Authors
Yicha Zhang, Ramy Harik, Georges Fadel, Alain Bernard
Journal
Rapid Prototyping Journal, vol. 25, no. 1, 2019.
Abstract
Purpose
For part models with complex shape features or freeform shapes, the existing build orientation determination methods may have issues, such as difficulty in defining features and costly computation. To deal with these issues, this paper aims to introduce a new statistical method to develop fast automatic decision support tools for additive manufacturing build orientation determination.
Design/methodology/approach
The proposed method applies a non-supervised machine learning method, K-Means Clustering with Davies–Bouldin Criterion cluster measuring, to rapidly decompose a surface model into facet clusters and efficiently generate a set of meaningful alternative build orientations. To evaluate alternative build orientations at a generic level, a statistical approach is defined.
Findings
A group of illustrative examples and comparative case studies are presented in the paper for method validation. The proposed method can help production engineers solve decision problems related to identifying an optimal build orientation for complex and freeform CAD models, especially models from the medical and aerospace application domains with much efficiency.
Originality/value
The proposed method avoids the limitations of traditional feature-based methods and pure computation-based methods. It provides engineers a new efficient decision-making tool to rapidly determine the optimal build orientation for complex and freeform CAD models.
Keywords
additive manufacturing, machine learning, build orientation determination, statistical method
Citation
Yicha Zhang, Ramy Harik, Georges Fadel and Alain Bernard, “A Statistical Method for Build Orientation Determination in Additive Manufacturing,” Rapid Prototyping Journal, vol. 25, no. 1, 2019.