Machine learning and data analytics for design and manufacturing of high-entropy materials exhibiting mechanical or fatigue properties of interest

Baldur Steingrimsson, Xuesong Fan, Anand Kulkarni, Michael C. Gao, Peter K. Liaw

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

2 Scopus citations

Abstract

This chapter presents an innovative framework for the application of machine learning and data analytics for the identification of alloys or composites exhibiting certain desired properties of interest. The main focus is on alloys and composites with large composition spaces for structural materials. Such alloys or composites are referred to as high-entropy materials (HEMs) and are here presented primarily in the context of structural applications. For each output property of interest, the corresponding driving (input) factors are identified. These input factors may include the material composition, heat treatment, manufacturing process, microstructure, temperature, strain rate, environment, or testing mode. The framework assumes the selection of an optimization technique suitable for the application at hand and the data available. Physics-based models are presented, such as for predicting the ultimate tensile strength (UTS) or fatigue resistance. We devise models capable of accounting for physics-based dependencies. We factor such dependencies into the models as a priori information. In case that an artificial neural network (ANN) is deemed suitable for the applications at hand, it is suggested to employ custom kernel functions consistent with the underlying physics, for the purpose of attaining tighter coupling, better prediction, and for extracting the most out of the - usually limited - input data available.

Original languageEnglish
Title of host publicationHigh-Entropy Materials
Subtitle of host publicationTheory, Experiments, and Applications
PublisherSpringer International Publishing
Pages115-238
Number of pages124
ISBN (Electronic)9783030776411
ISBN (Print)9783030776404
DOIs
StatePublished - Jan 3 2022
Externally publishedYes

Keywords

  • "Backward" prediction
  • "Forward" prediction
  • "Inverse" design representation
  • Additive manufacturing
  • Augmented statistical fatigue life model
  • Bayesian inference
  • Data analytics
  • Data curation
  • Fatigue life prediction
  • Feature selection
  • High-entropy material
  • Joint optimization
  • Low-data environment
  • Machine learning
  • Material design
  • Physics-based modeling
  • Reinforcement learning
  • Sequential learning
  • Statistical fatigue life model
  • Statistical regression

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