrend.

Source: MOODENG/USD on TradingView

A key demand zone exists at $0.095, marked by an imbalance area, where a price dip could trigger another bounce targeting the $0.116-$0.12 liquidity pocket. Data from TradingView indicates that low weekend volumes amplify such swings, with the funding rate at 0.61% every four hours attracting long positions but also increasing liquidation risks. Market analysts note that meme coins like Moodeng often exhibit extreme volatility, with historical data showing 70% of such pumps reversing within 48 hours due to profit-taking.

Frequently Asked Questions

Why Did Moodeng Price Jump 250% on December 6?

The Moodeng price jumped 250% after a death hoax circulated on social media, sparking frantic buying in a low-liquidity weekend environment on Binance Futures. This misinformation led to a rapid surge from around $0.07 to $0.253 in under an hour, though technical indicators now suggest caution due to ensuing profit-taking.

Is the Moodeng Surge Sustainable in the Short Term?

While the daily structure has turned bullish and momentum indicators like DMI support an uptrend, the declining A/D line points to profit-taking and potential exhaustion. Traders should watch the $0.095 support; a hold could lead to a retest of $0.12, but failure might see prices drop to prior lows, making sustainability uncertain without increased volume.

Key Takeaways

  • Moodeng Volatility Exposed: The 250% pump on a hoax highlights weekend liquidity risks, with low volumes enabling extreme swings that often reverse quickly.
  • Technical Warnings: Bullish DMI contrasts with bearish A/D divergence, indicating profit-taking and demand weakness despite the price flip.
  • Trading Strategy Insight: Long holders should consider exits near resistance, while dip buyers at $0.095 could aim for $0.12, but always manage risks in volatile meme coins.

Conclusion

The Moodeng price surge to $0.253 on December 6 underscores the unpredictable nature of meme coins, driven by hoaxes and amplified by low liquidity, as seen in the rapid 250% bounce and subsequent pullback signals from indicators like A/D. Technical analysis reveals a bullish structure under pressure from profit-taking, with key levels at $0.095 support and $0.12 resistance shaping the near-term Moodeng outlook. As the crypto market evolves, staying vigilant with data from platforms like TradingView will help navigate such volatility—monitor funding rates and volumes for the next moves in this dynamic asset.

Source: https://en.coinotag.com/moodengs-hoax-driven-pump-faces-sustainability-doubts-amid-profit-taking

Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

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Medium2025/09/18 14:40