Why Movement [MOVE] crypto is up – L1 shift, buybacks & more!

ambcrypto2025-12-15 tarihinde yayınlandı2025-12-15 tarihinde güncellendi

Özet

Movement (MOVE) cryptocurrency surged over 12% in 24 hours, extending its rally amid a transition from an Ethereum L2 to a standalone L1 blockchain. Key drivers include partnerships with over 10 DeFi applications, which generate revenue used for MOVE buybacks to reduce circulating supply. Network activity also increased, with monthly active addresses rising 17% to 21.4K and transaction counts growing significantly. Despite the breakout from a two-month descending trendline, sellers remain active, as indicated by negative CVD and MACD signals. For a sustained uptrend, MOVE must hold above $0.0418 and breach $0.0600. The rally shows potential reversal signs after a year of decline, but broader market confirmation is needed.

Movement [MOVE] crypto could have found its bottom after a year of decline. Movement transitioned from an Ethereum Layer 2 (L2) blockchain to a full standalone L1.

In the past 24 hours, MOVE spiked by more than 12%, as per CoinMarketCap data, extending its rally for the second consecutive day. The daily trading volume doubled, exceeding the $84 million mark.

Why is MOVE crypto up today?

Beyond its technical breakout, fundamentals and network activity also drove the rally for MOVE.

On fundamentals, Movement has partnered with more than 10 DeFi applications, which now funnel funds into the ecosystem through fees. This revenue is used in MOVE’s buyback program, which reduces the amount of circulating supply in the market.

For context, the main alliance in the ecosystem was the LayerBank partnership. Its ULAB token launch on the MOVE network added about $2.30 million, fueling more DeFi integration.

On the activity part, the number of Active Monthly Addresses rose by 17%, reaching 21.4K as of press time. This reflected that the network had become busy since the start of December, though prices stayed low.

The total Number of Accounts created almost hit 570,000, while deployed contracts were 28,837 from 4,710 deployers, as per Movement Explorer data.

Additionally, the Transaction Count grew from 50.9K to 84.9K in two days. This brought the monthly sum to 2.8 million transactions, affirming the shift in activity.

All these on-chain metrics supported the growth in price over the past two days. Is the technical setup good enough to say MOVE will sustain the trend?

Will the altcoin maintain momentum?

On the hourly charts, MOVE broke above the descending trendline resistance that had held price for over two months since the October 10th crash.

Still, the altcoin had been in a downtrend since its post-launch rally, which ended on December 25th, 2024, when the MOVE crypto price slightly surpassed the $1.50 mark.

After this breakout, the MOVE price rallied more than 51% but was instantly rejected. The price fell and seemed to be stabilizing around $0.0418. Holding above this level and breaching $0.0600 for a new higher high would mean a continued uptrend. Otherwise, sellers stay in control.

However, in this timeframe, sellers showed momentum, as seen in the MACD bars. Furthermore, the Cumulative Volume Delta (CVD) was negative, at $8.35 million, meaning selling was the dominant activity after the short rally.

While the altcoin was bullish on the day, sellers were not ready to relinquish dominance. MOVE was trading in a bear market, but bulls had thrown the first hints of potential reversal after a year of decline.

The reversal stays alive, though a market shift on bigger timeframes was needed for confirmation.


Final Thoughts

  • MOVE rallies 12%, outperforming the entire market amid a rise in partnerships, buyback programs, and network activity.
  • Movement crypto price was stabilizing above the breakout zone, though sellers did not appear to be giving up control.

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İşlemler

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MOVE Nasıl Satın Alınır

HTX.com’a hoş geldiniz! Movement (MOVE) satın alma işlemlerini basit ve kullanışlı bir hâle getirdik. Adım adım açıkladığımız rehberimizi takip ederek kripto yolculuğunuza başlayın. 1. Adım: HTX Hesabınızı OluşturunHTX'te ücretsiz bir hesap açmak için e-posta adresinizi veya telefon numaranızı kullanın. Sorunsuzca kaydolun ve tüm özelliklerin kilidini açın. Hesabımı Aç2. Adım: Kripto Satın Al Bölümüne Gidin ve Ödeme Yönteminizi SeçinKredi/Banka Kartı: Visa veya Mastercard'ınızı kullanarak anında Movement (MOVE) satın alın.Bakiye: Sorunsuz bir şekilde işlem yapmak için HTX hesap bakiyenizdeki fonları kullanın.Üçüncü Taraflar: Kullanımı kolaylaştırmak için Google Pay ve Apple Pay gibi popüler ödeme yöntemlerini ekledik.P2P: HTX'teki diğer kullanıcılarla doğrudan işlem yapın.Borsa Dışı (OTC): Yatırımcılar için kişiye özel hizmetler ve rekabetçi döviz kurları sunuyoruz.3. Adım: Movement (MOVE) Varlıklarınızı SaklayınMovement (MOVE) satın aldıktan sonra HTX hesabınızda saklayın. Alternatif olarak, blok zinciri transferi yoluyla başka bir yere gönderebilir veya diğer kripto para birimlerini takas etmek için kullanabilirsiniz.4. Adım: Movement (MOVE) Varlıklarınızla İşlem YapınHTX'in spot piyasasında Movement (MOVE) ile kolayca işlemler yapın.Hesabınıza erişin, işlem çiftinizi seçin, işlemlerinizi gerçekleştirin ve gerçek zamanlı olarak izleyin. Hem yeni başlayanlar hem de deneyimli yatırımcılar için kullanıcı dostu bir deneyim sunuyoruz.

282 Toplam GörüntülenmeYayınlanma 2024.12.13Güncellenme 2026.06.02

MOVE Nasıl Satın Alınır

Tartışmalar

HTX Topluluğuna hoş geldiniz. Burada, en son platform gelişmeleri hakkında bilgi sahibi olabilir ve profesyonel piyasa görüşlerine erişebilirsiniz. Kullanıcıların MOVE (MOVE) fiyatı hakkındaki görüşleri aşağıda sunulmaktadır.

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