A study on using image based machine learning methods to develop the surrogate models of stamp forming simulations
This work addresses the need for more effective surrogate models in metal forming design optimization, offering a domain-specific improvement over existing methods.
The paper tackled the problem of low accuracy and generalizability in surrogate models for stamp forming simulations by proposing an image-based machine learning method (Res-SE-U-Net), which outperformed a traditional scalar-based method (MLP) in accuracy, generalizability, robustness, and informativeness.
In the design optimization of metal forming, it is increasingly significant to use surrogate models to analyse the finite element analysis (FEA) simulations. However, traditional surrogate models using scalar based machine learning methods (SBMLMs) fall in short of accuracy and generalizability. This is because SBMLMs fail to harness the location information of the simulations. To overcome these shortcomings, image based machine learning methods (IBMLMs) are leveraged in this paper. The underlying theory of location information, which supports the advantages of IBMLM, is qualitatively interpreted. Based on this theory, a Res-SE-U-Net IBMLM surrogate model is developed and compared with a multi-layer perceptron (MLP) as a referencing SBMLM surrogate model. It is demonstrated that the IBMLM model is advantageous over the MLP SBMLM model in accuracy, generalizability, robustness, and informativeness. This paper presents a promising methodology of leveraging IBMLMs in surrogate models to make maximum use of info from FEA results. Future prospective studies that inspired by this paper are also discussed.