Application of Machine Learning in Predicting Quality Parameters in Metal Material Extrusion (MEX/M)
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Additive manufacturing processes such as the material extrusion of metals (MEX/M) enable the production of complex and functional parts that are not feasible through traditional manufacturing methods. However, achieving high-quality MEX/M parts require significant experimental and financial investments for suitable parameter development. In response, this study explores the application of machine learning (ML) to predict the surface roughness and density in MEX/M components. The various models are trained with experimental data using input parameters such as layer thickness, print velocity, infill, overhang angle, and sinter profile enabling a precise predictions of surface roughness and density. The various ML models demonstrate an accuracy up to 97 % after training. In conclusion, this research showcases the potential of ML in enhancing the efficiency in control over component quality during the design phase, addressing challenges in metallic additive manufacturing, and facilitating exact control and optimization of the MEX/M process, especially for complex geometrical structures.