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Meeting 2024 TMS Annual Meeting & Exhibition
Symposium Accelerated Discovery and Insertion of Next Generation Structural Materials
Presentation Title Machine Learning and CALPHAD Assisted Design of High Performance Structural High Entropy Alloys
Author(s) Joshua Berry, Yunus Azakli, Matthew Turton, Olivier M.D.M. Messe, Iain Todd, Katerina A. Christofidou
On-Site Speaker (Planned) Joshua Berry
Abstract Scope High-Entropy Alloys (HEAs) present an opportunity for the design and development of structural alloys due to the potential to tailor their mechanical and structural properties. Machine learning is a powerful computational tool that can streamline exploration of the HEA compositional space, locating suitable alloy compositions to fulfil the required design constraints. Conventional applications of machine learning to HEA design problems focus on the search for single-phase solid solutions. In contrast, here we utilise a machine learning approach, assisted by CALPHAD, to design for FCC based multiphase HEAs, with subsequent in-situ carbide reinforcement to suppress formation of embrittling intermetallic phases and increase alloy hardness. A second use case of BCC solid solution alloys for fusion applications will also be discussed. Experimental analysis of the microstructural and mechanical properties of the downselected alloys will be presented. This work was supported by Oerlikon AM Europe GmbH, EPSRC UK [EP/S022635/1] and SFI [18/EPSRC-CDT/3584].
Proceedings Inclusion? Planned:
Keywords High-Entropy Alloys, Machine Learning,

OTHER PAPERS PLANNED FOR THIS SYMPOSIUM

Accelerated Computational Insertion of Structural Materials
Accelerating Materials Discovery of HEA’s through Constraint Based High Throughput Design, Synthesis and Batch Bayesian Optimization Framework
Amorphous to Crystalline: High-throughput Thermal Stability Investigation on IV- and V- group Refractory High-entropy Alloy Systems
An Experimental High Throughput to High Fidelity Study Towards Discovering Al-Cr Containing Corrosion-resistant Compositionally Complex Alloys
Computational Design of Complex Concentrated Alloys for Nuclear Applications
Design of Alloys Resistant to Molten Salt Corrosion via Machine Learning and Optimization Algorithms
Energy Absorption Properties of Filled and Unfiled Lattice Materials under Impact Loading
High-throughput Exploration of Nanotwin Synthesis Domains
High Throughput Exploration and Optimization of the Mechanical Properties of FCC Complex Concentrated Alloys for Extreme Conditions
Interoperable Batch Bayesian Optimization Techniques for Efficient Property Discovery of Metals
Laser-scanning of Arc-melted Al Alloys: Are They Representative of Additively Manufactured Ones
Machine Learning-CALPHAD Assisted Design of L12-strengthened Ni-Al-Co-Cr-Fe-Ti Complex Concentrated Superalloy for Multi-property Optimization
Machine Learning and CALPHAD Assisted Design of High Performance Structural High Entropy Alloys
Navigating the BCC-B2 Refractory Alloy Space: Stability and Thermal Processing with Ru-B2 Precipitates
Novel High-temperature Zirconium Alloys for Fusion Applications
Physics-informed Creep Rupture Life Modeling of High Temperature Alloys for Energy Applications
Prevention of Strain Age Cracking in Additively Manufactured, High-temperature Superalloys

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