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  4. A U-Net Based Approach for Automating Tribological Experiments
 
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2020
Journal Article
Title

A U-Net Based Approach for Automating Tribological Experiments

Abstract
Tribological experiments (i.e., characterizing the friction and wear behavior of materials) are crucial for determining their potential areas of application. Automating such tests could hence help speed up the development of novel materials and coatings. Here, we utilize convolutional neural networks (CNNs) to automate a common experimental setup whereby an endoscopic camera was used to measure the contact area between a rubber sample and a spherical counterpart. Instead of manually determining the contact area, our approach utilizes a U-Net-like CNN architecture to automate this task, creating a much more efficient and versatile experimental setup. Using a 5× random permutation cross validation as well as additional sanity checks, we show that we approached human-level performance. To ensure a flexible and mobile setup, we implemented the method on an NVIDIA Jetson AGX Xavier development kit where we achieved ~18 frames per second by employing mixed-precision training.
Author(s)
Staar, Benjamin
BIBA-Bremer Institut für Produktion und Logistik GmbH, University of Bremen, University of Bremen, Faculty of Production Engineering
Bayrak, Suleyman  
Fraunhofer-Institut für Fertigungstechnik und Angewandte Materialforschung IFAM  
Paulkowski, Dominik  
Fraunhofer-Institut für Fertigungstechnik und Angewandte Materialforschung IFAM  
Freitag, Michael
BIBA-Bremer Institut für Produktion und Logistik GmbH, University of Bremen, University of Bremen, Faculty of Production Engineering
Journal
Sensors. Online journal  
Open Access
DOI
10.3390/s20226703
Language
English
Fraunhofer-Institut für Fertigungstechnik und Angewandte Materialforschung IFAM  
Keyword(s)
  • convolutional neural network

  • tribology

  • Semantic Segmentation

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