Wang Xin, Ladinos Pizano Luis Fernando, Sridar Soumya, Sudbrack Chantal, Xiong Wei
Physical Metallurgy and Materials Design Laboratory, Department of Mechanical Engineering and Materials Science, University of Pittsburgh, Pittsburgh, Pennsylvania, USA.
National Energy Technology Laboratory, Albany, Oregon, USA.
Sci Technol Adv Mater. 2024 Apr 25;25(1):2346067. doi: 10.1080/14686996.2024.2346067. eCollection 2024.
Wire-feed additive manufacturing (WFAM) produces superalloys with complex thermal cycles and unique microstructures, often requiring optimized heat treatments. To address this challenge, we present a hybrid approach that combines high-throughput experiments, precipitation simulation, and machine learning to design effective aging conditions for the WFAM Haynes 282 superalloy. Our results demonstrate that the γ' radius is the critical microstructural feature for strengthening Haynes 282 during post-heat treatment compared with the matrix composition and γ' volume fraction. New aging conditions at 770°C for 50 hours and 730°C for 200 hours were discovered based on the machine learning model and were applied to enhance yield strength, bringing it on par with the wrought counterpart. This approach has significant implications for future AM alloy production, enabling more efficient and effective heat treatment design to achieve desired properties.
送丝增材制造(WFAM)生产具有复杂热循环和独特微观结构的高温合金,通常需要进行优化的热处理。为应对这一挑战,我们提出了一种混合方法,该方法结合了高通量实验、析出模拟和机器学习,以设计出适用于WFAM Haynes 282高温合金的有效时效条件。我们的结果表明,与基体成分和γ'体积分数相比,γ'半径是热处理后强化Haynes 282的关键微观结构特征。基于机器学习模型发现了770°C保温50小时和730°C保温200小时的新时效条件,并将其应用于提高屈服强度,使其与锻造材料相当。这种方法对未来增材制造合金的生产具有重要意义,能够实现更高效、有效的热处理设计,以获得所需性能。