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Prediction and Optimization of Surface Roughness in a Turning Process Using the ANFIS-QPSO Method

M. Alajmi, Abdullah M. Almeshal

2020Materials80 citationsDOIOpen Access PDF

Abstract

This study presents a prediction method of surface roughness values for dry and cryogenic turning of AISI 304 stainless steel using the ANFIS-QPSO machine learning approach. ANFIS-QPSO combines the strengths of artificial neural networks, fuzzy systems and evolutionary optimization in terms of accuracy, robustness and fast convergence towards global optima. Simulations revealed that ANFIS-QPSO results in accurate prediction of surface roughness with RMSE = 4.86%, MAPE = 4.95% and R2 = 0.984 for the dry turning process. Similarly, for the cryogenic turning process, ANFIS-QPSO resulted in surface roughness predictions with RMSE = 5.08%, MAPE = 5.15% and R2 = 0.988 that are of high agreement with the measured values. Performance comparisons between ANFIS-QPSO, ANFIS, ANFIS-GA and ANFIS-PSO suggest that ANFIS-QPSO is an effective method that can ensure a high prediction accuracy of surface roughness values for dry and cryogenic turning processes.

Topics & Concepts

Adaptive neuro fuzzy inference systemSurface roughnessMean squared errorMean absolute percentage errorRobustness (evolution)Artificial neural networkConvergence (economics)Computer scienceMaterials scienceMachine learningMathematicsFuzzy logicArtificial intelligenceStatisticsComposite materialFuzzy control systemChemistryGeneBiochemistryEconomicsEconomic growthAdvanced machining processes and optimizationAdvanced Machining and Optimization TechniquesSurface Roughness and Optical Measurements
Prediction and Optimization of Surface Roughness in a Turning Process Using the ANFIS-QPSO Method | Litcius