Institute of Structural Analysis Research Composites Department
Development of a safety cockpit for gliders (CraCpit)

Main research topics in the Composites Department

© FBG / C. Bierwagen
© FBG / C. Bierwagen

The sustainability and reliability of structures is of central importance for mobility and regenerative energy from a technical and economic point of view. Accordingly, understanding the structural and material behavior under different environmental influences (temperature, humidity, etc.) and the ability to predict damage play a key role in the development of lightweight components, reliable systems and the achievement of low electricity generation costs. Physically motivated numerical simulation models are an essential part of the development process of sustainable structures. In order to increase the efficiency of the simulation models and thus expand the area of ​​application, reduction methods and machine learning are used. The Composites department combines the concepts of sustainability, service life and method efficiency. The scientific work is divided into the following main research areas:

Composite Materials

New and detailed simulation models are developed in the Composite Materials group. Material laws and failure models of fiber composites are developed here on different scales from the nano to the meso scale. At the nano-level, atomistic simulation methods are used to model the atomic components by using the molecular dynamics, while at the micro- and meso-level physically motivated constitutive material models are developed and integrated in a finite element framework. The material models take into account  non-linear viscoelasticities, viscoplasticities, damage and various environmental influences.  In addition, the Materials group is increasingly relying on machine learning, which improves our material models and at the same time leads to an increase of efficiency.

Composite Structures

This team is concerned with the stability analysis and dynamic analysis  of slender  and thin-walled structures.  A second theme is the fatigue analysis  of composite structures. Important aspects in this team are probabilistic analysis and reduced order modeling.  

A cyclic simulation of the deep learning model in FEM. The deep learning model was trained using a viscoelastic-viscoplastic material model and implemented in a finite element framework. "Long Short Term Memory Networks" were used to depict the viscoelastic-viscoplastic behavior. cauchy_xx: Cauchy stresses in the X direction
An overview of the implemented "Autonomous Basin Climbing" methodology in an atomistic simulation to bridge the time scale from the atomistic to the experimental scale regarding the moisture diffusion of water in the epoxy resin system. Validation of the diffusion coefficient using experimental data.

Recent research projects

Development of a safety cockpit for gliders (CraCpit)

Led by:  Prof. Dr-Ing habil. Raimund Rolfes
Team:  M.Sc. Christian Rolffs, Dr.-Ing. Sven Scheffler
Year:  2017
Funding:  Federal Ministry for Economic Affairs and Energy – 20E1703D
Duration:  2018-2021