Machine Learning in Tribology
Tribology has been and continues to be one of the most relevant fields, being present in almost all aspects of our lives. The understanding of tribology provides us with solutions for future technical challenges. At the root of all advances made so far are multitudes of precise experiments and an in...
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Tremmel, Stephan edt Machine Learning in Tribology Basel MDPI - Multidisciplinary Digital Publishing Institute 2022 1 electronic resource (208 p.) text txt rdacontent computer c rdamedia online resource cr rdacarrier Tribology has been and continues to be one of the most relevant fields, being present in almost all aspects of our lives. The understanding of tribology provides us with solutions for future technical challenges. At the root of all advances made so far are multitudes of precise experiments and an increasing number of advanced computer simulations across different scales and multiple physical disciplines. Based upon this sound and data-rich foundation, advanced data handling, analysis and learning methods can be developed and employed to expand existing knowledge. Therefore, modern machine learning (ML) or artificial intelligence (AI) methods provide opportunities to explore the complex processes in tribological systems and to classify or quantify their behavior in an efficient or even real-time way. Thus, their potential also goes beyond purely academic aspects into actual industrial applications. To help pave the way, this article collection aimed to present the latest research on ML or AI approaches for solving tribology-related issues generating true added value beyond just buzzwords. In this sense, this Special Issue can support researchers in identifying initial selections and best practice solutions for ML in tribology. English Technology: general issues bicssc History of engineering & technology bicssc artificial intelligence machine learning artificial neural networks tribology condition monitoring semi-supervised learning random forest classifier self-lubricating journal bearings reduced order modelling dynamic friction rubber seal applications tensor decomposition laser surface texturing texturing during moulding digital twin PINN reynolds equation triboinformatics databases data mining meta-modeling monitoring analysis prediction optimization fault data generation Convolutional Neural Network (CNN) Generative Adversarial Network (GAN) bearing fault diagnosis unbalanced datasets tribo-testing tribo-informatics natural language processing tribAIn BERT amorphous carbon coatings UHWMPE total knee replacement Gaussian processes rolling bearing dynamics cage instability regression neural networks random forest gradient boosting evolutionary algorithms rolling bearings remaining useful life feature engineering structure-borne sound 3-0365-3981-6 3-0365-3982-4 Marian, Max edt Tremmel, Stephan oth Marian, Max oth |
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English |
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Marian, Max Tremmel, Stephan Marian, Max |
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Marian, Max Tremmel, Stephan Marian, Max |
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HerausgeberIn Sonstige Sonstige |
title |
Machine Learning in Tribology |
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Machine Learning in Tribology |
title_full |
Machine Learning in Tribology |
title_fullStr |
Machine Learning in Tribology |
title_full_unstemmed |
Machine Learning in Tribology |
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Machine Learning in Tribology |
title_new |
Machine Learning in Tribology |
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machine learning in tribology |
publisher |
MDPI - Multidisciplinary Digital Publishing Institute |
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2022 |
physical |
1 electronic resource (208 p.) |
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3-0365-3981-6 3-0365-3982-4 |
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Not Illustrated |
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AT tremmelstephan machinelearningintribology AT marianmax machinelearningintribology |
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(CKB)5720000000008304 (oapen)https://directory.doabooks.org/handle/20.500.12854/84499 (EXLCZ)995720000000008304 |
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Machine Learning in Tribology |
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