Author:
Park Jeong Min,Jung Jaimyun,Lee Seungyeon,Park Haeum,Kim Yeon Woo,Yu Ji-Hun
Abstract
In order to predict the process window of laser powder bed fusion (LPBF) for printing metallic components, the calculation of volumetric energy density (VED) has been widely calculated for controlling process parameters. However, because it is assumed that the process parameters contribute equally to heat input, the VED still has limitation for predicting the process window of LPBF-processed materials. In this study, an explainable machine learning (xML) approach was adopted to predict and understand the contribution of each process parameter to defect evolution in Ti alloys in the LPBF process. Various ML models were trained, and the Shapley additive explanation method was adopted to quantify the importance of each process parameter. This study can offer effective guidelines for fine-tuning process parameters to fabricate high-quality products using LPBF.
Funder
Korean Institute of Materials Science
Korea Institute of Machinery and Materials
Ministry of Trade, Industry, and Energy
Publisher
The Korean Powder Metallurgy & Materials Institute