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An active machine learning approach for optimal design of magnesium alloys using Bayesian optimisation

journal contribution
posted on 2024-05-09, 01:38 authored by Marzie GhorbaniMarzie Ghorbani, M Boley, PNH Nakashima, Nick BirbilisNick Birbilis
AbstractIn the pursuit of magnesium (Mg) alloys with targeted mechanical properties, a multi-objective Bayesian optimisation workflow is presented to enable optimal Mg-alloy design. A probabilistic Gaussian process regressor model was trained through an active learning loop, while balancing the exploration and exploitation trade-off via an acquisition function of the upper confidence bound. New candidate alloys suggested by the optimiser within each iteration were appended to the training data, and the performance of this sequential strategy was validated via a regret analysis. Using the proposed approach, the dependency of the prediction error on the training data was overcome by considering both the predictions and their associated uncertainties. The method developed here, has been packaged into a web tool with a graphical user-interactive interface (GUI) that allows the proposed optimal Mg-alloy design strategy to be deployed.

History

Journal

Scientific Reports

Volume

14

Article number

8299

Pagination

1-14

Location

Berlin, Germany

ISSN

2045-2322

eISSN

2045-2322

Language

eng

Publication classification

C1 Refereed article in a scholarly journal

Issue

1

Publisher

Springer

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