The post New Hampshire Approves First $100M Bitcoin-Backed Bond in US appeared on BitcoinEthereumNews.com. New Hampshire approves first U.S. Bitcoin-backed municipal bond worth $100 million for financing. Borrowers post 160% BTC collateral with automatic liquidation if Bitcoin drops near 130% level. Bond aims to connect digital assets with traditional debt markets using fully compliant structures. New Hampshire has made history by approving a $100 million municipal bond backed by Bitcoin, becoming the first state in the United States to do so. As reported by Crypto in America,  approval came from the New Hampshire Business Finance Authority (BFA), which is also the group that recently allowed the state to place up to 5% of its treasury into digital assets. This new bond lets approved companies borrow money using over-collateralized Bitcoin stored with BitGo, instead of using buildings, land, or other traditional assets. The money earned from fees and gains on the BTC collateral will help fund the state’s Bitcoin Economic Development Fund, a program created to support innovation, startups, and new business activity in New Hampshire. Related: US Senators Demand DOJ Investigation Into Trump-Linked WLFI for Alleged Sanctions Violations A First for U.S. Municipal Finance Borrowing against crypto is common in private markets, but it has never been used in U.S. municipal finance, which is normally a very conservative, rule-heavy industry. By stepping into this space, New Hampshire is testing whether Bitcoin can operate as a trusted, high-grade asset inside government debt markets. If this experiment works, experts say it could inspire other states and cities to explore similar Bitcoin-backed financial products. How the Bitcoin-Backed Bond Works The bond was designed by Wave Digital Assets in partnership with municipal bond specialists at Rosemawr Management. Their goal was to create a bridge between digital assets and traditional bond markets using the same legal and regulatory standards that support long-standing government and corporate debt. Wave co-founder Les… The post New Hampshire Approves First $100M Bitcoin-Backed Bond in US appeared on BitcoinEthereumNews.com. New Hampshire approves first U.S. Bitcoin-backed municipal bond worth $100 million for financing. Borrowers post 160% BTC collateral with automatic liquidation if Bitcoin drops near 130% level. Bond aims to connect digital assets with traditional debt markets using fully compliant structures. New Hampshire has made history by approving a $100 million municipal bond backed by Bitcoin, becoming the first state in the United States to do so. As reported by Crypto in America,  approval came from the New Hampshire Business Finance Authority (BFA), which is also the group that recently allowed the state to place up to 5% of its treasury into digital assets. This new bond lets approved companies borrow money using over-collateralized Bitcoin stored with BitGo, instead of using buildings, land, or other traditional assets. The money earned from fees and gains on the BTC collateral will help fund the state’s Bitcoin Economic Development Fund, a program created to support innovation, startups, and new business activity in New Hampshire. Related: US Senators Demand DOJ Investigation Into Trump-Linked WLFI for Alleged Sanctions Violations A First for U.S. Municipal Finance Borrowing against crypto is common in private markets, but it has never been used in U.S. municipal finance, which is normally a very conservative, rule-heavy industry. By stepping into this space, New Hampshire is testing whether Bitcoin can operate as a trusted, high-grade asset inside government debt markets. If this experiment works, experts say it could inspire other states and cities to explore similar Bitcoin-backed financial products. How the Bitcoin-Backed Bond Works The bond was designed by Wave Digital Assets in partnership with municipal bond specialists at Rosemawr Management. Their goal was to create a bridge between digital assets and traditional bond markets using the same legal and regulatory standards that support long-standing government and corporate debt. Wave co-founder Les…

New Hampshire Approves First $100M Bitcoin-Backed Bond in US

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  • New Hampshire approves first U.S. Bitcoin-backed municipal bond worth $100 million for financing.
  • Borrowers post 160% BTC collateral with automatic liquidation if Bitcoin drops near 130% level.
  • Bond aims to connect digital assets with traditional debt markets using fully compliant structures.

New Hampshire has made history by approving a $100 million municipal bond backed by Bitcoin, becoming the first state in the United States to do so. As reported by Crypto in America,  approval came from the New Hampshire Business Finance Authority (BFA), which is also the group that recently allowed the state to place up to 5% of its treasury into digital assets.

This new bond lets approved companies borrow money using over-collateralized Bitcoin stored with BitGo, instead of using buildings, land, or other traditional assets. The money earned from fees and gains on the BTC collateral will help fund the state’s Bitcoin Economic Development Fund, a program created to support innovation, startups, and new business activity in New Hampshire.

Related: US Senators Demand DOJ Investigation Into Trump-Linked WLFI for Alleged Sanctions Violations

A First for U.S. Municipal Finance

Borrowing against crypto is common in private markets, but it has never been used in U.S. municipal finance, which is normally a very conservative, rule-heavy industry. By stepping into this space, New Hampshire is testing whether Bitcoin can operate as a trusted, high-grade asset inside government debt markets.

If this experiment works, experts say it could inspire other states and cities to explore similar Bitcoin-backed financial products.

How the Bitcoin-Backed Bond Works

The bond was designed by Wave Digital Assets in partnership with municipal bond specialists at Rosemawr Management. Their goal was to create a bridge between digital assets and traditional bond markets using the same legal and regulatory standards that support long-standing government and corporate debt.

Wave co-founder Les Borsai explained that the goal is to build something institutional, compliant, and scalable worldwide.

Here’s the basic structure:

• The borrower must post around 160% of the bond’s value in Bitcoin.
• If Bitcoin falls near 130%, an automatic liquidation system activates to protect investors.
• This setup allows companies to access capital without selling their BTC or triggering taxes.

Bitcoin Price In A Slump

Despite the positive sentiment in the market, Bitcoin is still struggling to break out, even though it has climbed about 2% in the last 24 hours. BTC is trading near $91,000, but it continues to face heavy resistance at $93,350 and at $94,200, where a bearish trendline is capping the move. Bitcoin needs a strong close above $95,000 to confirm real bullish momentum.

At the same time, the broader crypto market is also trying to recover from recent losses. Ethereum is trading around $3,058, XRP is holding near $2.17, BNB is around $927, and Solana is near $138.

Related: Kazakhstan New Law Opens Crypto Mining to Private Sector Ahead of $1B Reserve

Disclaimer: The information presented in this article is for informational and educational purposes only. The article does not constitute financial advice or advice of any kind. Coin Edition is not responsible for any losses incurred as a result of the utilization of content, products, or services mentioned. Readers are advised to exercise caution before taking any action related to the company.

Source: https://coinedition.com/new-hampshire-approves-first-100-million-bitcoin-backed-bond-in-the-u-s/

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