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1-4 of 4
Keywords: Prediction
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Journal Articles
Optimization and prediction of surface roughness in the milling process of aluminum alloy using Taguchi method and artificial neural network
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Multidiscipline Modeling in Materials and Structures (2025) 21 (5): 1204–1216.
Published: 08 May 2025
...Mustafa Ayyıldız Purpose This paper explores the machining of aluminum alloy, focusing on optimizing and predicting surface roughness through advanced methods. The study investigates the optimization and prediction of surface roughness in milling aluminum alloy using cryogenically treated and non...
Journal Articles
Predictive modeling of additively manufactured carbon fiber-PLA mechanical components via ML
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Multidiscipline Modeling in Materials and Structures (2025) 21 (5): 1092–1110.
Published: 04 April 2025
...Mahmut Ozkul; Fatma Kuncan; Osman Ulkir Purpose The study aims to predict and optimize two critical parameters, surface roughness and energy consumption, in additive manufacturing (AM) processes using carbon fiber-reinforced polylactic acid (PLA) material. These parameters are essential...
Journal Articles
Prediction of cutting performance in slot milling process of AISI 316 considering energy efficiency using experimental and machine learning methods
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Multidiscipline Modeling in Materials and Structures (2025) 21 (4): 850–866.
Published: 13 March 2025
... manufacturing practices. Highlights Slot milling cutting performance of AISI 316 Measurement of cutting power, cutting force and surface roughness Prediction with Regression and ANN methods Kutay Aydın can be contacted at: kutay.aydin@amasya.edu.tr 09 12 2024 18 01 2025 10 02...
Journal Articles
The Development of Surface Roughness Model When Turning Hardened Steel with Ceramic Cutting Tool Using Response Methodology
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Multidiscipline Modeling in Materials and Structures (2008) 4 (3): 291–304.
Published: 01 March 2008
... um for KY1615, KY4400 cutting tools, respectively. The predicted surface roughness was found to be very close to experimentally observed ones at 95% confidence level. Moreover, analysis of variance indicated that squares terms were significant but interaction terms were insignificant for both cutting...
