Prediction of Metal Additively Manufactured Bead Geometry Using Deep Neural Network

被引:3
作者
So, Min Seop [1 ]
Mahdi, Mohammad Mahruf [2 ]
Kim, Duck Bong [3 ]
Shin, Jong-Ho [1 ]
机构
[1] Chosun Univ, Dept Ind Engn, Gwangju 61452, South Korea
[2] Tennessee Technol Univ, Dept Elect & Comp Engn, Cookeville, TN 38505 USA
[3] Tennessee Technol Univ, Dept Mfg & Engn Technol, Cookeville, TN 38505 USA
基金
新加坡国家研究基金会; 美国国家科学基金会;
关键词
wire arc additive manufacturing (WAAM); bead geometry; deep neural network (DNN); gas metal arc welding (GMAW); WIRE; DEPOSITION;
D O I
10.3390/s24196250
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Additive Manufacturing (AM) is a pivotal technology for transforming complex geometries with minimal tooling requirements. Among the several AM techniques, Wire Arc Additive Manufacturing (WAAM) is notable for its ability to produce large metal components, which makes it particularly appealing in the aerospace sector. However, precise control of the bead geometry, specifically bead width and height, is essential for maintaining the structural integrity of WAAM-manufactured parts. This paper introduces a methodology using a Deep Neural Network (DNN) model for forecasting the bead geometry in the WAAM process, focusing on gas metal arc welding cold metal transfer (GMAW-CMT) WAAM. This study addresses the challenges of bead geometry prediction by developing a robust predictive framework. Key process parameters, such as the wire travel speed, wire feed rate, and bead dimensions of the previous layer, were monitored using a Coordinate Measuring Machine (CMM) to ensure precision. The collected data were used to train and validate various regression models, including linear regression, ridge regression, regression, polynomial regression (Quadratic and Cubic), Random Forest, and a custom-designed DNN. Among these, the Random Forest and DNN models were particularly effective, with the DNN showing significant accuracy owing to its ability to learn complex nonlinear relationships inherent in the WAAM process. The DNN model architecture consists of multiple hidden layers with varying neuron counts, trained using backpropagation, and optimized using the Adam optimizer. The model achieved mean absolute percentage error (MAPE) values of 0.014% for the width and 0.012% for the height, and root mean squared error (RMSE) values of 0.122 for the width and 0.153 for the height. These results highlight the superior capability of the DNN model in predicting bead geometry compared to other regression models, including the Random Forest and traditional regression techniques. These findings emphasize the potential of deep learning techniques to enhance the accuracy and efficiency of WAAM processes.
引用
收藏
页数:24
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