Enhanced random vector functional link based on artificial protozoa optimizer to predict wear characteristics of Cu-ZrO2 nanocomposites

Faculty Science Year: 2024
Type of Publication: ZU Hosted Pages:
Authors:
Journal: Results in Engineering Elsevier Volume:
Keywords : Enhanced random vector functional link based    
Abstract:
Owing to the absence of scientific methods for predicting nanocomposites' wear rates, a freshly updated machine learning method that uses an Artificial Protozoa Optimizer (APO) to forecast the tribological performance of Cu-ZrO2 nanocomposites was proposed. The updated model was used to predict the coefficients of friction and wear rates of Cu-ZrO2 nanocomposites produced in this work. Copper-zirconia nanocomposite powders were fabricated utilizing the ball milling process, varying in milling time and ZrO2 weight percentage. The effect of reinforcement percentage and milling time on the morphology and microstructure of the copper composite powders was characterized. The study concentrated on the effects of high-energy ball milling on the morphology, microstructure, and microhardness of the resulting composites. After cold compaction at 700 MPa of pressure, the resultant powders were sintered for 2 h at 950 °C in a hydrogen atmosphere. Based on the results, a 20-h milling time is the best option for creating a Cu-ZrO2 nanocomposite with evenly distributed reinforcement. The microhardness and wear rate of the Cu-15%ZrO2 nanocomposites are improved by 66.2 %, and 81.1 %, respectively, when compared to pure copper. The crystallite size decreases significantly with the addition of ZrO2, reaching 32.5 and 11.1 nm for samples containing 5 and 15 % weight percent ZrO2. That is why there is a rise in wear and mechanical properties. For Cu-ZrO2 nanocomposites with reinforcement content up to 15 %, the model constructed using the APO method demonstrated excellent forecasting of the wear rate and coefficient of friction.
   
     
 
       

Author Related Publications

  • Mohamed El Sayed Ahmed Muhamed, "A Grunwald–Letnikov based Manta ray foraging optimizer for global optimization and image segmentation", Elsevier, 2020 More
  • Mohamed El Sayed Ahmed Muhamed, "A novel hybrid gradient-based optimizer and grey wolf optimizer feature selection method for human activity recognition using smartphone sensors", MDPI, 2021 More
  • Mohamed El Sayed Ahmed Muhamed, "Efficient schemes for playout latency reduction in P2P-VOD systems", Springer, 2018 More
  • Mohamed El Sayed Ahmed Muhamed, "a novel algorithm for source localization based on nonnegative matrix factroization using \alpha 'beta divergence in chochleagram", WSEAS, 2013 More
  • Mohamed El Sayed Ahmed Muhamed, "Open cluster membership probability based on K-means clustering algorithm", Springer, 2016 More

Department Related Publications

  • Mohamed Ahmed ElsayedAly, "comment on"the effect of fractional parameters of the conducting elastic half-in generalized magneto thermoplasticy"", امريكا, 2013 More
  • Mohamed Ibrahim Ahmed Othman, "Thermoelastic Theories on the Refracted Waves in Microstretch Thermoelastic Diffusion Media", World Scienti¯c Publishing Company, 2022 More
  • Elsayed Mahsoub Ahmed Nigm, "Extreme value modeling under power normalization", أمريكا, 2013 More
  • Yasser AbdelAziz Amer Tolba, "Passive vibration control for nonlinear Structural Modal of multiple-degree-of-freedom System", انجلترا, 2016 More
  • Metwally AlAwadi Elsayed AlAwadi, "Limit theorems for random maximum of independent and non-identically distributed random vectors", Statistics, 2013 More
Tweet