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The Fatigue4Light project launches its web

May 3, 2021

The Fatigue4Light project has just launched its website: https://fatigue4light.eu/

Boosting the use of lightweight materials in Electric Vehicles' chassis through new tests and computer simulation methodologies for electric vehicle chassis weight reduction is the main goal of this EU-funded project. 

Fatigue4Light is a collaborative project with a multidisciplinary team with differential capacities and knowledge in disciplines ranging from materials science, including forming processes and design, computer science and software development for the simulation methodologies, sensors and analytics for the production process, laboratory and industrial validation, testing methodologies, processes and standards and industrial eco-design, as well as innovation and communication experts for maximising the project results.

The consortium of the Fatigue4Light project is formed by 13 partners from Spain, Italy, France and Sweden comprising research organisations, materials developers, part markers and automotive companies.

Fatigue4light

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