The post Bitcoin Struggles to Recover as Fed Holds Firm on Rates and Inflation Stays Elevated appeared on BitcoinEthereumNews.com. TLDR: The Fed now projects onlyThe post Bitcoin Struggles to Recover as Fed Holds Firm on Rates and Inflation Stays Elevated appeared on BitcoinEthereumNews.com. TLDR: The Fed now projects only

Bitcoin Struggles to Recover as Fed Holds Firm on Rates and Inflation Stays Elevated

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TLDR:

  • The Fed now projects only one rate cut for 2026, leaving Bitcoin and risk assets with limited near-term relief.
  • Inflation forecasts have been revised upward to 2.7% for 2026, driven partly by rising oil and natural gas prices.
  • The U.S. 30-year treasury yield is approaching 5%, raising the cost of capital and tightening global liquidity.
  • Bitcoin remains caught between its identity as a store of value and a speculative asset in uncertain macro conditions.

Bitcoin continues to face mounting pressure as macroeconomic conditions grow increasingly unfavorable. The Federal Reserve’s hawkish stance, sticky inflation, and rising treasury yields are tightening global liquidity conditions.

With only one rate cut now projected for 2026, risk assets are finding it harder to attract fresh capital. Meanwhile, geopolitical tensions between the U.S. and Iran are adding upward pressure on energy prices.

This mix of factors is reshaping investor sentiment and pushing capital toward safer, higher-yielding assets.

Fed’s Hawkish Tone Puts Bitcoin Under Pressure

Federal Reserve Chair Jerome Powell recently delivered a hawkish tone on the broader economic outlook. The central bank now projects only one rate cut for 2026.

The dot plot remains unchanged for now, offering little immediate relief for risk-sensitive markets. Powell did not explicitly raise the possibility of rate hikes, but that scenario has not been fully ruled out.

Inflation remains the central issue driving the Fed’s restrained approach to monetary policy. Projections have been revised upward to 2.7% for 2026, reflecting persistent price pressures across the economy.

The Fed expects further inflationary stress, partly tied to rising oil and natural gas prices. Ongoing tensions between the U.S. and Iran are fueling much of that energy-related surge.

Crypto analyst Darkfost_Coc noted that the Fed cannot act decisively while inflation remains sticky. This restraint leaves Bitcoin and other risk assets in a difficult position.

Without rate relief, borrowing costs stay elevated and investor appetite for risk remains constrained across markets.

At the same time, early signs of weakness are beginning to surface in the labor market. Economic growth is also slowing at a measured but noticeable pace.

Together, these trends are bringing stagflation risks back into broader financial discussions. Such an environment has rarely favored speculative assets, and Bitcoin is no exception.

Rising Yields and a Stronger Dollar Limit Bitcoin’s Recovery

As yields rise, the dollar is strengthening once again, creating a challenging backdrop for Bitcoin. This dynamic tends to tighten global liquidity and reduce capital flows toward higher-risk markets.

According to Darkfost_Coc, periods when the dollar and treasury yields become too strong consistently weigh on Bitcoin.

The U.S. 30-year yield is now approaching 5%, a key benchmark closely tied to mortgage lending. The 10-year yield is hovering near 4.30%, raising the overall cost of capital across markets. Higher borrowing costs make it more difficult to invest, finance operations, or take on leveraged positions.

If geopolitical tensions persist, elevated yields could attract large pools of capital seeking safer returns. Investors may shift funds into treasuries, which offer relatively attractive yields with minimal risk. This further drains the liquidity that would otherwise flow into risk assets like Bitcoin.

Bitcoin still struggles to clearly define its role within the broader global financial system. It continues to occupy an uncertain space between a store of value and a speculative asset.

Until that identity solidifies, the current macro environment will keep limiting its ability to draw sustained capital.

The post Bitcoin Struggles to Recover as Fed Holds Firm on Rates and Inflation Stays Elevated appeared first on Blockonomi.

Source: https://blockonomi.com/bitcoin-struggles-to-recover-as-fed-holds-firm-on-rates-and-inflation-stays-elevated/

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