Content area
Real-time long-horizon temperature prediction in wire arc additive manufacturing is critical for process control and quality assurance. However, finite element methods are computationally expensive, and the existing data-driven models suffer from error accumulation and poor adaptability. Here we propose a physics-informed geometric recurrent neural network that integrates geometric characteristics and physical constraints, captures spatiotemporal characteristics via convolutional long short-term memory cells, and enforces physical consistency through hard-encoding initial/boundary conditions and physics-informed loss function. The model can predict the temperature field for future 1.25 s based on current 1.25 s data, and has also been evaluated for more long-horizon predictions. Transfer learning was used to enhance the model’s efficiency in practical applications. Results demonstrate that the proposed model achieves 4.5−13.9% maximum prediction error in simulations and experimental data. Including geometric characteristics and physical information reduces maximum error by about 1%, while the integrated model lowers it by 4%. Furthermore, transfer learning reduces the training time by approximately 50% while achieving the same loss level.
Real-time long-horizon temperature prediction in metal additive manufacturing is critical for process control and quality assurance. Mingxuan Tian and colleagues propose a physics-informed machine learning model to predict temperature field for future 1.25 s.
Details
Finite element method;
Finite volume method;
Accuracy;
Fluid dynamics;
Parameter identification;
Quality assurance;
Boundary conditions;
Data processing;
Manufacturing;
Machine learning;
Low carbon steel;
Additive manufacturing;
Efficiency;
Simulation;
Physics;
Partial differential equations;
Residual stress;
Temperature;
Neural networks;
Process controls;
Recurrent neural networks;
Data collection;
Finite element analysis;
Errors;
Real time
; Liu, Tao 1 ; Li, Mengjiao 1 ; Ding, Donghong 2
; Zhao, Jianping 3 1 Nanjing Tech University, School of Mechanical and Power Engineering, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210)
2 Nanjing Tech University, School of Mechanical and Power Engineering, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210); Nanjing Tech University, Institute of Reliability centered Manufacturing, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210); Nanjing Tech University, Jiangsu Provincial Key Laboratory of Energy Power Manufacturing Equipment and Reliability Technology, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210)
3 Nanjing Tech University, School of Mechanical and Power Engineering, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210); Nanjing Tech University, Jiangsu Provincial Key Laboratory of Energy Power Manufacturing Equipment and Reliability Technology, Nanjing, China (GRID:grid.412022.7) (ISNI:0000 0000 9389 5210)