On-chain data shows the popular Bitcoin Hash Ribbons indicator has just given a miner capitulation signal. Here’s what this could mean. Bitcoin Hash Ribbons Now Signaling Miner Stress As pointed out by CryptoQuant author Darkfrost in an X post, the Bitcoin Hash Ribbons have shown a crossover that has historically corresponded to rising stress among the miners. The Hash Ribbons indicator aims to gauge the situation of the miners by comparing the 30-day and 60-day moving averages (MAs) of the BTC Hashrate, a metric that measures the total amount of computing power that the validators as a whole have connected to the blockchain. Related Reading: Bitcoin Speculation Muted: Glassnode Analyst Calls Perps A ‘Ghost Town’ The trend in the Hashrate can act as a representation of the sentiment among the miners, as they usually expand computing power (an increase in the Hashrate) when mining is profitable and/or they believe BTC is heading toward a bullish outcome, while they decommission mining rigs (a drop in the Hashrate) when they are having a hard time breaking even. The Hash Ribbons indicator basically captures shifts between these two behaviors. When the 30-day ribbon falls below the 60-day one, it means miners are reducing power at a fast rate. This can be a sign that this group is going through capitulation. Such a crossover has recently formed again for Bitcoin, as the chart below shared by Darkfrost shows. Thus, it would appear that miners are once again in a phase of capitulation. “Historically, these periods of mining stress have been profitable for Bitcoin investors, with one exception during the 2021 mining ban in China,” noted the analyst. The signal doesn’t act as a straightforward buy indicator, however, as mining capitulation often doesn’t directly coincide with a bottom. “In the short term, these periods tend to be bearish because miners may need to increase their selling to cover production costs,” explained Darkfrost. In general, miner capitulation periods have tended to lead into profitable buying windows for the cryptocurrency, although it’s unpredictable how long such a phase would last. From the chart, it’s apparent that sometimes the Hash Ribbons signal has been quite brief, while other times it has been maintained for weeks. As for what has forced miners to turn off Hashrate recently, the answer likely lies in the bearish trajectory that Bitcoin has witnessed. Miners obtain their reward in BTC denomination, so how the USD value of the coin fluctuates directly affects their dollar revenue. Related Reading: XRP Selloff: Whales Shed Coins Worth $1 Billion In A Week Before this, miners had been in a phase of rapid expansion alongside the bull rally, which had led to an explosion in the network’s mining Difficulty. With the price plummeting and Difficulty being at extraordinary levels, miners have faced a double whammy during the past month. BTC Price Bitcoin saw a recovery above $92,000 on Monday, but it would appear that the asset wasn’t able to maintain it, as its price is now back at $90,300. Featured image from Dall-E, CryptoQuant.com, chart from TradingView.comOn-chain data shows the popular Bitcoin Hash Ribbons indicator has just given a miner capitulation signal. Here’s what this could mean. Bitcoin Hash Ribbons Now Signaling Miner Stress As pointed out by CryptoQuant author Darkfrost in an X post, the Bitcoin Hash Ribbons have shown a crossover that has historically corresponded to rising stress among the miners. The Hash Ribbons indicator aims to gauge the situation of the miners by comparing the 30-day and 60-day moving averages (MAs) of the BTC Hashrate, a metric that measures the total amount of computing power that the validators as a whole have connected to the blockchain. Related Reading: Bitcoin Speculation Muted: Glassnode Analyst Calls Perps A ‘Ghost Town’ The trend in the Hashrate can act as a representation of the sentiment among the miners, as they usually expand computing power (an increase in the Hashrate) when mining is profitable and/or they believe BTC is heading toward a bullish outcome, while they decommission mining rigs (a drop in the Hashrate) when they are having a hard time breaking even. The Hash Ribbons indicator basically captures shifts between these two behaviors. When the 30-day ribbon falls below the 60-day one, it means miners are reducing power at a fast rate. This can be a sign that this group is going through capitulation. Such a crossover has recently formed again for Bitcoin, as the chart below shared by Darkfrost shows. Thus, it would appear that miners are once again in a phase of capitulation. “Historically, these periods of mining stress have been profitable for Bitcoin investors, with one exception during the 2021 mining ban in China,” noted the analyst. The signal doesn’t act as a straightforward buy indicator, however, as mining capitulation often doesn’t directly coincide with a bottom. “In the short term, these periods tend to be bearish because miners may need to increase their selling to cover production costs,” explained Darkfrost. In general, miner capitulation periods have tended to lead into profitable buying windows for the cryptocurrency, although it’s unpredictable how long such a phase would last. From the chart, it’s apparent that sometimes the Hash Ribbons signal has been quite brief, while other times it has been maintained for weeks. As for what has forced miners to turn off Hashrate recently, the answer likely lies in the bearish trajectory that Bitcoin has witnessed. Miners obtain their reward in BTC denomination, so how the USD value of the coin fluctuates directly affects their dollar revenue. Related Reading: XRP Selloff: Whales Shed Coins Worth $1 Billion In A Week Before this, miners had been in a phase of rapid expansion alongside the bull rally, which had led to an explosion in the network’s mining Difficulty. With the price plummeting and Difficulty being at extraordinary levels, miners have faced a double whammy during the past month. BTC Price Bitcoin saw a recovery above $92,000 on Monday, but it would appear that the asset wasn’t able to maintain it, as its price is now back at $90,300. Featured image from Dall-E, CryptoQuant.com, chart from TradingView.com

