ABSTRACT
With the rise of the Fused Deposition Modelling (FDM) industry, a better understanding of the relationship between FDM process parameters and mechanical behaviour —especially tensile behaviour —of designed parts is needed to enable development of industry specifications. To optimise and control the deposition process, modelling and predicting the mechanical behaviour of a manufactured part under various process parameters is required. Existing numerical modelling approaches either require input of extensive experimental data or lack cross-validation. In this paper, the mechanical behaviour of polylactic acid manufactured parts under tensile conditions was studied both experimentally and numerically, and the effects of printing pattern and infill density on ultimate tensile strength (UTS)-weight ratio and the modulus of elasticity were evaluated. The experimental results revealed that minimising air gaps and using a triangular infill pattern are beneficial for obtaining a good UTS/weight ratio. Of all the specimens considered, the 20% triangular pattern had the highest UTS/weight ratio. The numerical investigation revealed that the meso-structure approach described in this paper can be used to predict the modulus of elasticity and the breaking point, and does not require input from the unidirectional specimen stress-strain curves. Finally, the meso-structure numerical model and artificial neural network were used to construct a knowledge-based library that can predict the modulus of elasticity of FDM manufactured polylactic acid with three infill patterns and any infill density with an average prediction error of 14.80%.
Acknowledgement
The authors acknowledge Texas A&M High Performance Research Computing for providing software support for our numerical simulation. We would also like to thank Dr. Terry Creasy and Dr. Alex (Gwo-Ping) Fang for using tensile testing machines of their labs.
Disclosure statement
No potential conflict of interest was reported by the author(s).
Additional information
Notes on contributors
Xunfei Zhou
Xunfei Zhou is a Ph.D. candidate and teaching assistant in the Department of Mechanical Engineering at Texas A&M University. His research interests focus on monitoring, modelling, and predicting of the thermal and mechanical behaviours of polymer materials under 3D printing process.
Sheng-Jen Hsieh
Sheng-Jen Hsieh is a professor in the Department of Engineering Technology & Industrial Distribution and serves as a joint professor in Department of Mechanical Engineering at Texas A&M University. His research interests focus on automation, system integration, infrared imaging and stress failure prediction.
Chen-Ching Ting
Chen-Ching Ting is a professor in the Department of Mechanical Engineering of National Taipei University of Technology. His research interests focus on development of biomass energy, thermal devices, noise studies, electromagnetic shielding, and 3D hologram