Knowledge-based bidirectional thermal variable modelling for directed energy deposition additive manufacturing

Date published

2024-09-05

Free to read from

2024-09-19

Supervisor/s

Journal Title

Journal ISSN

Volume Title

Publisher

Informa UK Limited

Department

Course name

Type

Article

ISSN

1745-2759

Format

Citation

Qin J, Taraphdar P, Sun Y, et al., (2024) Knowledge-based bidirectional thermal variable modelling for directed energy deposition additive manufacturing. Virtual and Physical Prototyping, Volume 19, September 2024, Article number e2397008-.

Abstract

Directed energy deposition additive manufacturing (DED-AM) has gained significant interest in producing large-scale metallic structural components. In this paper, a knowledge-based machine learning (ML) approach, combining both physics-based simulation and data-driven modelling, is proposed for a study on thermal variables of DED-AM. This approach enables both forward and backward predictions, which breaks down the barriers between the basic process parameters and key process attributes. Process knowledge plays a critical role to enable the prediction and enhance the accuracy in both prediction directions. The proposed ML approach successfully predicted the thermal variables of wire arc based DED-AM for forward modelling and the process parameters for backward modelling, typically within 7% errors. This approach can be further generalised as a powerful modelling tool for design, control, and evaluation of DED-AM processes regarding build geometry and properties, as well as an essential constituent element in a digital twin of a DED-AM system.

Description

Software Description

Software Language

Github

Keywords

4014 Manufacturing Engineering, 40 Engineering, Machine Learning and Artificial Intelligence, 4016 Materials engineering, 4017 Mechanical engineering

DOI

Rights

Attribution 4.0 International

Funder/s

Engineering and Physical Sciences Research Council
The authors would like to express their gratitude to Engineering and Physical Sciences Research Council (EPSRC) (EP/ R027218/1, New Wire Additive Manufacturing) for supporting aspects of this research.

Relationships

Relationships

Resources