Abstract
Additive manufacturing and artificial intelligence techniques, which are important components of Industry 4.0, are frequently used in many areas today. Additive manufacturing methods are divided into seven classes within themselves. The fused deposition method is one of the most preferred methods of additive manufacturing. The part is produced by the layer-by-layer combination of the filament material used on the fused deposition method (FDM) manufacturing table. In the study, tensile samples were produced by using different processing parameters in the FDM method. Tensile samples were tested according to ASTM standards, and a data set was created with the values of tensile strength. The tensile strength values of the material produced using the data set on temperature, velocity, layer properties collected during the material production process were estimated using three different machine learning models. The results showed that using machine learning algorithms, the tensile strength can be predicted with an accuracy of 98,3% by the Partial Least Squares algorithm.