Tribological performance of UV treated nanodiamond reinforced polyurethane nanocomposites through Taguchi and machine learning technique
Markapudi Bhanu Prasad, Borhen Louhichi, P. S. Rama Sreekanth, A. Praveen Kumar, Joy Djuansjah, Santosh Kumar Sahu, It Ee Lee, Qamar Wali

TL;DR
This study shows how adding nanodiamonds and using UV treatment can improve the wear resistance of polyurethane composites, with machine learning helping to predict performance.
Contribution
The novel use of UV treatment and machine learning techniques to optimize and predict the tribological performance of nanodiamond-reinforced polyurethane composites.
Findings
0.5 wt% nanodiamond reduced wear rate to 0.018 × 10⁻³ g/m under optimal conditions.
XGBoost machine learning model achieved highest accuracy in predicting tribological performance.
UV irradiation and composition were the most influential factors affecting wear rate and coefficient of friction.
Abstract
The objective of the current work is to investigate the tribological properties of nanodiamond (ND) reinforced polyurethane (PU) composite and examine the impact of UV irradiation on these properties. The experiments were optimized using the Taguchi design and ANOVA, while machine learning (ML) techniques were applied to predict the tribological performance. The study uses the Taguchi design of experiments (DOE) with an L27 orthogonal array to assess the effects of sliding distance (500–1500 m), sliding speed (100–300 rpm), load (10–30 N), composition (pure PU, 0.2 wt% ND, 0.5 wt% ND), and UV irradiation time (0, 200, 400 h) on wear rate and coefficient of friction (COF). The results show that incorporating 0.5 wt% ND significantly enhances PU performance, reducing the wear rate to 0.018 × 10⁻³ g/m and achieving a COF of 0.253 under optimal conditions of 30 N load, 0 h of UV…
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Taxonomy
TopicsTribology and Wear Analysis · Orthopaedic implants and arthroplasty · Lubricants and Their Additives
