Improving the Interpretability of Data-Driven Models for Additive Manufacturing Processes Using Clusterwise Regression

被引:1
|
作者
Mattera, Giulio [1 ]
Piscopo, Gianfranco [2 ]
Longobardi, Maria [2 ]
Giacalone, Massimiliano [3 ]
Nele, Luigi [1 ]
机构
[1] Univ Naples Federico II, Dept Chem Mat & Prod Engn, I-80125 Naples, Italy
[2] Univ Naples Federico II, Dept Math & Applicat Renato Caccioppoli, I-80125 Naples, Italy
[3] Univ Campania Luigi Vanvitelli, Dept Econ, I-81043 Capua, CE, Italy
关键词
clustering regression; multivariate regression; applied statistics; additive manufacturing; neural networks; machine learning; WIRE; FRAMEWORK; DEFECTS;
D O I
10.3390/math12162559
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Wire Arc Additive Manufacturing (WAAM) represents a disruptive technology in the field of metal additive manufacturing. Understanding the relationship between input factors and layer geometry is crucial for studying the process comprehensively and developing various industrial applications such as slicing software and feedforward controllers. Statistical tools such as clustering and multivariate polynomial regression provide methods for exploring the influence of input factors on the final product. These tools facilitate application development by helping to establish interpretable models that engineers can use to grasp the underlying physical phenomena without resorting to complex physical models. In this study, an experimental campaign was conducted to print steel components using WAAM technology. Advanced statistical methods were employed for mathematical modeling of the process. The results obtained using linear regression, polynomial regression, and a neural network optimized using the Tree-structured Parzen Estimator (TPE) were compared. To enhance performance while maintaining the interpretability of regression models, clusterwise regression was introduced as an alternative modeling technique along with multivariate polynomial regression. The results showed that the proposed approach achieved results comparable to neural network modeling, with a Mean Absolute Error (MAE) of 0.25 mm for layer height and 0.68 mm for layer width compared to 0.23 mm and 0.69 mm with the neural network. Notably, this approach preserves the interpretability of the models; a further discussion on this topic is presented as well.
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页数:18
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