Litcius/Paper detail

Prediction of tensile strength in fused deposition modeling process using artificial neural network technique

Karthic Manoharan, K. Chockalingam, S. Shankar Ram

2020AIP conference proceedings20 citationsDOI

Abstract

Fused deposition modeling (FDM) has many different levels of parameters hence prediction method is required for FDM users. The main aim of this paper is to predict the mechanical strength of the components before fabrication of FDM process. In this paper, the most influenced FDM process parameters of Layer thickness, Infill density, print speed, temperature and build orientation were considered for prediction of tensile strength of the fabricated part. The tensile test specimen (ASTM-D638) was fabricated by FDM process with PLA (Polylactic Acid) material, based on the central composite design. The actual tensile strength values were obtained by conducting a test on Universal Testing Machine (UTM) for the PLA material. The results data were used to develop the mathematical models for the prediction of tensile strength of fabricated part from response surface methodology (RSM) and analysis of variance (ANOVA). Similarly, ANN tool was used to predict the tensile strength of the specimen with the aid of 33 experiments and result data. The predicted values from the results of RSM, ANN, ANOVA were compared with the actual tensile strength. The ANN technique gives the minimum value of percentage deviation in Error (1-2%).

Topics & Concepts

Ultimate tensile strengthFused deposition modelingResponse surface methodologyMaterials scienceComposite materialArtificial neural networkDesign of experimentsPolylactic acidTensile testingUniversal testing machineProcess variableComposite numberStructural engineeringProcess (computing)Computer scienceMathematicsMachine learningEngineeringPolymerStatistics3D printingOperating systemAdditive Manufacturing and 3D Printing TechnologiesManufacturing Process and OptimizationAdditive Manufacturing Materials and Processes