Ethereum Leverage Climbs After Historic Liquidation Event – New Cycle Starting?

bitcoinistОпубликовано 2026-03-17Обновлено 2026-03-17

Введение

Ethereum has reclaimed the $3,200 level amid renewed buying activity, signaling a potential shift in market sentiment after months of downward pressure. Over the past week, Bitcoin rose 8.6%, while Ethereum surged 13.9%, reflecting stronger speculative demand. Analysts attribute the rally to institutional inflows into crypto ETFs and improved risk appetite. A key development is the recovery in leverage within Ethereum's derivatives market. Following the historic liquidation event on October 10—where over $19 billion in positions were liquidated—the Estimated Leverage Ratio (ELR) on Binance dropped 27%. Since then, leverage has steadily rebuilt, with the ELR climbing to 0.69 by mid-March, indicating renewed trader confidence and risk-taking. This leverage reset may support further upward momentum, though it could also increase volatility.

Ethereum has reclaimed the $2,300 level as renewed buying activity begins to push the market higher after months of persistent downward pressure. The move marks a notable shift in short-term sentiment, with traders increasingly pointing to growing bullish momentum across the broader cryptocurrency sector.

Over the past seven days, Bitcoin has climbed approximately 8.6%, reinforcing the perception that the market may be transitioning out of the corrective phase that dominated recent months.

Ethereum, which often behaves as a higher-beta asset within the crypto ecosystem, has responded even more aggressively to the improving sentiment. Over the same period, ETH has surged roughly 13.9%, outperforming Bitcoin and signaling stronger speculative demand from traders.

Analysts note that the move higher is also being supported by strong inflows into crypto-related exchange-traded funds, reflecting continued institutional appetite for digital assets. As liquidity begins to return and risk tolerance improves, Ethereum’s ability to reclaim the $2,300 level is now being closely monitored as a potential pivot point that could determine whether the recovery can extend further in the coming weeks.

Ethereum Leverage Recovers After Historic Liquidation Reset

A recent analysis from CryptoQuant highlights how the Ethereum derivatives market has undergone a significant structural reset following the dramatic liquidation event that occurred on October 10. According to the report, the flash crash triggered one of the largest deleveraging events in the history of the cryptocurrency market.

During that event, the Ethereum Estimated Leverage Ratio (ELR) on Binance dropped sharply from 0.56 to 0.41, representing a 27% contraction in market leverage. The “10/10” event is now widely recognized as the largest 24-hour liquidation cascade in crypto history, with more than $19 billion in leveraged positions forcibly liquidated across the market.

Ethereum Estimated Leverage Ratio Binance | Source: CryptoQuant

Since that reset, leverage levels have gradually rebuilt as confidence returned. The report notes that Ethereum’s ELR has climbed to approximately 0.69 in mid-March, signaling that traders are once again increasing their use of leverage as sentiment improves.

The Estimated Leverage Ratio is calculated by dividing open interest by the amount of ETH reserves held on exchanges. In practical terms, it measures how aggressively traders are using leverage relative to the collateral available in the system.

Higher ELR readings typically indicate growing risk appetite and increased speculative positioning, which can amplify both upward price momentum and market volatility.

As sentiment improves, Ethereum and Bitcoin continue to act as high-beta risk-on assets, while more defensive investors may rotate toward tokenized gold instruments such as PAXG and XAUT.

Связанные с этим вопросы

QWhat key price level has Ethereum reclaimed, signaling a shift in short-term market sentiment?

AEthereum has reclaimed the $2,300 level.

QAccording to the article, what was the approximate percentage increase for Ethereum (ETH) over the past seven days?

AETH surged roughly 13.9% over the past seven days.

QWhat major event on October 10th is cited as causing a historic deleveraging in the crypto market?

AThe flash crash on October 10th, referred to as the '10/10' event, triggered the largest 24-hour liquidation cascade in crypto history.

QWhat does the Ethereum Estimated Leverage Ratio (ELR) measure, according to the article?

AThe Estimated Leverage Ratio measures how aggressively traders are using leverage relative to the collateral available in the system, calculated by dividing open interest by the amount of ETH reserves held on exchanges.

QTo what level had Ethereum's Estimated Leverage Ratio on Binance climbed by mid-March, according to the CryptoQuant report?

AEthereum's Estimated Leverage Ratio had climbed to approximately 0.69 by mid-March.

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