Neural networks for predicting kerf characteristics of CO2 laser-machined FFF PLA/WF plates

Autor: Konstantinos Ninikas, Nikolaos Fountas, Dimitrios S. Chaidas, Nikolaos Vaxevanidis, Ioannis Kechagias
Rok vydání: 2022
Zdroj: MATEC Web of Conferences. 368:01010
ISSN: 2261-236X
DOI: 10.1051/matecconf/202236801010
Popis: The current work is a follow-up of previous research published by the authors and investigates the effect of CO2 laser cutting with variable cutting parameters of thin 3D printed wood flour mixed with poly-lactic-acid (PLA/WF) plates on kerf angle (KA) and mean surface roughness (Ra). The full factorial experiments previously conducted, followed a custom response surface methodology (RSM) to formulate a continuous search domain for statistical analysis. Cutting direction, standoff distance, travel speed and beam power were the independent process parameters with mixed levels, resulting to a set of 24 experiments. The 24 experiments were repeated three times giving a total of 72 experimental tryouts. The results analyzed using analysis of variance (ANOVA) and regression, to study the synergy and effect of the parameters on the responses. Thereby, several neural network topologies were tested to achieve the best results and find a suitable neural network to correlate inputs and outputs, thus; contributing to related academic research and actual industrial applications.
Databáze: OpenAIRE