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The quantification of solid debris in used lubricating oil is essential for assessing transmission system wear and optimizing maintenance strategies. This study introduces a low-cost capacitive proximity sensor for monitoring total solid particle contamination in lubricants, with a focus on ferrous (Fe), non-ferrous (Al), and non-metallic (SiO2) debris. Controlled tests were performed using five mixing ratios of large-to-small particles (100:0, 75:25, 50:50, 25:75, and 0:100) at a fixed debris mass of 0.5 g per 25 mL of SAE 85W-140 automotive gear oil. Cubic regression analysis yielded high predictive accuracy, with average R2 values of 0.994 for Fe, 0.943 for Al, and 0.992 for SiO2. Further dimensionality reduction using Principal Component Analysis (PCA), along with Linear Discriminant Analysis (LDA) of multivariate statistical analysis, effectively classifies debris types and enhances interpretability. These results demonstrate the potential of capacitive sensing as an offline, non-invasive alternative to traditional techniques for wear debris monitoring in transmission systems. These results confirm the potential of capacitive sensing, supported by statistical modeling, as a non-invasive, cost-effective technique for offline classification and monitoring of wear debris in transmission systems.
Details
Classification;
Electrodes;
Iron;
Lubricating oils;
Discriminant analysis;
Debris;
Monitoring systems;
Statistical analysis;
Heat conductivity;
Lubricants;
Spectrum analysis;
Principal components analysis;
Nonferrous metals;
Electric fields;
Sensors;
Silicon dioxide;
Multivariate analysis;
Lubricants & lubrication;
Silica;
Multivariate statistical analysis;
Regression analysis;
Statistical models;
Mixing ratio;
Morphology;
Wear particles
1 Machinery Health Monitoring & Tribology Laboratory, Department of Production and Robotics Engineering, Faculty of Engineering, King Mongkut’s University of Technology North Bangkok (KMUTNB), 1518 Pracharaj 1 Road, Bang-Sue, Bangkok 10800, Thailand
2 Department of Industrial Engineering, Faculty of Technical Education, Rajamangala University of Technology Krungthep (RMUTK), 2 Nanglinchee Road, Thung Maha Mak, Sathorn, Bangkok 10120, Thailand; [email protected]