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GNBoost-Based Ensemble Machine Learning for Predicting Tribological Properties of Liquid-Crystal Lubricants.

Hongfei ShiHanglin LiZhaoyang GuoHengyi LuJing WangJiusheng Li
Published in: Langmuir : the ACS journal of surfaces and colloids (2024)
The intricate development of liquid-crystal lubricants necessitates the timely and accurate prediction of their tribological performance in different environments and an assessment of the importance of relevant parameters. In this study, a classification model using Gaussian noise extreme gradient boosting (GNBoost) to predict tribological performance is proposed. Three additives, polysorbate-85, polysorbate-80, and graphene oxide, were selected to fabricate liquid-crystal lubricants. The coefficients of friction of these lubricants were tested in the rotational mode using a universal mechanical tester. A model was designed to predict the coefficient of friction through data augmentation of the initial data. The model parameters were optimized using particle swarm optimization techniques. This study provides an effective example for lubricant performance evaluation and formulation optimization.
Keyphrases
  • machine learning
  • big data
  • deep learning
  • drug delivery
  • climate change
  • ionic liquid
  • mass spectrometry
  • convolutional neural network