Towards automated damage detection for in-situ remanufacturing

Remanufacturing is the restoration of used products to a like-new condition, with warranty matching the original product. It is labour intensive, and faces problems of increasing labour costs, labour shortage, and varying quality of work between individuals, but can be solved by automation. Howev...

Full description

Saved in:
Bibliographic Details
Main Author: Nguyen, Keith Wei Liang
Other Authors: Seet Gim Lee, Gerald
Format: Thesis-Doctor of Philosophy
Language:English
Published: Nanyang Technological University 2021
Subjects:
Online Access:https://hdl.handle.net/10356/146561
Tags: Add Tag
No Tags, Be the first to tag this record!
Institution: Nanyang Technological University
Language: English
id sg-ntu-dr.10356-146561
record_format dspace
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Mechanical engineering
spellingShingle Engineering::Mechanical engineering
Nguyen, Keith Wei Liang
Towards automated damage detection for in-situ remanufacturing
description Remanufacturing is the restoration of used products to a like-new condition, with warranty matching the original product. It is labour intensive, and faces problems of increasing labour costs, labour shortage, and varying quality of work between individuals, but can be solved by automation. However, in the marine and offshore industry, the large parts are impractical to disassemble and transport to remanufacture offsite, and hence it should be carried out in-situ. With automated in-situ remanufacturing, there is increased safety, efficiency in material use, reduced turnaround time, and in turn reduced costs, and is the motivation for it. However, there is a lack of a formal framework for such remanufacturing to ensure repeatability and accountability, and is first established in this thesis. A laborious remanufacturing process that benefits from automation is the inspection process, specifically damage detection and classification. It is preferable to automate damage detection from 3D data over 2D images, as the 3D data of the detected damage region is required for the hybrid manufacturing process in the downstream repair procedure. Although the ideal 3D damage detection method is comparing the scanned 3D model to the as-built model, some as-built models of legacy parts may be missing, whilst other damaged parts may differ from the as-built model due to undocumented modifications, or allowable deformations. As such, this research focuses on automating damage detection from only the 3D scan data of the part, for use in downstream repair processes. The unoptimized computational efficiency for geometric learning, and lack of training data inhibits the direct application of machine learning for damage detection from 3D data. A literature review reveals that current 3D damage detection methods are unable to detect different damage types, have assumptions on the geometry of the undamaged part, or require additional inputs, representing a significant gap within the knowledge, and is filled by this research. Selected algorithms for 3D damage detection reviewed are implemented, alongside several proposed novel algorithms for dimensionality reduction. The extracted features are then processed via machine learning, with different machine learning models compared. The models were trained and demonstrated on synthetic scan data due to the limited access to real-world data, followed by validation of the trained model on real scan of physically damaged parts. The proposed approach can detect different types of damage from 3D scan data without assumptions on the undamaged part geometry or requiring additional inputs, with a sensitivity of 95.9%, representing a substantial improvement over current 3D damage detection methodologies. Based on the visual results, damaged regions are largely identified, although the proposed approach has difficulties identifying the exact borders of the damage region. The same approach is also implemented to classify the damage type, attaining an accuracy of 73.2%. However, it should be noted that the proposed approach may wrongly identify certain intended features as damage, such as debossed text, and is also sensitive to noise in the data. While there are other enabling technologies required to fully automate in-situ remanufacturing, this thesis only focuses on the processes leading up to the damage detection and classification.
author2 Seet Gim Lee, Gerald
author_facet Seet Gim Lee, Gerald
Nguyen, Keith Wei Liang
format Thesis-Doctor of Philosophy
author Nguyen, Keith Wei Liang
author_sort Nguyen, Keith Wei Liang
title Towards automated damage detection for in-situ remanufacturing
title_short Towards automated damage detection for in-situ remanufacturing
title_full Towards automated damage detection for in-situ remanufacturing
title_fullStr Towards automated damage detection for in-situ remanufacturing
title_full_unstemmed Towards automated damage detection for in-situ remanufacturing
title_sort towards automated damage detection for in-situ remanufacturing
publisher Nanyang Technological University
publishDate 2021
url https://hdl.handle.net/10356/146561
_version_ 1761782045533536256
spelling sg-ntu-dr.10356-1465612023-03-11T18:07:31Z Towards automated damage detection for in-situ remanufacturing Nguyen, Keith Wei Liang Seet Gim Lee, Gerald Tor Shu Beng MGLSEET@ntu.edu.sg, MSBTOR@ntu.edu.sg Engineering::Mechanical engineering Remanufacturing is the restoration of used products to a like-new condition, with warranty matching the original product. It is labour intensive, and faces problems of increasing labour costs, labour shortage, and varying quality of work between individuals, but can be solved by automation. However, in the marine and offshore industry, the large parts are impractical to disassemble and transport to remanufacture offsite, and hence it should be carried out in-situ. With automated in-situ remanufacturing, there is increased safety, efficiency in material use, reduced turnaround time, and in turn reduced costs, and is the motivation for it. However, there is a lack of a formal framework for such remanufacturing to ensure repeatability and accountability, and is first established in this thesis. A laborious remanufacturing process that benefits from automation is the inspection process, specifically damage detection and classification. It is preferable to automate damage detection from 3D data over 2D images, as the 3D data of the detected damage region is required for the hybrid manufacturing process in the downstream repair procedure. Although the ideal 3D damage detection method is comparing the scanned 3D model to the as-built model, some as-built models of legacy parts may be missing, whilst other damaged parts may differ from the as-built model due to undocumented modifications, or allowable deformations. As such, this research focuses on automating damage detection from only the 3D scan data of the part, for use in downstream repair processes. The unoptimized computational efficiency for geometric learning, and lack of training data inhibits the direct application of machine learning for damage detection from 3D data. A literature review reveals that current 3D damage detection methods are unable to detect different damage types, have assumptions on the geometry of the undamaged part, or require additional inputs, representing a significant gap within the knowledge, and is filled by this research. Selected algorithms for 3D damage detection reviewed are implemented, alongside several proposed novel algorithms for dimensionality reduction. The extracted features are then processed via machine learning, with different machine learning models compared. The models were trained and demonstrated on synthetic scan data due to the limited access to real-world data, followed by validation of the trained model on real scan of physically damaged parts. The proposed approach can detect different types of damage from 3D scan data without assumptions on the undamaged part geometry or requiring additional inputs, with a sensitivity of 95.9%, representing a substantial improvement over current 3D damage detection methodologies. Based on the visual results, damaged regions are largely identified, although the proposed approach has difficulties identifying the exact borders of the damage region. The same approach is also implemented to classify the damage type, attaining an accuracy of 73.2%. However, it should be noted that the proposed approach may wrongly identify certain intended features as damage, such as debossed text, and is also sensitive to noise in the data. While there are other enabling technologies required to fully automate in-situ remanufacturing, this thesis only focuses on the processes leading up to the damage detection and classification. Doctor of Philosophy 2021-03-01T06:14:22Z 2021-03-01T06:14:22Z 2020 Thesis-Doctor of Philosophy Nguyen, K. W. L. (2020). Towards automated damage detection for in-situ remanufacturing. Doctoral thesis, Nanyang Technological University, Singapore. https://hdl.handle.net/10356/146561 10.32657/10356/146561 en This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License (CC BY-NC 4.0). application/pdf Nanyang Technological University