Two-way design of alloys for advanced ultra supercritical plants based on machine learning

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review

40 Scopus Citations
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Author(s)

  • Xiaobing Hu
  • Jincheng Wang
  • Yanyan Wang
  • Junjie Li
  • Yingying Dang
  • Yuefeng Gu

Detail(s)

Original languageEnglish
Pages (from-to)331-339
Journal / PublicationComputational Materials Science
Volume155
Online published7 Sept 2018
Publication statusPublished - Dec 2018
Externally publishedYes

Abstract

Materials for advanced ultra-supercritical (A-USC) power plants with steam temperatures of 700 °C and above are extremely needed in order to achieve high efficiency and low CO2 emissions. Alloy design based on machine learning is of great importance to explore the space to decide connections between compositions and performances. In this work, we employed an artificial neural network (ANN) in the machine learning framework to compete a two-way design which is defined by predicting the target properties and designing alloys over the dataset consisted of experimental data. Combined with Genetic Algorithm (GA), the ANN model was optimized to improve the accuracy over 98% by training and testing the full dataset. Meanwhile, the model can find the global optimization values of two performances: yield strength and creep rupture life eventually. With a true accuracy of over 90%, we designed a group of compositions of Ni based superalloy to meet the requirements of microstructures and properties for A-USC plants. Further experimental validation was also conducted, which proved that our ANN model optimized by GA can be used to predict and design superalloys for A-USC.

Research Area(s)

  • Alloy design, Artificial neural network, Genetic algorithm, Machine learning, Ultra supercritical materials

Citation Format(s)

Two-way design of alloys for advanced ultra supercritical plants based on machine learning. / Hu, Xiaobing; Wang, Jincheng; Wang, Yanyan et al.
In: Computational Materials Science, Vol. 155, 12.2018, p. 331-339.

Research output: Journal Publications and ReviewsRGC 21 - Publication in refereed journalpeer-review