Publication | Closed Access
A Transfer Learning-Based Multi-Fidelity Point-Cloud Neural Network Approach for Melt Pool Modeling in Additive Manufacturing
38
Citations
54
References
2021
Year
EngineeringPhysic Aware Machine LearningMelt PoolMechanical EngineeringNumerical SimulationMelt Pool ModelingComputer EngineeringMaterial SimulationMetallic Additive ManufacturingModeling And SimulationComputer-aided DesignManufacturing EngineeringAdvanced ManufacturingMetal ProcessingMultiscale Modeling
Abstract Melt pool modeling is critical for model-based uncertainty quantification (UQ) and quality control in metallic additive manufacturing (AM). Finite element (FE) simulation for thermal modeling in metal AM, however, is tedious and time-consuming. This paper presents a multifidelity point-cloud neural network method (MF-PointNN) for surrogate modeling of melt pool based on FE simulation data. It merges the feature representations of the low-fidelity (LF) analytical model and high-fidelity (HF) FE simulation data through the theory of transfer learning (TL). A basic PointNN is first trained using LF data to construct a correlation between the inputs and thermal field of analytical models. Then, the basic PointNN is updated and fine-tuned using the small size of HF data to build the MF-PointNN. The trained MF-PointNN allows for efficient mapping from input variables and spatial positions to thermal histories, and thereby efficiently predicts the three-dimensional melt pool. Results of melt pool modeling of electron beam additive manufacturing (EBAM) of Ti-6Al-4V under uncertainty demonstrate the efficacy of the proposed approach.
| Year | Citations | |
|---|---|---|
Page 1
Page 1