About this Abstract |
Meeting |
2024 TMS Annual Meeting & Exhibition
|
Symposium
|
Additive Manufacturing Modeling, Simulation and Machine Learning
|
Presentation Title |
F-75: Some Guidelines for the Use of Machine Learning in Metal AM Process Parameter Development |
Author(s) |
Najmeh Samadiani, Dayalan Gunasegaram |
On-Site Speaker (Planned) |
Dayalan Gunasegaram |
Abstract Scope |
The multi-dimensional space occupied by process parameters in metal additive manufacturing (AM) justifies the use of machine learning (ML) algorithms for parameter optimization. Research reported in this area has steadily increased in recent years. The publications showcased new ML models which studied the process parameters’ influence on part structure, process signature, property, and performance. These models can help formulate process maps comprising optimum permutations of processing parameters for any given part geometry/machine combination. While several improvements have been gradually applied to the ML methods used, there is still room for further enhancements in relation to data-related and ML model-related issues. In this talk, we discuss how these may be addressed by incorporating data science-based solutions. |
Proceedings Inclusion? |
Planned: |
Keywords |
Additive Manufacturing, Machine Learning, Process Technology |