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Keywords: ANN
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Journal Articles
Abrasive Wear Prediction of Three-Dimensional Printed PEEK Using Artificial Neural Network
Available to Purchase
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. November 2025, 147(11): 114201.
Paper No: TRIB-24-1559
Published Online: March 24, 2025
.... The article aims to predict wear loss using artificial neural networks (ANNs) under such conditions to avoid system failure and timely replacement with new components. The ReLU (rectified linear unit) activation function fits the actual wear trend and predicts the wear loss with 98% accuracy. Email...