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Technip awarded MSA for LNG terminal

Published by , Editorial Assistant
Tanks and Terminals,

Technip has been awarded a Master Services Agreement (MSA) by SCT&E LNG, Inc. for their proposed 12 million tpy LNG export terminal located on Monkey Island, in Cameron Parish, Louisiana, USA.

The MSA will be utilised to execute engineering services necessary to develop the project including the front end engineering design (FEED) and supporting the Federal Energy Regulatory Commission (FERC) process.

The total liquefaction capacity for the SCT&E LNG project is 12 million tpy and will be achieved through three identical 4 million tpy natural gas liquefaction trains, with the necessary utilities, storage, and marine facilities.

Technip’s operating centre in Houston, Texas, USA, will execute the contract.

Harvey Vigneault, Technip North America’s Chief Operating Officer for the Onshore Business Unit, stated, “We are very proud to have been selected to support SCT&E LNG in their significant project venture. Our experienced team of LNG and project professionals will utilise their extensive experience and expertise to place the Monkey Island LNG project in the best position moving forward. This award will add to Technip’s depth of recent projects the company has participated in along the US Gulf Coast region, as well as strengthen its longstanding leadership position in LNG projects globally.”

Greg Michaels, Chairman and CEO of SCT&E LNG, added, “Technip has over 50 years of LNG experience, which includes the first baseload LNG liquefaction project. Overall, their extensive experience, especially in recent US Gulf Coast LNG projects, and their assigned project team were key factors in our decision to select Technip. They are a great addition to our project, and their involvement supports our business model of only working with proven and experienced LNG contractors.”

Adapted from press release by Francesca Brindle

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