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Explainable deep neural network for in-plain defect detection during additive manufacturing

Deepak Kumar (Aerospace Engineering Department, Embry-Riddle Aeronautical University, Daytona Beach, Florida, USA)
Yongxin Liu (Mathematics Department, Embry-Riddle Aeronautical University, Daytona Beach, Florida, USA)
Houbing Song (Department of Computer Science, University of Maryland, Baltomore, Maryland, USA)
Sirish Namilae (Aerospace Engineering Department, Embry-Riddle Aeronautical University, Daytona Beach, Florida, USA)

Rapid Prototyping Journal

ISSN: 1355-2546

Article publication date: 26 September 2023

Issue publication date: 2 January 2024

278

Abstract

Purpose

The purpose of this study is to develop a deep learning framework for additive manufacturing (AM), that can detect different defect types without being trained on specific defect data sets and can be applied for real-time process control.

Design/methodology/approach

This study develops an explainable artificial intelligence (AI) framework, a zero-bias deep neural network (DNN) model for real-time defect detection during the AM process. In this method, the last dense layer of the DNN is replaced by two consecutive parts, a regular dense layer denoted (L1) for dimensional reduction, and a similarity matching layer (L2) for equal weight and non-biased cosine similarity matching. Grayscale images of 3D printed samples acquired during printing were used as the input to the zero-bias DNN.

Findings

This study demonstrates that the approach is capable of successfully detecting multiple types of defects such as cracks, stringing and warping with high accuracy without any prior training on defective data sets, with an accuracy of 99.5%.

Practical implications

Once the model is set up, the computational time for anomaly detection is lower than the speed of image acquisition indicating the potential for real-time process control. It can also be used to minimize manual processing in AI-enabled AM.

Originality/value

To the best of the authors’ knowledge, this is the first study to use zero-bias DNN, an explainable AI approach for defect detection in AM.

Keywords

Acknowledgements

Funding: This work was funded by National Science Foundation (NSF) Advanced Manufacturing Grant (2001038). We thank Martina Jani for assistance with 3D printing setup.

Data availability statement: The processed data required to reproduce these findings are included in the paper. The raw data required to reproduce these findings cannot be shared at this time due to technical or time limitations.

Citation

Kumar, D., Liu, Y., Song, H. and Namilae, S. (2024), "Explainable deep neural network for in-plain defect detection during additive manufacturing", Rapid Prototyping Journal, Vol. 30 No. 1, pp. 49-59. https://doi.org/10.1108/RPJ-05-2023-0157

Publisher

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Emerald Publishing Limited

Copyright © 2023, Emerald Publishing Limited

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