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CIMNE scientists received the Bathe Award 2023 for a paper about fluid structure interaction

Aug 21, 2023

The article “A fully Lagrangian formulation for fluid-structure interaction problems with free-surface flows and fracturing solids” coauthored by CIMNE scientists Alejandro Cornejo, Alessandro Franci, Francisco Zárate and Eugenio Oñate has been awarded the Bathe Award 2023 by the Computers & Structures journal as the best article for the period 2021-2022.

The paper aimed at solving highly complex physical phenomena such as wave impacts against civil structures in a fully coupled way. In this regard, it was necessary to model free-surface flows, interaction with solid interfaces, fracturing solids that can experience large displacements and rotations and contact between debris and/or detached blocks.

In order to be able to solve efficiently this challenging multi-physics problem, several Lagrangian approaches were fully coupled for the first time: PFEM for fluids, FEM and damage with element removal for fracturing solids and DEM for modelling debris and frictional contact.

Fluid interaction

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