GitHub / vigneashpandiyan / Additive-Manufacturing-Domain-adaptation-for-Bridging-Dissimilar-Process-Maps-Acoustic-Emission
Monitoring Of Laser Powder Bed Fusion Process By Bridging Dissimilar Process Maps Using Deep Learning-based Domain Adaptation on Acoustic Emissions
JSON API: http://repos.ecosyste.ms/api/v1/hosts/GitHub/repositories/vigneashpandiyan%2FAdditive-Manufacturing-Domain-adaptation-for-Bridging-Dissimilar-Process-Maps-Acoustic-Emission
PURL: pkg:github/vigneashpandiyan/Additive-Manufacturing-Domain-adaptation-for-Bridging-Dissimilar-Process-Maps-Acoustic-Emission
Stars: 0
Forks: 0
Open issues: 0
License: None
Language: Python
Size: 18.8 MB
Dependencies parsed at: Pending
Created at: about 2 years ago
Updated at: over 1 year ago
Pushed at: over 1 year ago
Last synced at: over 1 year ago
Topics: 3d-printing, acoustic-emission, additive-manufacturing, domain-adaptation, laser, laserprocessing, lpbf, process-monitoring, processmaps, processmonitoring, pytorch, slm, timeseries