|
|
Research Progress on Machine Learning Assisted Mechanics Performance Evaluation of Additively Manufactured Materials and Parts |
WANG Hao1, 2, WANG Baitao1, GAO Shuailong1, LIU Jianrong2, LI Shujun2, JI Haibin2 |
1. University of Shanghai for Science and Technology, Shanghai 200093, China;
2. Institute of Metal Research, Chinese Academy of Sciences, Shenyang 110016, China |
|
|
Abstract With the continuous development of additive manufacturing technology, more and more additively manufactured materials and parts are used in aerospace, automotive manufacturing, medical devices and other fields. However, traditional mechanical property evaluation methods are difficult to effectively assess the complex mechanical properties of additively manufactured materials and parts due to the time-consuming experiments, high cost and limited data volume. Machine learning technology provides a novel and efficient solution for mechanical property evaluation of additively manufactured materials and parts through efficient data processing, multivariate analysis and feature extraction. This paper reviews recent research advances in machine learning for the evaluation of mechanical properties of additively manufactured materials and parts. First, the challenges of additive manufacturing technology in mechanical property evaluation are introduced. Then, specific applications of machine learning in the evaluation of tensile, compressive, fatigue and creep properties as well as fracture toughness are explored. Machine learning methods effectively overcome the limitations of traditional methods by improving prediction accuracy, reducing experimental costs, and accelerating evaluation. Finally, several challenges and pending issues in the application of machine learning in additive manufacturing are enumerated, and future research directions are envisioned.
|
|
|
|
|
|
|
|