Yıl: 2018 Cilt: 6 Sayı: 4 Sayfa Aralığı: 282 - 288 Metin Dili: İngilizce İndeks Tarihi: 24-09-2019

Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals

Öz:
On machined parts, major indication of surface quality is surface roughness and also surface quality is one of the most specifiedcustomer requirements. In the turning process, the importance of machining parameter choice is enhancing, as it controls the requiredsurface quality. To obtain the better surface quality, the most essential control parameters are tool overhang and tool geometry in turningoperations. The goal of this study was to develop an empirical multiple regression models for prediction of surface roughness (Ra) fromthe input variables in finishing turning of 42CrMo4 steel. The main input parameters of this model are tool overhang and tool geometrysuch as tool nose radius, approaching angle, and rake angle in negative direction. Regression analysis with linear, quadratic andexponential data transformation is applied so as to find the best suitable model. The best results according to comparison of modelsconsidering determination coefficient (R 2 ) are achieved with quadratic regression model. In addition, tool nose radius was determined asthe most effective parameter on turning by variance analysis (ANOVA). Cutting experiments and statistical analysis demonstrate that themodel developed in this work produces smaller errors than those from some of the existing models and have a satisfactory goodness in allthree models construction and verification.
Anahtar Kelime:

Konular: Bilgisayar Bilimleri, Yapay Zeka
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA Neseli S, Yalçın G, YALDIZ S (2018). Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. , 282 - 288.
Chicago Neseli Suleyman,Yalçın Gökhan,YALDIZ SÜLEYMAN Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. (2018): 282 - 288.
MLA Neseli Suleyman,Yalçın Gökhan,YALDIZ SÜLEYMAN Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. , 2018, ss.282 - 288.
AMA Neseli S,Yalçın G,YALDIZ S Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. . 2018; 282 - 288.
Vancouver Neseli S,Yalçın G,YALDIZ S Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. . 2018; 282 - 288.
IEEE Neseli S,Yalçın G,YALDIZ S "Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals." , ss.282 - 288, 2018.
ISNAD Neseli, Suleyman vd. "Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals". (2018), 282-288.
APA Neseli S, Yalçın G, YALDIZ S (2018). Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. International Journal of Intelligent Systems and Applications in Engineering, 6(4), 282 - 288.
Chicago Neseli Suleyman,Yalçın Gökhan,YALDIZ SÜLEYMAN Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. International Journal of Intelligent Systems and Applications in Engineering 6, no.4 (2018): 282 - 288.
MLA Neseli Suleyman,Yalçın Gökhan,YALDIZ SÜLEYMAN Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. International Journal of Intelligent Systems and Applications in Engineering, vol.6, no.4, 2018, ss.282 - 288.
AMA Neseli S,Yalçın G,YALDIZ S Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. International Journal of Intelligent Systems and Applications in Engineering. 2018; 6(4): 282 - 288.
Vancouver Neseli S,Yalçın G,YALDIZ S Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals. International Journal of Intelligent Systems and Applications in Engineering. 2018; 6(4): 282 - 288.
IEEE Neseli S,Yalçın G,YALDIZ S "Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals." International Journal of Intelligent Systems and Applications in Engineering, 6, ss.282 - 288, 2018.
ISNAD Neseli, Suleyman vd. "Surface Roughness Estimation for Turning Operation Based on Different Regression Models Using Vibration Signals". International Journal of Intelligent Systems and Applications in Engineering 6/4 (2018), 282-288.