Prediction of the yield strength of as-cast alloys using the random forest algorithm

Wei Zhang, Peiyou Li, Lin Wang, Xiaoling Fu, Fangyi Wan, Yongshan Wang, Linsen Shu, Long quan Yong

Research output: Contribution to journalArticlepeer-review

11 Scopus citations

Abstract

Yield strength is an important indicator of material mechanical properties, and its prediction and evaluation are crucial for engineering design and material selection. Predicting yield strength can help optimize design, improve the strength of structural materials, and serve as an indicator for material quality control to ensure product quality and performance. This article uses a random forest model to predict the yield strength of 540 as-cast alloys, and selects four evaluation indicators to analyze the model. The yield strength of the alloy was divided into three ranges: low, medium, and high, and the relationship between prediction accuracy and yield-strength range was obtained. The yield strength of four different alloy systems, Ti-Fe-Sn-Nb, Ti-Mo-Sn, Ti-Cu-Co-Zr and Fe-Ni-Co-Cu-Ti, was predicted and experimentally verified. It was found that the random forest algorithm can effectively distinguish the yield strength exhibited by the different alloy systems. By analyzing the importance of characteristic parameters, it was found that four parameters and some main elements play an important role in the accuracy of yield strength prediction. Accurately predicting yield strength can save the cost and time of selecting engineering materials, therefore, this work is of great significance in materials science and engineering applications.

Original languageEnglish
Article number108520
JournalMaterials Today Communications
Volume38
DOIs
StatePublished - Mar 2024

Keywords

  • As-cast metals
  • Prediction accuracy
  • Random forest
  • Yield strength

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