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Erschienen in: Arabian Journal for Science and Engineering 9/2023

13.02.2023 | Research Article-Mechanical Engineering

Optimization of Cutting Parameters and Result Predictions with Response Surface Methodology, Individual and Ensemble Machine Learning Algorithms in End Milling of AISI 321

verfasst von: Deniz Demircioglu Diren, Neslihan Ozsoy, Murat Ozsoy, Huseyin Pehlivan

Erschienen in: Arabian Journal for Science and Engineering | Ausgabe 9/2023

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Abstract

Optimizing the parameters in the milling method is important in terms of cost, energy, and time. The forces that arise during milling cause undesirable results, such as tool wear and energy loss. In this study, cutting parameters were optimized during the milling of AISI 321 material. Cutting speed (60, 70, 80 m/min), feed per tooth (0.04, 0.05, 0.06 mm/tooth), and depth of cut (0.25, 0.5, 0.75 mm) were selected as input parameters. Cutting force in the X and Y axes and the surface roughness were selected as the output parameters. Optimum parameters (60.80 m/min for cutting speed, 0.04 mm/tooth for feed per tooth, and 0.25 mm for depth of cut) were found using response surface methodology. The effect of cutting parameters was calculated by analysis of variance. The most influential parameters were found, depth of cut as 87.49% for cutting force on the X-axis, 86.48% on the Y-axis, and for surface roughness, the cutting speed with 36.48%. Prediction models are compared to choose the best model. Individual (Neural network, decision tree, and k-nearest neighbor algorithms) and ensemble methods (vote) from machine learning and response surface methodology from statistical methods were used for models. The error rates of the models were compared according to the mean absolute percentage error performance criterion. The lowest MAPE values were obtained with the vote method 11.163% in the X-axis force, the artificial neural network algorithm with 7.749% in the Y-axis force, and RSM with 0.93% in the surface roughness.

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Literatur
1.
Zurück zum Zitat Gale, W.F.; Totemeier, T.C.: Smithells Metals Reference Book. Heinemann, Butterworth (2004) Gale, W.F.; Totemeier, T.C.: Smithells Metals Reference Book. Heinemann, Butterworth (2004)
29.
Zurück zum Zitat Kuntoğlu, M.; Aslan, A.; Sağlam, H.; Pimenov, D.Y.; Giasin, K.; Mikolajczyk, T.: Optimization and analysis of surface roughness, flank wear and 5 different sensorial data via tool condition monitoring system in turning of AISI 5140. Sensors (2020). https://doi.org/10.3390/s20164377CrossRef Kuntoğlu, M.; Aslan, A.; Sağlam, H.; Pimenov, D.Y.; Giasin, K.; Mikolajczyk, T.: Optimization and analysis of surface roughness, flank wear and 5 different sensorial data via tool condition monitoring system in turning of AISI 5140. Sensors (2020). https://​doi.​org/​10.​3390/​s20164377CrossRef
30.
31.
Zurück zum Zitat Kuntoğlu, M.; Aslan, A.; Pimenov, D.Y.; Giasin, K.; Mikolajczyk, T.; Sharma, S.: Modeling of cutting parameters and tool geometry for multi-criteria optimization of surface roughness and vibration via response surface methodology in turning of AISI 5140 steel. Materials (2020). https://doi.org/10.3390/ma13194242CrossRef Kuntoğlu, M.; Aslan, A.; Pimenov, D.Y.; Giasin, K.; Mikolajczyk, T.; Sharma, S.: Modeling of cutting parameters and tool geometry for multi-criteria optimization of surface roughness and vibration via response surface methodology in turning of AISI 5140 steel. Materials (2020). https://​doi.​org/​10.​3390/​ma13194242CrossRef
36.
Zurück zum Zitat Öztemel, E.: Yapay Sinir Ağları, 1st edn. Papatya Yayınları, Istanbul (2003) Öztemel, E.: Yapay Sinir Ağları, 1st edn. Papatya Yayınları, Istanbul (2003)
37.
Zurück zum Zitat Mitchell, T.M.: Machine Learning, 1st edn. McGraw-Hill Science, New York (1997)MATH Mitchell, T.M.: Machine Learning, 1st edn. McGraw-Hill Science, New York (1997)MATH
42.
Zurück zum Zitat Lewis, C.D.: Industrial and Business Forecasting Methods. Butterworths Publishing, London (1982) Lewis, C.D.: Industrial and Business Forecasting Methods. Butterworths Publishing, London (1982)
Metadaten
Titel
Optimization of Cutting Parameters and Result Predictions with Response Surface Methodology, Individual and Ensemble Machine Learning Algorithms in End Milling of AISI 321
verfasst von
Deniz Demircioglu Diren
Neslihan Ozsoy
Murat Ozsoy
Huseyin Pehlivan
Publikationsdatum
13.02.2023
Verlag
Springer Berlin Heidelberg
Erschienen in
Arabian Journal for Science and Engineering / Ausgabe 9/2023
Print ISSN: 2193-567X
Elektronische ISSN: 2191-4281
DOI
https://doi.org/10.1007/s13369-023-07642-x

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