We found a match
Your institution may have access to this item. Find your institution then sign in to continue.
- Title
Machine Learning-Based Predictive Model to Assess Rheological Dynamics of Eco-Friendly Oils as Biolubricants Enriched with SiO 2 Nanoparticles.
- Authors
Hariharan, Girish; Navada, Meghana Kundala; Brahmavar, Jeevan; Aroor, Ganesha
- Abstract
Efficient machinery operation relies on the performance of high-quality lubricants. Currently, mineral oils of different grades are widely employed for lubricating machine components, but their environmental impact is a concern. Biolubricants are potential alternatives to mineral oils due to environmental factors. The present study focuses on assessing the rheological characteristics of SiO2 nanoparticle (NP)-enhanced ecofriendly biolubricants for near zero and high-temperature conditions. Pure neem oil, pure castor oil and a 50:50 blend of both oils were considered as the base oils. Nanobiolubricants with enhanced dispersion stability were prepared for varied concentrations of NPs using an ultrasonification method. Viscosity analysis was conducted using an MCR-92 rheometer, employing the Herschel Bulkley model to precisely characterize the viscosity behavior of bio-oils. Due to the fluid–solid interaction between SiO2 NPs and bio-oils, a crossover trend was observed in the flow curves generated for different base oils enriched with SiO2 NPs. For neem oil, a significant increase in viscosity was noted for 0.2 wt% of NPs. Using the multilayer perceptron (MLP) algorithm, an artificial neural network (ANN) model was developed to accurately predict the viscosity variations in nanobiolubricants. The accuracy of the predicted values was affirmed through experimental investigations at the considered nanoSiO2 weight concentrations.
- Subjects
ARTIFICIAL neural networks; MINERAL oils; CASTOR oil; NEEM oil; PREDICTION models; BASE oils; BIOMASS liquefaction
- Publication
Lubricants (2075-4442), 2024, Vol 12, Issue 3, p92
- ISSN
2075-4442
- Publication type
Article
- DOI
10.3390/lubricants12030092