Bitcoin In An Opportunity Zone? Hash Ribbons Flash New Buy Signal

2025/12/10 03:00

On-chain data shows the popular Bitcoin Hash Ribbons indicator has just given a miner capitulation signal. Here’s what this could mean.

Bitcoin Hash Ribbons Now Signaling Miner Stress

As pointed out by CryptoQuant author Darkfrost in an X post, the Bitcoin Hash Ribbons have shown a crossover that has historically corresponded to rising stress among the miners. The Hash Ribbons indicator aims to gauge the situation of the miners by comparing the 30-day and 60-day moving averages (MAs) of the BTC Hashrate, a metric that measures the total amount of computing power that the validators as a whole have connected to the blockchain.

The trend in the Hashrate can act as a representation of the sentiment among the miners, as they usually expand computing power (an increase in the Hashrate) when mining is profitable and/or they believe BTC is heading toward a bullish outcome, while they decommission mining rigs (a drop in the Hashrate) when they are having a hard time breaking even.

The Hash Ribbons indicator basically captures shifts between these two behaviors. When the 30-day ribbon falls below the 60-day one, it means miners are reducing power at a fast rate. This can be a sign that this group is going through capitulation.

Such a crossover has recently formed again for Bitcoin, as the chart below shared by Darkfrost shows.

Bitcoin Hash Ribbons

Thus, it would appear that miners are once again in a phase of capitulation. “Historically, these periods of mining stress have been profitable for Bitcoin investors, with one exception during the 2021 mining ban in China,” noted the analyst.

The signal doesn’t act as a straightforward buy indicator, however, as mining capitulation often doesn’t directly coincide with a bottom. “In the short term, these periods tend to be bearish because miners may need to increase their selling to cover production costs,” explained Darkfrost.

In general, miner capitulation periods have tended to lead into profitable buying windows for the cryptocurrency, although it’s unpredictable how long such a phase would last. From the chart, it’s apparent that sometimes the Hash Ribbons signal has been quite brief, while other times it has been maintained for weeks.

As for what has forced miners to turn off Hashrate recently, the answer likely lies in the bearish trajectory that Bitcoin has witnessed. Miners obtain their reward in BTC denomination, so how the USD value of the coin fluctuates directly affects their dollar revenue.

Before this, miners had been in a phase of rapid expansion alongside the bull rally, which had led to an explosion in the network’s mining Difficulty. With the price plummeting and Difficulty being at extraordinary levels, miners have faced a double whammy during the past month.

BTC Price

Bitcoin saw a recovery above $92,000 on Monday, but it would appear that the asset wasn’t able to maintain it, as its price is now back at $90,300.

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