研究目的
To propose a model to predict the average surface roughness (Sa) and analyse the effect of related process parameters on laser powder bed fusion (LPBF) selective laser melting (SLM) of Ti-6Al-4V.
研究成果
Results showed that for Ti-6Al-4V alloy printed via LPBF method, heat treatment above the beta transus temperature causes lower surface quality due to formation of some defects such as localized surface melting, balling, unmelted and residual particles. Surface quality decreases at Higher LP and lowers SS because of the Marangoni effect that causes the formation of mush area and increasing the chance of keyholes. Sa is a direct function of HS due to the fact that at larger HS values smaller overlap occurs so the chance of adherence of unmelted particles becomes less. Due to geometric coverage of subsequent layers on former layers, lower PA provides better surface quality. This research showed ANN is an accurate tool to predict the value and trend of Sa when different process and post process parameters are applied.
研究不足
The technical and application constraints of the experiments, as well as potential areas for optimization, are not explicitly mentioned in the provided content.
1:Experimental Design and Method Selection:
A range of process parameters using Taguchi L25 design of experiment (DOE) with five repetitions for each sample has been selected. Then, an artificial neural network (ANN) is applied to the model to predict the value of (arithmetical mean height)/(average surface roughness) (Sa).
2:Sample Selection and Data Sources:
125 samples were printed with different process and post-process parameters including laser power (LP), scan speed (SS), hatch space (HS), pattern angle (PA) and heat treatment (HT).
3:List of Experimental Equipment and Materials:
An SLM Solutions 125HL LPBF machine with maximum laser power 200W equipped with a YLR-Fiber-Laser and minimum spot size 5μm was used. Spherical Ti-6Al-4V powder was used for this research.
4:Experimental Procedures and Operational Workflow:
Samples were printed with different process and post-process parameters. Then surfaces were investigated using non-contact profilometry method and the results were used in an ANN method to develop a predictive model for process parameters.
5:Data Analysis Methods:
The analysis of ‘main effect’ and SN is shown. The best results were obtained by using a 5-layer network 5×4×3×2×1 with Sigmoid transfer function between layers and 50,000 iterations.
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