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ANN and machine learning based predictions of MRR in AWSJ machining of CFRP composites

K. Ramesha, N. Santhosh, B. A. Praveena, Banakara Nagaraj, N. Channa Keshava Naik, Quadri Noorulhasan Naveed, Ayodele Lasisi, Anteneh Wogasso Wodajo

2025Scientific Reports16 citationsDOIOpen Access PDF

Abstract

This study investigates the effectiveness of Abrasive Water Suspension Jet (AWSJ) Machining, a non-conventional erosion-based method, for machining carbon fiber-reinforced polymer (CFRP) composites. The focus was on analyzing key process parameters-abrasive size, feed rate, and standoff distance (SOD)-under submerged cutting conditions and their impact on material removal rate (MRR), kerf width, and surface roughness. Experimental trials were conducted, and advanced computational techniques, including Response Surface Methodology (RSM), Random Forest (RF), Extreme Gradient Boosting (XGBoost), and Artificial Neural Networks (ANN), were used for parameter optimization and predictive analysis. The results showed that submerged cutting significantly improved machining quality by reducing surface roughness and ensuring uniform kerf widths. Increasing the jet diameter in underwater conditions stabilized the nozzle, leading to smoother and more precise cuts. Among the predictive models, XGBoost demonstrated the highest accuracy and efficiency in forecasting MRR, while Random Forest and ANN provided competitive performance. The integration of RSM and machine learning (ML) techniques enabled effective optimization of machining parameters, showcasing the potential for cost-effective and high-precision CFRP machining. These findings are particularly relevant for industries like aerospace and automotive, where machining efficiency and precision are crucial.

Topics & Concepts

MachiningSurface roughnessMaterials scienceAbrasiveResponse surface methodologyRandom forestCarbon fiber reinforced polymerArtificial neural networkNozzleSurface finishComposite materialMechanical engineeringComputer scienceMachine learningMetallurgyEngineeringComposite numberErosion and Abrasive MachiningParticle Dynamics in Fluid FlowsAdvanced machining processes and optimization