TY - JOUR
T1 - Innovative data-driven design of titanium bimetal with superior strength-ductility synergy
AU - Li, Shan
AU - Luo, Hang
AU - Hao, Pengfei
AU - Xu, Shun
AU - Yao, Jiahao
AU - Jin, Fusheng
AU - Fan, Qunbo
AU - Yang, Lin
N1 - Publisher Copyright:
© 2025 Elsevier B.V.
PY - 2025/9/10
Y1 - 2025/9/10
N2 - To overcome the challenge of simultaneously achieving high-strength bonding and coordinated deformation in titanium bimetals, this study proposes an innovative data-driven framework integrating machine learning (ML) and genetic algorithm (GA). A design criterion was established based on (1) complementary room-temperature properties and (2) minimized high-temperature strength mismatch between the high-strength (HS) and high-ductility (HD) constituents. A comprehensive dataset of 139,822 samples was constructed, covering key alloying elements (V, Al, Cu, Mo, Cr, Fe, Nb, Sn, Zr, C, O, B). The multilayer perceptron (MLP) demonstrated superior predictive accuracy (R2 = 0.9077, MSE = 0.0923) among four ML models. The MLP-GA coupling enabled the inverse design of optimal compositions and processing parameters. The fabricated HS/HD bimetal, produced via electron beam welding and hot forging, exhibited excellent deformation compatibility (evidenced by symmetrical “drum-shaped” morphology). After heat treatment (820 ℃/1 h/AC-510 ℃/6 h/AC), the interface achieved a bonding strength of 777.5 MPa while maintaining constituent properties, with the HS alloy reaching 1338.7 MPa UTS and the HD alloy showing 21.81 % elongation. This work establishes a reliable ML-GA co-design methodology for high-performance titanium bimetals, demonstrating a paradigm shift from trial-and-error to intelligent design in advanced materials development.
AB - To overcome the challenge of simultaneously achieving high-strength bonding and coordinated deformation in titanium bimetals, this study proposes an innovative data-driven framework integrating machine learning (ML) and genetic algorithm (GA). A design criterion was established based on (1) complementary room-temperature properties and (2) minimized high-temperature strength mismatch between the high-strength (HS) and high-ductility (HD) constituents. A comprehensive dataset of 139,822 samples was constructed, covering key alloying elements (V, Al, Cu, Mo, Cr, Fe, Nb, Sn, Zr, C, O, B). The multilayer perceptron (MLP) demonstrated superior predictive accuracy (R2 = 0.9077, MSE = 0.0923) among four ML models. The MLP-GA coupling enabled the inverse design of optimal compositions and processing parameters. The fabricated HS/HD bimetal, produced via electron beam welding and hot forging, exhibited excellent deformation compatibility (evidenced by symmetrical “drum-shaped” morphology). After heat treatment (820 ℃/1 h/AC-510 ℃/6 h/AC), the interface achieved a bonding strength of 777.5 MPa while maintaining constituent properties, with the HS alloy reaching 1338.7 MPa UTS and the HD alloy showing 21.81 % elongation. This work establishes a reliable ML-GA co-design methodology for high-performance titanium bimetals, demonstrating a paradigm shift from trial-and-error to intelligent design in advanced materials development.
KW - Bonding interface
KW - Genetic algorithm
KW - Machine learning
KW - Mechanical property
KW - Titanium bimetal
UR - http://www.scopus.com/pages/publications/105013115668
U2 - 10.1016/j.jallcom.2025.183004
DO - 10.1016/j.jallcom.2025.183004
M3 - Article
AN - SCOPUS:105013115668
SN - 0925-8388
VL - 1039
JO - Journal of Alloys and Compounds
JF - Journal of Alloys and Compounds
M1 - 183004
ER -