AMJATH, Z. A. and MOORTHY, R. GANESA and ALI, K. S. ASHRAFF and GNANAVEL, C. (2025) MACHINE LEARNING-BASED PREDICTION OF SURFACE CHARACTERISTICS AND TOOL WEAR IN Mg–AZ91D MILLING UNDER DISTINCT CONDITIONS. Surface Review and Letters. ISSN 0218-625X
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As industries seek greener alternatives to mineral oil-based cutting fluids due to their negative environmental impact, vegetable oils emerge as promising substitutes. Their biodegradable and nontoxic properties make them particularly suitable for machining operations. This study investigates the impact of different lubrication and cooling (L/C) methods on machined surfaces and machining parameters to develop sustainable milling practices for Mg-AZ91D. Effective L/C is crucial in regulating heat and friction to enhance product quality. Experimental milling trials involving dry, minimum quantity lubrication (MQL), and solid lubricant (SL) with MQL were conducted on Mg-AZ91D. Results show that under SL-MQL conditions, surface roughness (Ra) was significantly lower (by 49–70%) compared to dry conditions and marginally lower (by 8–13%) than with MQL alone. Additionally, machine learning (ML) algorithms were employed for predictive modeling, including linear regression (LR), support vector machine (SVM), and Random Forest (RF). These models were compared using performance metrics such as [Formula: see text], MAE, RMSE, RAE, and RRSE. The RF algorithm demonstrated the best results in predicting surface characteristics, exhibiting notably higher [Formula: see text] scores and performance metrics. Conversely, SVM outperformed other algorithms in predicting tool wear. The ML models revealed that cooling conditions had a greater impact on output milling parameters compared to other input variables.
Item Type: | Article |
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Subjects: | Computer Science Engineering > Machine Learning |
Domains: | Computer Science Engineering |
Depositing User: | Mr Tech Mosys |
Date Deposited: | 21 Aug 2025 06:53 |
Last Modified: | 21 Aug 2025 06:53 |
URI: | https://ir.vistas.ac.in/id/eprint/10198 |