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Algorithmic detection and categorization of partially attached particles in AM structures: a non-destructive method for the certification of lattice implants

机译:Algorithmic detection and categorization of partially attached particles in AM structures: a non-destructive method for the certification of lattice implants

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摘要

PurposeThis paper aims to present a methodology for the detection and categorisation of metal powder particles that are partially attached to additively manufactured lattice structures. It proposes a software algorithm to process micro computed tomography (mu CT) image data, thereby providing a systematic and formal basis for the design and certification of powder bed fusion lattice structures, as is required for the certification of medical implants. Design/methodology/approachThis paper details the design and development of a software algorithm for the analysis of mu CT image data. The algorithm was designed to allow statistical probability of results based on key independent variables. Three data sets with a single unique parameter were input through the algorithm to allow for characterisation and analysis of like data sets. FindingsThis paper demonstrates the application of the proposed algorithm with three data sets, presenting a detailed visual rendering derived from the input image data, with the partially attached particles highlighted. Histograms for various geometric attributes are output, and a continuous trend between the three different data sets is highlighted based on the single unique parameter. Originality/valueThis paper presents a novel methodology for non-destructive algorithmic detection and categorisation of partially attached metal powder particles, of which no formal methods exist. This material is available to download as a part of a provided GitHub repository.
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