Technology prediction of a 3D model using Neural Network
Journal:
arXiv
Published Date:
May 7, 2025
Abstract
Accurate estimation of production times is critical for effective
manufacturing scheduling, yet traditional methods relying on expert analysis or
historical data often fall short in dynamic or customized production
environments. This paper introduces a data-driven approach that predicts
manufacturing steps and their durations directly from a product's 3D model. By
rendering the model into multiple 2D images and leveraging a neural network
inspired by the Generative Query Network, the method learns to map geometric
features into time estimates for predefined production steps enabling scalable,
adaptive, and precise process planning across varied product types.