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Keywords: artificial neural network
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Journal Articles
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. December 2022, 144(12): 121202.
Paper No: TRIB-22-1166
Published Online: August 24, 2022
... descent learning algorithm-based artificial neural network (GD-ANN) with optimally tuned network architecture predicted (R 2 ∼ 97%) both the tribological performance attributes (coefficient of friction and specific wear-rate) of the natural silicate-filled friction composites more accurately as compared...
Topics:
Artificial neural networks,
Braking,
Composite materials,
Friction,
Stress,
Temperature,
Tribology,
Wear,
Sensitivity analysis,
Algorithms
Includes: Supplementary data
Journal Articles
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. January 2022, 144(1): 011201.
Paper No: TRIB-21-1208
Published Online: September 24, 2021
.... Thus, either prediction accuracy or model interpretability suffers when AM and ML models are implemented independently. This study proposes a hybrid model framework to incorporate the benefits of AM and ML simultaneously. In the hybrid model, an artificial neural network (ANN) compensates the AM...
Journal Articles
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. January 2022, 144(1): 011701.
Paper No: TRIB-20-1555
Published Online: April 19, 2021
... strength), processing procedure, heat treatment and tribological test variables (normal load, sliding speed, and sliding distance) on tribological properties and established two-parameter relationships. These data are analyzed using several ML algorithms: artificial neural network (ANN), K nearest neighbor...
Journal Articles
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. September 2021, 143(9): 091701.
Paper No: TRIB-20-1273
Published Online: January 8, 2021
... Division of ASME for publication in the J ournal of T ribology . 10 06 2020 12 11 2020 13 11 2020 08 01 2021 fractal theory fretting wear artificial neural network rough surface abrasion adhesion contact mechanics dry friction surface fatigue and fretting Based...
Journal Articles
Journal:
Journal of Tribology
Publisher: ASME
Article Type: Research Papers
J. Tribol. February 2020, 142(2): 021703.
Paper No: TRIB-18-1430
Published Online: October 17, 2019
...Haibo Xie; Zhanjiang Wang; Na Qin; Wenhao Du; Linmao Qian An integrated finite element and artificial neural network method is used to analyze the impact of scratch process parameters on some variables related to elastoplastic deformation of titanium alloy. The elastoplastic constitutive parameters...