Title of article :
Experimental investigation and empirical modelling of FDM process for compressive strength improvement
Author/Authors :
Sood, Anoop K. National Institute of Foundry and Forge Technology - Department of Manufacturing Engineering, India , Ohdar, Raj K. National Institute of Foundry and Forge Technology - Department of Forge Technology, India , Mahapatra, Siba S. National Institute of Technology - Department of Mechanical Engineering, India
Abstract :
Fused deposition modelling (FDM) is gaining distinct advantage in manufacturing industries because of its ability to manufacture parts with complex shapes without any tooling requirement and human interface. The properties of FDM built parts exhibit high dependence on process parameters and can be improved by setting parameters at suitable levels. Anisotropic and brittle nature of build part makes it important to study the effect of process parameters to the resistance to compressive loading for enhancing service life of functional parts. Hence, the present work focuses on extensive study to understand the effect of five important parameters such as layer thickness, part build orientation, raster angle, raster width and air gap on the compressive stress of test specimen. The study not only provides insight into complex dependency of compressive stress on process parameters but also develops a statistically validated predictive equation. The equation is used to find optimal parameter setting through quantum-behaved particle swarm optimization (QPSO). As FDM process is a highly complex one and process parameters influence the responses in a non linear manner, compressive stress is predicted using artificial neural network (ANN) and is compared with predictive equation
Keywords :
Rapid prototyping , Anisotropy , Distortion , ANOVA , Resilient back propagation algorithm , Swarm intelligence
Journal title :
Journal of Advanced Research
Journal title :
Journal of Advanced Research