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IoT-based data mining framework for stability assessment of the laser-directed energy deposition process
Citation Link: https://doi.org/10.15480/882.13618
Publikationstyp
Journal Article
Date Issued
2024-06-07
Sprache
English
Author(s)
Vykhtar, Bohdan
Möbs, Nele
TORE-DOI
Journal
Volume
12
Issue
6
Article Number
1180
Citation
Processes 12 (6): 1180 (2024)
Publisher DOI
Scopus ID
Publisher
Multidisciplinary Digital Publishing Institute
Additive manufacturing processes are prone to production errors. Specifically, the unique physical conditions of Laser-Directed Energy Deposition (DED-L) lead to unexpected process anomalies resulting in subpar part quality. The resulting costs and lack of reproducibility are two major barriers hindering a broader adoption of this innovative technology. Combining sensor data with data from relevant steps before and after the production process can lead to an increased understanding of when and why these process anomalies occur. In the present study, an IoT-based data mining framework is presented to assess the stability of processing Ti6Al4V on an industrial-grade DED-L machine. The framework employs an edge-cloud computing methodology to collect data efficiently and securely from various steps in the part lifecycle. During manufacturing, multiple sensors are employed to monitor the essential process characteristics in situ. Mechanical properties of the 160 printed specimens were obtained using appropriate destructive testing. All data are stored on a central database and can be accessed via the web for data analytics. The results prove the successful implementation of the proposed IoT framework but also indicate a lack of process stability during manufacturing. The occurring part errors can only be partially correlated with anomalies in the in situ sensor data.
Subjects
additive manufacturing
digital twin
directed energy deposition
edge computing
Industry 4.0
laser metal deposition
process monitoring
sensors
DDC Class
621: Applied Physics
670: Manufacturing
004: Computer Sciences
620.1: Engineering Mechanics and Materials Science
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