Miners aren’t selling, yet Bitcoin is falling – What’s changed?

ambcryptoОпубліковано о 2026-03-26Востаннє оновлено о 2026-03-26

Анотація

Despite the common belief that Bitcoin's recent price decline was driven by miners selling due to rising post-halving costs, data suggests otherwise. The Miner Supply Ratio, which tracks BTC transfers from miners to exchanges, has been steadily falling since early 2025, indicating miners are actually selling less. Instead, the downturn may be attributed to weak demand and concerns about the market's ability to absorb supply. The next price movement will likely depend on whether buying interest returns.

Despite popular belief, Bitcoin’s [BTC] recent price decline was not because of the miners.

Instead, the downturn might be tied to weak demand. So, there are concerns about the market’s ability to absorb supply. With miner selling near lows, the next move will likely depend on whether buying interest returns or not.

Are loss-making miners causing the sell-off?

A common market narrative of recent times is that Bitcoin’s recent weakness has been caused by distressed miners offloading supply. Rising post-halving costs (spanning electricity, hardware, and operations) have allegedly pushed many miners close to or below breakeven, forcing them to sell.

Source: Cryptoquant

However, here’s a contrarian view. Miner Supply Ratio, which tracks BTC sent from miners to exchanges like Binance, has been steadily falling since early 2025.

Basically, miners are selling less, not more. Even so, Bitcoin’s price first rallied and then dropped during this period.

Key metric continues to fall

Пов'язані питання

QWhat is the main reason for Bitcoin's recent price decline according to the article?

AThe downturn is tied to weak demand rather than miner selling, with concerns about the market's ability to absorb supply.

QWhat common market narrative about Bitcoin's weakness does the article challenge?

AIt challenges the narrative that Bitcoin's recent weakness was caused by distressed miners offloading supply due to rising post-halving costs.

QWhat is the Miner Supply Ratio and what does it indicate about miner activity?

AThe Miner Supply Ratio tracks BTC sent from miners to exchanges and has been steadily falling since early 2025, indicating miners are selling less, not more.

QHow did Bitcoin's price behave during the period when miner selling was decreasing?

ABitcoin's price first rallied and then dropped during the period when miner selling was decreasing.

QWhat will Bitcoin's next move likely depend on according to the article?

AThe next move will likely depend on whether buying interest returns or not.

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