Skip to main content

 

 

NOVEL MACGREGOR CARGO SYSTEM FOR LARGEST CONTAINERSHIPS

Thursday, September 5, 2019 

MacGregor, part of Cargotec, has designed the cargo system for the world’s largest containership, ‘MSC Gülsün’, which was delivered in July 2019 by South Korea’s Samsung Heavy Industries.

She is 400m long, 61.5m wide and is the first in a series of 11 ultra-large containerships with a capacity of more than 23,000 TEU. Six of the vessels are being built by Samsung Heavy Industries, and the other five by Daewoo Shipbuilding & Marine Engineering.

The system was developed in close collaboration with MSC from an early stage of the project. It fully meets MSC`s operational requirements while maximising the actual cargo intake. At the same time, it provides a great degree of flexibility for the cargo operations and planning process.

"This is an industry-leading cargo system, and the design of the system is very innovative,” said Atte Virta, Senior Naval Architect, MacGregor Cargo Handling. The cargo system design, combined with a 24 container wide ship design, takes MSC Gülsün's total container capacity to 23,756 TEU, which is 1,500 TEUs more than the largest containerships have previously carried.

"By designing an entire cargo system in close collaboration with our customers, we can respond to the market and specific requirements in the best possible way,” said Magnus Sjöberg, SVP MacGregor Cargo Handling.

"As our fleet grows and technology develops, we want to make sure that our strategic investments are focused on maximising the ship´s performance. Through our close cooperation with MacGregor we are able to develop new solutions that are of mutual benefit and help us to grow together,” said Giuseppe Gargiulo Head of Newbuildings, MSC Mediterranean Shipping Company.

Reader Comments (0)

There are currently no comments on this article. Why not be the first and leave your thoughts below.

Leave Your Comment

Please keep your comment on topic, any inappropriate comments may be removed.

Return to index

Web Analytics