CVLGFeb 11, 2025

GraphCompNet: A Position-Aware Model for Predicting and Compensating Shape Deviations in 3D Printing

arXiv:2502.09652v2IEEE Trans Autom Sci Eng
AI Analysis

This work addresses a critical problem for the additive manufacturing industry, particularly for large-scale production, by providing a scalable and real-time solution for shape deviation compensation.

The authors tackled the problem of shape deviations in 3D printing, achieving a 35 to 65 percent improvement in compensation accuracy across the entire print space. This was done by introducing GraphCompNet, a position-aware model that adapts to position-dependent variations.

This paper introduces a data-driven algorithm for modeling and compensating shape deviations in additive manufacturing (AM), addressing challenges in geometric accuracy and batch production. While traditional methods, such as analytical models and metrology, laid the groundwork for geometric precision, they are often impractical for large-scale production. Recent advancements in machine learning (ML) have improved compensation precision, but issues remain in generalizing across complex geometries and adapting to position-dependent variations. We present a novel approach for powder bed fusion (PBF) processes, using GraphCompNet, which is a computational framework combining graph-based neural networks with a generative adversarial network (GAN)-inspired training process. By leveraging point cloud data and dynamic graph convolutional neural networks (DGCNNs), GraphCompNet models complex shapes and incorporates position-specific thermal and mechanical factors. A two-stage adversarial training procedure iteratively refines compensated designs via a compensator-predictor architecture, offering real-time feedback and optimization. Experimental validation across diverse shapes and positions shows the framework significantly improves compensation accuracy (35 to 65 percent) across the entire print space, adapting to position-dependent variations. This work advances the development of Digital Twin technology for AM, enabling scalable, real-time monitoring and compensation, and addressing critical gaps in AM process control. The proposed method supports high-precision, automated industrial-scale design and manufacturing systems.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes