MULTI-RESOLUTION QUALITY INSPECTION FOR ADDITIVE MANUFACTURING

Hui Yang, Joni Reijonen, Alejandro Revuelta

Research output: Chapter in Book/Report/Conference proceedingConference contribution

Abstract

Automated optical inspection (AOI) is increasingly advocated for in-situ quality monitoring of additive manufacturing (AM) processes. The availability of layerwise imaging data improves the information visibility during fabrication processes and is thus conducive to performing online certification. However, few, if any, have investigated the high-speed contact image sensors (i.e., originally developed for document scanners and multi-function printers) for AM quality monitoring. In addition, layerwise images show complex patterns and often contain hidden information that cannot be revealed in a single scale. A new and alternative approach will be to analyze these intrinsic patterns with multi-scale lenses. Therefore, the objective of this paper is to design and develop an AOI system with contact image sensors for multi-resolution quality inspection of layerwise builds in additive manufacturing. First, we retrofit the AOI system with contact image sensors in industrially relevant 95 mm/s scanning speed to a laser-powder-bed-fusion (LPBF) machines. Then, we design the experiments to fabricate nine parts under a variety of factor levels (e.g., gas flow blockage, recoater damage, laser power changes). In each layer, the AOI system collects imaging data of both recoating powder beds before the laser fusion and surface finishes after the laser fusion. Second, layerwise images are pre-preprocessed for alignment, registration and identification of regions of interests (ROIs) of these nine parts. Then, we leverage the wavelet transformation to analyze ROI images in multiple scales and further extract salient features that are sensitive to process variations, instead of extraneous noises. Third, we perform the paired comparison analysis to investigate how different levels of factors influence the distribution of wavelet features. Finally, these features are shown to be effective in predicting the extent of defects in the CT data of layerwise AM builds. The proposed framework of multi-resolution quality inspection is evaluated and validated using real-world AM imaging data. Experimental results demonstrated the effectiveness of the proposed AOI system with contact image sensors for online quality inspection of layerwise builds in AM processes.

Original languageEnglish (US)
Title of host publicationAdditive Manufacturing; Advanced Materials Manufacturing; Biomanufacturing; Life Cycle Engineering
PublisherAmerican Society of Mechanical Engineers
ISBN (Electronic)9780791887233
DOIs
StatePublished - 2023
EventASME 2023 18th International Manufacturing Science and Engineering Conference, MSEC 2023 - New Brunswick, United States
Duration: Jun 12 2023Jun 16 2023

Publication series

NameProceedings of ASME 2023 18th International Manufacturing Science and Engineering Conference, MSEC 2023
Volume1

Conference

ConferenceASME 2023 18th International Manufacturing Science and Engineering Conference, MSEC 2023
Country/TerritoryUnited States
CityNew Brunswick
Period6/12/236/16/23

All Science Journal Classification (ASJC) codes

  • Industrial and Manufacturing Engineering

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