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Artificial neural network applicability in studying hot deformation behaviour of high-entropy alloys

Mohammad Reza Zamani, Hamed Mirzadeh, Mehdi Malekan

2023Materials Science and Technology17 citationsDOI

Abstract

The potentials of artificial neural network (ANN) modelling as a potent machine learning approach for investigating the hot deformation behaviour of high-entropy alloys (HEAs) and multi-principal element alloys during thermomechanical processing are assessed and reviewed. Flow stress of CoCrFeNiMn (FCC Cantor alloy), HfNbTaTiZr (BCC refractory alloy), AlCoCuFeNi, and Al x CoCrFeNi alloys is accurately predicted based on the deformation temperature, strain rate, and strain. Moreover, in comparison with the limited experimental dataset, a significantly larger output dataset can be generated by ANN to gain valuable insights such as prediction of flow stress (and whole dynamic recovery/recrystallisation flow curves), elucidating the microstructural mechanisms such as dynamic precipitation reactions, and obtaining hot working parameters (e.g. deformation activation energy) for different ranges of deformation conditions.

Topics & Concepts

Materials scienceArtificial neural networkHigh entropy alloysDeformation (meteorology)MetallurgyStatistical physicsArtificial intelligenceComposite materialMicrostructureComputer sciencePhysicsHigh Entropy Alloys StudiesAdditive Manufacturing Materials and ProcessesHigh-Temperature Coating Behaviors
Artificial neural network applicability in studying hot deformation behaviour of high-entropy alloys | Litcius