ML/AI supported phase-field simulations and alloy design
Handling large data sets and/or a lack of data, while increasing the simulation efficiency
Handling large data sets and/or a lack of data, while increasing the simulation efficiency
In multi-component alloys, the composition dependence of bulk and interface properties forms high-dimensional datasets that grow exponentially with the number of elements, making true multi-component simulations computationally prohibitive. To overcome this challenge, we have successfully applied tensor completion techniques (in collaboration with Prof. L. Delathauwer) and neural networks to efficiently obtain, represent, and utilize Gibbs energies, diffusion mobilities, thermodynamic factors, and atomic mobilities as functions of composition (as for example modeled within the CALPHAD approach) in phase-field simulations. This approach enables us to fully capture composition-dependent properties, allowing for the study of cross-element interactions, complex diffusion behavior, and intricate phase transformation pathways. We also explored the use of neural network models to determine and/or represent other material properties in a phase-field model.
Results obtained in collaboration with Anil Kunwar, Silesian Univerity of Technology, within the joined DIGITALMINERAL laboratory.
The goal is to develop computational tools to study the evolution of multicomponent alloy microstructures in laser additive manufacturing.
Lithium ion batteries (LIBs) are considered as the materials of the future when it comes to the efficient energy storage during utilization of renewable energy technologies. This research involves a combination of approaches linking the microstructure-property and process-kinetics relationship in the different material phases of an electrochemical battery through integrated experiments, computations and artificial intelligence. This projects started on Jan 1, 2025.
Results obtained within the collaboration with Yuan Yuan, Chongqing University
(c) 2025, Nele Moelans. Last update Aug. 2025.