4.7 Article

Automated manufacturability analysis and machining process selection using deep generative model and Siamese neural networks

Journal

JOURNAL OF MANUFACTURING SYSTEMS
Volume 67, Issue -, Pages 57-67

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jmsy.2023.01.006

Keywords

Generative machine learning; Deep metric learning; Computer aided process planning; Machining feature recognition

Ask authors/readers for more resources

Industry 4.0 requires highly autonomous manufacturing process planning. This paper proposes an integrated approach using Autoencoder-based deep generative models and a Siamese Neural Network (SNN) to enable automated manufacturability analysis and machining process selection. The proposed AE-SNN achieves high accuracy in process selection and manufacturability analysis.
Industry 4.0 calls for highly autonomous manufacturing process planning. Significant effort has been devoted over the years to generative Computer Aided Process Planning (CAPP), which aims to generate process plans for new designs without human intervention. This goal has not been realized to date due to several reasons, such as poor scalability and the difficulty in modeling manufacturing process capability, which encapsulates the part shape, quality, and material property transformation capabilities of the process. In our prior work, the shape transformation capabilities of lathe-based machining operations were modeled as latent probability distributions using a data-driven deep learning-based generative machine learning approach, from which visualizations of realistic machinable features could be sampled to assist manual process selection. In this paper, a Siamese Neural Network (SNN) is integrated with Autoencoder-based deep generative models of machining operations to enable automated comparison of the query part shapes with sampled outputs. This enables automated manufacturability analysis and machining process selection necessary for generative CAPP. The paper also demonstrates that the proposed Autoencoder and Siamese Neural Network (AE-SNN) achieves a class-average process selection accu-racy of 89 %, and a manufacturability analysis accuracy of 100 %, which outperforms a discriminative model trained on the same dataset.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available