AI RESEARCH

CAD-feature enhanced machine learning for manufacturing effort estimation on sheet metal bending parts

arXiv CS.CV

ArXi:2605.12266v1 Announce Type: new Graph-based machine learning has emerged as a promising approach for manufacturability analysis by learning directly from CAD models represented as Boundary Representations (B-reps), exploiting both surface geometry and topological connectivity. However, purely geometric representations often lack the process-specific semantics required for accurate manufacturability prediction: many manufacturing factors, such as surface roles or bend intent, are not explicitly encoded in shape alone and are difficult for data-driven models to infer reliably.