| Literature DB >> 34300702 |
Vijaya Holla1, Giao Vu1, Jithender J Timothy1, Fabian Diewald2, Christoph Gehlen2, Günther Meschke1.
Abstract
Concrete is a heterogeneous material with a disordered material morphology that strongly governs the behaviour of the material. In this contribution, we present a computational tool called the Concrete Mesostructure Generator (CMG) for the generation of ultra-realistic virtual concrete morphologies for mesoscale and multiscale computational modelling and the simulation of concrete. Given an aggregate size distribution, realistic generic concrete aggregates are generated by a sequential reduction of a cuboid to generate a polyhedron with multiple faces. Thereafter, concave depressions are introduced in the polyhedron using Gaussian surfaces. The generated aggregates are assembled into the mesostructure using a hierarchic random sequential adsorption algorithm. The virtual mesostructures are first calibrated using laboratory measurements of aggregate distributions. The model is validated by comparing the elastic properties obtained from laboratory testing of concrete specimens with the elastic properties obtained using computational homogenisation of virtual concrete mesostructures. Finally, a 3D-convolutional neural network is trained to directly generate elastic properties from voxel data.Entities:
Keywords: concrete; machine learning; mesoscale; modelling; virtual mesostructure
Year: 2021 PMID: 34300702 DOI: 10.3390/ma14143782
Source DB: PubMed Journal: Materials (Basel) ISSN: 1996-1944 Impact factor: 3.623