Lifetime Prediction Using a Tribology-Aware, Deep Learning-Based Digital Twin of Ball Bearing-Like Tribosystems in Oil and Gas
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Title
Lifetime Prediction Using a Tribology-Aware, Deep Learning-Based Digital Twin of Ball Bearing-Like Tribosystems in Oil and Gas
Authors
Keywords
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Journal
Processes
Volume 9, Issue 6, Pages 922
Publisher
MDPI AG
Online
2021-05-25
DOI
10.3390/pr9060922
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