Cargando…

Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing

Due to its advantages of high customization and rapid production, metal laser melting manufacturing (MAM) has been widely applied in the medical industry, manufacturing, aerospace and boutique industries in recent years. However, defects during the selective laser melting (SLM) manufacturing process...

Descripción completa

Detalles Bibliográficos
Autores principales: Chen, Hsin-Yu, Lin, Ching-Chih, Horng, Ming-Huwi, Chang, Lien-Kai, Hsu, Jian-Han, Chang, Tsung-Wei, Hung, Jhih-Chen, Lee, Rong-Mao, Tsai, Mi-Ching
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9416736/
https://www.ncbi.nlm.nih.gov/pubmed/36013797
http://dx.doi.org/10.3390/ma15165662
_version_ 1784776548863180800
author Chen, Hsin-Yu
Lin, Ching-Chih
Horng, Ming-Huwi
Chang, Lien-Kai
Hsu, Jian-Han
Chang, Tsung-Wei
Hung, Jhih-Chen
Lee, Rong-Mao
Tsai, Mi-Ching
author_facet Chen, Hsin-Yu
Lin, Ching-Chih
Horng, Ming-Huwi
Chang, Lien-Kai
Hsu, Jian-Han
Chang, Tsung-Wei
Hung, Jhih-Chen
Lee, Rong-Mao
Tsai, Mi-Ching
author_sort Chen, Hsin-Yu
collection PubMed
description Due to its advantages of high customization and rapid production, metal laser melting manufacturing (MAM) has been widely applied in the medical industry, manufacturing, aerospace and boutique industries in recent years. However, defects during the selective laser melting (SLM) manufacturing process can result from thermal stress or hardware failure during the selective laser melting (SLM) manufacturing process. To improve the product’s quality, the use of defect detection during manufacturing is necessary. This study uses the process images recorded by powder bed fusion equipment to develop a detection method, which is based on the convolutional neural network. This uses three powder-spreading defect types: powder uneven, powder uncovered and recoater scratches. This study uses a two-stage convolutional neural network (CNN) model to finish the detection and segmentation of defects. The first stage uses the EfficientNet B7 to classify the images with/without defects, and then to locate the defects by evaluating three different instance segmentation networks in second stage. Experimental results show that the accuracy and Dice measurement of Mask-R-CNN network with ResNet 152 backbone can reach 0.9272 and 0.9438. The computational time of an image only takes approximately 0.2197 sec. The used CNN model meets the requirements of the early detected defects, regarding the SLM manufacturing process.
format Online
Article
Text
id pubmed-9416736
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-94167362022-08-27 Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing Chen, Hsin-Yu Lin, Ching-Chih Horng, Ming-Huwi Chang, Lien-Kai Hsu, Jian-Han Chang, Tsung-Wei Hung, Jhih-Chen Lee, Rong-Mao Tsai, Mi-Ching Materials (Basel) Article Due to its advantages of high customization and rapid production, metal laser melting manufacturing (MAM) has been widely applied in the medical industry, manufacturing, aerospace and boutique industries in recent years. However, defects during the selective laser melting (SLM) manufacturing process can result from thermal stress or hardware failure during the selective laser melting (SLM) manufacturing process. To improve the product’s quality, the use of defect detection during manufacturing is necessary. This study uses the process images recorded by powder bed fusion equipment to develop a detection method, which is based on the convolutional neural network. This uses three powder-spreading defect types: powder uneven, powder uncovered and recoater scratches. This study uses a two-stage convolutional neural network (CNN) model to finish the detection and segmentation of defects. The first stage uses the EfficientNet B7 to classify the images with/without defects, and then to locate the defects by evaluating three different instance segmentation networks in second stage. Experimental results show that the accuracy and Dice measurement of Mask-R-CNN network with ResNet 152 backbone can reach 0.9272 and 0.9438. The computational time of an image only takes approximately 0.2197 sec. The used CNN model meets the requirements of the early detected defects, regarding the SLM manufacturing process. MDPI 2022-08-17 /pmc/articles/PMC9416736/ /pubmed/36013797 http://dx.doi.org/10.3390/ma15165662 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Chen, Hsin-Yu
Lin, Ching-Chih
Horng, Ming-Huwi
Chang, Lien-Kai
Hsu, Jian-Han
Chang, Tsung-Wei
Hung, Jhih-Chen
Lee, Rong-Mao
Tsai, Mi-Ching
Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title_full Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title_fullStr Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title_full_unstemmed Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title_short Deep Learning Applied to Defect Detection in Powder Spreading Process of Magnetic Material Additive Manufacturing
title_sort deep learning applied to defect detection in powder spreading process of magnetic material additive manufacturing
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9416736/
https://www.ncbi.nlm.nih.gov/pubmed/36013797
http://dx.doi.org/10.3390/ma15165662
work_keys_str_mv AT chenhsinyu deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT linchingchih deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT horngminghuwi deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT changlienkai deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT hsujianhan deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT changtsungwei deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT hungjhihchen deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT leerongmao deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing
AT tsaimiching deeplearningappliedtodefectdetectioninpowderspreadingprocessofmagneticmaterialadditivemanufacturing