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Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods
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B. ÖZTÜRK Et Al. , "Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods," Multidiscipline Modeling in Materials and Structures , vol.21, no.4, pp.850-866, 2025

ÖZTÜRK, B. Et Al. 2025. Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods. Multidiscipline Modeling in Materials and Structures , vol.21, no.4 , 850-866.

ÖZTÜRK, B., Aydın, K., & Uğur, L., (2025). Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods. Multidiscipline Modeling in Materials and Structures , vol.21, no.4, 850-866.

ÖZTÜRK, BURAK, Kutay Aydın, And Levent Uğur. "Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods," Multidiscipline Modeling in Materials and Structures , vol.21, no.4, 850-866, 2025

ÖZTÜRK, BURAK Et Al. "Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods." Multidiscipline Modeling in Materials and Structures , vol.21, no.4, pp.850-866, 2025

ÖZTÜRK, B. Aydın, K. And Uğur, L. (2025) . "Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods." Multidiscipline Modeling in Materials and Structures , vol.21, no.4, pp.850-866.

@article{article, author={BURAK ÖZTÜRK Et Al. }, title={Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods}, journal={Multidiscipline Modeling in Materials and Structures}, year=2025, pages={850-866} }