TY - JOUR
T1 - In-situ residual stress mitigation of laser powder bed fusion Ti-6.5Al-2Zr-1Mo-1V using an active learning framework
AU - Xu, Wei
AU - Jiang, Yu
AU - Ran, Xing
AU - Zhu, Xiangyu
AU - Du, Zhiheng
AU - Liu, Pengzhi
AU - Zhang, Xiaohang
AU - Wang, Zhe
AU - Xu, Shun
AU - Lu, Xin
N1 - Publisher Copyright:
© 2026
PY - 2026/12/20
Y1 - 2026/12/20
N2 - Titanium (Ti) alloys fabricated by laser powder bed fusion (LPBF) often suffer from high residual stress (RS), which in turn increases manufacturing time and cost due to the need for post-processing treatment. In this study, an active learning framework, demonstrated using Ti‑6.5Al‑2Zr‑1Mo‑1 V (TA15) alloy, was developed to simultaneously minimize RS and deformation while ensuring low porosity. Seven machine learning algorithms were evaluated systematically, and among them, gradient-boosted decision trees, LightGBM, and eXtreme gradient boosting were found to give the most accurate predictions for RS, porosity, and deformation, respectively. Then, the optimized models were coupled with Non‑dominated Sorting Genetic Algorithm III and an active learning framework. This combined approach led to a notable drop in the Z reduction rate to 3.4% after four iterations. Microstructure of the as‑built (AB) sample using the optimization parameter (OP) exhibited finer α′-martensitic laths (0.619 ± 0.012 vs. 0.704 ± 0.009 μm), lower kernel average misorientation (0.210 ± 0.004 vs. 0.450 ± 0.006), and more homogeneous stress distributions compared with the sample fabricated using the machine‑recommended parameter (MP). This resulted in an enhanced mechanical performance, namely the OP-AB sample achieving a tensile strength of 1315.8 ± 30.5 MPa, an elongation of 7.7% ± 0.2%, an impact toughness of 27.2 ± 0.7 J/cm2, and a fracture toughness of 64.7 ± 1.5 MPa m1/2, matching or surpassing those of the stress-relieved sample fabricated using the MP. Furthermore, an aerospace backplate was fabricated using the OP parameter, and the result indicated that a 43.1% reduction in maximum RS and a 62.8% decrease in distortion were achieved. Taken together, this work establishes a data-driven optimization strategy for LPBF-ed Ti alloys that achieves in-situ stress mitigation without post-processing, facilitating broader industrial adoption of the proposed data-driven optimization strategy.
AB - Titanium (Ti) alloys fabricated by laser powder bed fusion (LPBF) often suffer from high residual stress (RS), which in turn increases manufacturing time and cost due to the need for post-processing treatment. In this study, an active learning framework, demonstrated using Ti‑6.5Al‑2Zr‑1Mo‑1 V (TA15) alloy, was developed to simultaneously minimize RS and deformation while ensuring low porosity. Seven machine learning algorithms were evaluated systematically, and among them, gradient-boosted decision trees, LightGBM, and eXtreme gradient boosting were found to give the most accurate predictions for RS, porosity, and deformation, respectively. Then, the optimized models were coupled with Non‑dominated Sorting Genetic Algorithm III and an active learning framework. This combined approach led to a notable drop in the Z reduction rate to 3.4% after four iterations. Microstructure of the as‑built (AB) sample using the optimization parameter (OP) exhibited finer α′-martensitic laths (0.619 ± 0.012 vs. 0.704 ± 0.009 μm), lower kernel average misorientation (0.210 ± 0.004 vs. 0.450 ± 0.006), and more homogeneous stress distributions compared with the sample fabricated using the machine‑recommended parameter (MP). This resulted in an enhanced mechanical performance, namely the OP-AB sample achieving a tensile strength of 1315.8 ± 30.5 MPa, an elongation of 7.7% ± 0.2%, an impact toughness of 27.2 ± 0.7 J/cm2, and a fracture toughness of 64.7 ± 1.5 MPa m1/2, matching or surpassing those of the stress-relieved sample fabricated using the MP. Furthermore, an aerospace backplate was fabricated using the OP parameter, and the result indicated that a 43.1% reduction in maximum RS and a 62.8% decrease in distortion were achieved. Taken together, this work establishes a data-driven optimization strategy for LPBF-ed Ti alloys that achieves in-situ stress mitigation without post-processing, facilitating broader industrial adoption of the proposed data-driven optimization strategy.
KW - Active learning
KW - Laser powder bed fusion
KW - Multi-objective optimization
KW - Residual stress
UR - https://www.scopus.com/pages/publications/105036303879
U2 - 10.1016/j.jmst.2026.02.052
DO - 10.1016/j.jmst.2026.02.052
M3 - Article
AN - SCOPUS:105036303879
SN - 1005-0302
VL - 275
SP - 212
EP - 223
JO - Journal of Materials Science and Technology
JF - Journal of Materials Science and Technology
ER -