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Zeng et al., 2020 - Google Patents

Research on fault analysis and prediction algorithm based on delta 3D printer

Zeng et al., 2020

Document ID
1134474340909455957
Author
Zeng L
Zou X
Publication year
Publication venue
International Conference on Maintenance Engineering

External Links

Snippet

The authors carried out the 3D printing experiment, summarized the factors that impact the printing quality by comprehensively reviewing the whole printing process, and determined relevant detectable parameters to describe and diagnose various faults. Based on the …
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