研究目的
To develop a Bayesian network that predicts the quality of parts manufactured using selective laser melting (SLM) by relating process parameters to part quality characteristics, aiming to manufacture parts right the first time.
研究成果
A Bayesian network with continuous nodes was successfully designed to relate SLM process parameters and part quality, trained using literature data, and validated with experimental data. The network showed the ability to learn the behavior of a new SLM machine with a very small number of test prints, providing predictions within a close range of true values. The method developed for checking observation reasonableness using an ??-dimensional convex hull was effective. The research addresses key industrial challenges in AM, including reducing the time to determine optimal process parameters, organizing relevant knowledge, quantifying machine variability, and facilitating knowledge transfer to new staff.
研究不足
The study did not directly consider several important process parameters such as laser type, spot size, preheating, and powder diameter, which could improve prediction accuracy if included. The current implementation deals only with bulk properties and does not predict geometrical accuracy and geometric tolerances.