U.S. Treasury Sanctions UK Crypto Exchanges for Iran Sanctions Evasion

TheNewsCryptoPublicado em 2026-01-31Última atualização em 2026-01-31

Resumo

The U.S. Treasury, through OFAC, has sanctioned two UK-based crypto exchanges, Zedcex and Zedxion, for allegedly enabling Iran to evade international financial sanctions. This marks the first time OFAC has targeted crypto exchanges for supporting Iran’s financial activities. The exchanges reportedly provided services to sanctioned Iranian entities, facilitating over $389 million in transactions and helping obscure fund flows using digital assets. Seven Iranian individuals, including businessman Babak Zanjani, were also designated. OFAC emphasized that digital assets do not exempt entities from sanctions enforcement and warned crypto platforms to strengthen compliance measures to avoid facilitating illicit finance.

The U.S. Treasury has sanctioned two crypto exchanges in the UK, Zedcex and Zedxion, for allegedly assisting Iran in evading U.S. and international financial sanctions. The sanctions were issued by OFAC, or the Office of Foreign Assets Control, at the U.S. Treasury. This is the first time that OFAC has sanctioned crypto exchanges for their role in Iran’s financial sector.

According to the U.S. Treasury, the two crypto exchanges provided users with access to financial services that supported Iranian individuals and entities who are subject to U.S. sanctions. OFAC further stated that the two crypto exchanges facilitated sanctioned persons in moving their funds through the international financial system using digital assets.

Targeted Individuals and Groups

In addition to the transactions, OFAC designated seven Iranian individuals to the blocklist. Also sanctioned was Babak Zanjani, an Iranian businessman with a past financial conviction record, who was reportedly freed for the sole purpose of facilitating funds for the regime.

According to Treasury officials, the group utilized cryptocurrency infrastructure to obscure the flow of funds and evade traditional banking controls. Blockchain analysis related to the designation reveals that wallet addresses associated with these entities facilitated over $389 million in transactions.

The Treasury emphasized that the use of digital assets does not provide a shield from sanctions enforcement and that crypto-related activities are still subject to US laws and regulations.

Implications for Crypto Compliance

OFAC emphasized that these sanctions are a strong statement about the enforcement of sanctions in the face of evolving financial technology. OFAC warned that crypto platforms that do not follow proper compliance procedures may be facilitating illicit finance and could be subject to enforcement action if they knowingly facilitate sanctioned jurisdictions or persons. The sanctions require U.S. persons to freeze all property and interests in property of the named entities and to prohibit all transactions involving them.

However, Treasury officials emphasized that all exchanges must have strong compliance programs regardless of their base. The actions against Zedcex and Zedxion indicate toughening of U.S. enforcement of evasion facilitated by crypto related to Iran. OFAC’s designation of the exchanges and the individuals involved in the transfer of illicit funds indicates that the digital asset industry is bound by U.S. sanctions laws.

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TagsCrypto ExchangeIranIran GovernmentOFAC

Perguntas relacionadas

QWhich UK crypto exchanges were sanctioned by the U.S. Treasury for Iran sanctions evasion?

AZedcex and Zedxion.

QWhich U.S. government agency issued the sanctions against the crypto exchanges?

AThe Office of Foreign Assets Control (OFAC) at the U.S. Treasury.

QWhat was the total value of transactions facilitated by the wallet addresses associated with the sanctioned entities, according to blockchain analysis?

AOver $389 million.

QBesides the crypto exchanges, how many Iranian individuals were designated to the blocklist by OFAC?

ASeven.

QWhat key message did OFAC emphasize regarding digital assets and sanctions enforcement?

AThe use of digital assets does not provide a shield from sanctions enforcement, and crypto-related activities are still subject to U.S. laws and regulations.

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