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Erschienen in: Rare Metals 2/2024

15.11.2023 | Original Article

Data-driven mapping-relationship mining between hardness and mechanical properties of dual-phase titanium alloys via random forest and statistical analysis

verfasst von: Hai-Chao Gong, Qun-Bo Fan, Hong-Mei Zhang, Xing-Wang Cheng, Wen-Qiang Xie, Kai Chen, Lin Yang, Jun-Jie Zhang, Bing-Qiang Wei, Shun Xu

Erschienen in: Rare Metals | Ausgabe 2/2024

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Abstract

In order to accelerate the research on the property optimization of titanium alloy based on high-throughput methods, it is necessary to reveal the relationship between hardness and other mechanical properties which is still unclear. In this work, taking Ti20C alloy as research object, almost all the microstructure of dual-phase titanium alloys were covered by traversing over 100 heat treatment schemes. Then, massive experiments including microstructure characterization and performance test were conducted, obtaining 51,590 pieces of microstructure data and 3591 pieces of mechanical property data. Subsequently, based on large-scale data-driven technology, the quantitative mapping relationship between hardness and other mechanical properties was deeply discussed. The results of random forest models showed that the correlation between hardness (H) and Charpy impact energy (Ak) (or elongation, A) was hardly dependent on the microstructure types, while the relationship between H and tensile strength (Rm) (or yield strength, Rp0.2) was highly dependent on microstructure types. Specifically, combined with statistical analysis, it was found that the relationship between H and Ak (or A) were negatively linear. Interestingly, the relationship between H and strength was positively linear for equiaxed microstructure, and strength was linked to d−1/2 (d, equivalent circle diameter) of α-grains in the form of classical Hall–Petch formula; but for other microstructures, the relationships were quadratic. Furthermore, the above rules were nearly the same in the rolling direction and transverse direction. Finally, a "four-quadrant partition map" between H and Rp0.2/Rm was established as a versatile material-screening tool, which can provide guidance for on-demand selection of titanium alloys.

Graphical abstract

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Literatur
[19]
[30]
[35]
Zurück zum Zitat Tran MK, Panchal S, Chauhan V, Brahmbhatt N, Mevawalla A, Fraser R, Fowler M. Python-based scikit-learn machine learning models for thermal and electrical performance prediction of high-capacity lithium-ion battery. Int J Energy Res. 2022;46(2):786. https://doi.org/10.1002/er.7202.CrossRef Tran MK, Panchal S, Chauhan V, Brahmbhatt N, Mevawalla A, Fraser R, Fowler M. Python-based scikit-learn machine learning models for thermal and electrical performance prediction of high-capacity lithium-ion battery. Int J Energy Res. 2022;46(2):786. https://​doi.​org/​10.​1002/​er.​7202.CrossRef
Metadaten
Titel
Data-driven mapping-relationship mining between hardness and mechanical properties of dual-phase titanium alloys via random forest and statistical analysis
verfasst von
Hai-Chao Gong
Qun-Bo Fan
Hong-Mei Zhang
Xing-Wang Cheng
Wen-Qiang Xie
Kai Chen
Lin Yang
Jun-Jie Zhang
Bing-Qiang Wei
Shun Xu
Publikationsdatum
15.11.2023
Verlag
Nonferrous Metals Society of China
Erschienen in
Rare Metals / Ausgabe 2/2024
Print ISSN: 1001-0521
Elektronische ISSN: 1867-7185
DOI
https://doi.org/10.1007/s12598-023-02445-3

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