Major Catalysts To Watch Out For That Could Send Bitcoin Price To $90,000

bitcoinistPublished on 2026-04-05Last updated on 2026-04-05

Abstract

A crypto analyst, Rawl, has presented a Bitcoin price roadmap suggesting the cryptocurrency could surge to $90,000. According to his analysis, Bitcoin has completed a corrective Elliott Wave structure (Wave C) after dropping to $60,000 in February. The market has since entered a new bullish phase, with Waves 1 and 2 already formed. It is currently consolidating around $65,000 before expected upward moves in Waves 3 and 4 toward $90,000–$96,000. After reaching this level, a sideways movement is anticipated, followed by a corrective ABC wave, potentially coinciding with a change in Federal Reserve leadership. The analyst assigns an 80% probability of a new all-time high this year, with a less likely chance of a deeper pullback to $55,000 between May and June. He advises taking partial profits at $90,000 and rebuying on potential dips.

A crypto analyst has shared a new Bitcoin price roadmap, outlining where the market currently is and projecting the cryptocurrency’s next moves amid the ongoing bear market. While some experts still see more downside ahead for BTC, this analyst predicts a massive surge back above $90,000. The analyst cites several catalysts, including Bitcoin price action and the Elliot Wave structure, to support his bullish outlook.

Bitcoin Price Roadmap To $90,000

Rawl, a crypto market expert on X, has presented a new price analysis of Bitcoin, outlining in detail how the cryptocurrency can return to $90,000 and what traders should expect in the coming weeks and months. The analyst noted that, so far, Bitcoin has been following an expected plan, suggesting that the recent pullbacks, rebounds, and other price changes were normal reactions.

He said that although the market’s timeline has been the only surprise, the cryptocurrency’s structure is what truly matters. Rawl stated that, following Bitcoin’s price crash to $60,000 in February, which marked its lowest level since its 2025 all-time high, the cryptocurrency needed two more waves to complete its corrective structure.

As expected, Bitcoin went on to form Wave 4 and Wave 5 in its Elliott Wave setup, completing the full corrective Wave C chart structure. He added that BTC’s previous pullback to $63,000 counted as one wave and officially confirmed the final downward move.

Since then, Rawl noted that the market has rebounded, starting a new bullish Elliott Wave phase. In this fresh setup, the analyst stated that Bitcoin has already printed Wave 1 and Wave 2, with the market presently in a choppy range around $65,000 ahead of its next two waves to the upside.

BTCUSD now trading at $67,104. Chart: TradingView

He explained that once these waves complete, Bitcoin could rise quickly toward $90,000 to $96,000. After hitting that level, he expects it to move sideways for a few weeks before declining again as it enters a new corrective ABC wave, likely around the time a new Federal Reserve chair replaces Jerome Powell. He described this correction as a bullish move, noting that it could persist until the upcoming FOMC meeting in June.

The analyst noted that the price action following the FOMC could complete the first corrective Wave C, allowing the market to resume its uptrend. Alternatively, Bitcoin could drop one more time toward the $71,000 to $74,000 range, forming the next Wave 2 before a larger rally begins.

Rawl confidently stated that Bitcoin has an 80% chance of reaching a new all-time high this year. He noted that the remaining 20% possibility suggests that price could rise to the $116,000 to $125,000 range below its current cycle top.

Analyst Outlines Other Likely Path For Bitcoin Price

Although Rawl strongly believes in the roadmap he outlined above, he acknowledged that a less likely scenario is that Bitcoin could experience a deeper pullback between May and June, falling below $74,000 and possibly crashing to $55,000.

Because of this risk, the analyst recommends taking profits of 20-30% around the $90,000 range, then gradually buying back 10-15% of that position if Bitcoin dips to $74,000, and the rest if the price falls to $55,000 in June or by Q1 2027. Regardless of what happens to Bitcoin, the analyst still believes the cryptocurrency could hit an all-time high afterward.

Featured image from Pexels, chart from TradingView

Related Questions

QAccording to analyst Rawl, what is the primary technical analysis tool used to predict Bitcoin's potential surge to $90,000?

AThe primary technical analysis tool used is the Elliott Wave structure.

QWhat are the two waves that Bitcoin needed to complete after its crash to $60,000 to finalize its corrective structure?

AIt needed to complete Wave 4 and Wave 5 to finalize the corrective Wave C structure.

QAt what price level does the analyst suggest taking profits of 20-30% and what is the main reason for this recommendation?

AThe analyst suggests taking profits of 20-30% around the $90,000 range due to the risk of a deeper pullback to $55,000.

QWhat event does the analyst associate with the timing of a new corrective ABC wave for Bitcoin?

AThe analyst associates the new corrective ABC wave with the time a new Federal Reserve chair replaces Jerome Powell.

QWhat two potential price ranges does the analyst give for Bitcoin's next all-time high, and what are the associated probabilities?

AThe analyst gives an 80% probability for a new all-time high (above the previous cycle top) and a 20% probability for a high in the $116,000 to $125,000 range below the current cycle top.

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