Araştırma Makalesi

Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm

Cilt: 10 Sayı: 1 19 Haziran 2026
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Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm

Öz

In this study, the turning processes of Polyamide 6 (PA 6) and High-Density Polyethylene (HDPE) engineering polymers were analyzed by integrating experimental, mathematical, and machine learning-based methods. Within the framework of a Taguchi L8 experimental design, the effects of cutting speed (Vc), cutting depth (ap), and feed rate (f) on cutting forces (Fc) were investigated. ANOVA results revealed that cutting depth was the most dominant factor for both materials (44.49% for PA 6 and 64.49% for HDPE), while PA 6 was found to be twice as sensitive to feed rate variations compared to HDPE.Through the Kienzle mathematical approach, specific cutting force coefficients (kc1.1) were calculated as 152.45 N/mm^2 for PA 6 and 74.89 N/mm^2 for HDPE. However, to overcome the predictive limitations of traditional models caused by the viscoelastic and non-linear behavior of polymers, the Random Forest (RF) regression algorithm was incorporated into the process. To enhance the model's generalization capability under limited data conditions, a Data Augmentation technique was employed.The findings demonstrated that the RF model, supported by data augmentation, achieved remarkably high average accuracy rates of 99.09% for HDPE and 91.53% for PA 6. This research proves that hybrid approaches, where traditional physical models are supported by machine learning, provide a high-reliability force prediction infrastructure for the precision manufacturing of polymer-based components and digital twin applications.

Anahtar Kelimeler

Destekleyen Kurum

Kırıkkale University

Proje Numarası

This research received no specific grant.

Etik Beyan

The authors declare that this study does not require ethical approval as it does not involve human or animal subjects.

Teşekkür

The author would like to thank Kırıkkale University for providing the laboratory facilities and support during the experimental phase of this study.

Kaynakça

  1. Xiao, K. Q., & Zhang, L. C. The role of viscous deformation in the machining of polymers. International Journal of Mechanical Sciences, 44(11), 2317-2336, 2002, doi: 10.1016/S0020-7403(02)00178-9.
  2. Sheikh-Ahmad, J. Y. Machining of Polymer Composites. Springer Science & Business Media, ISBN 978-0-387-35539-9, 2009, doi: 10.1007/978-0-387-68619-6.
  3. Jagtap, T. U., & Mandave, H. A. Machining of Plastics: A Review. International Journal of Engineering Research and General Science, 3(2), 2091-2730, 2015.
  4. Davim, J. P., & Mata, F. A comparative evaluation of the turning of reinforced and unreinforced polyamide. International Journal of Advanced Manufacturing Technology, 33(9-10), 911-914, 2007, doi: 10.1007/s00170-006-0520-8.
  5. Kaddeche, M., Chaoui, K., & Yallese, M. A. Cutting parameters effects on the machining of two high density polyethylene pipes resins. Mechanics & Industry, 13(5), 307-316, 2012, doi: 10.1051/meca/2012029.
  6. Gaitonde, V. N., Karnik, S. R., Mata, F., & Davim, J. P. Modeling and Analysis of Machinability Characteristics in PA6 and PA66 GF30 Polyamides through Artificial Neural Network. Journal of Thermoplastic Composite Materials, 23(3), 313-336, 2010, doi: 10.1177/0892705709349319.
  7. Madić, M., Radovanović, M., & Marković, D. Optimization of Surface Roughness When Turning Polyamide Using ANN-IHSA Approach. International Journal of Engineering and Technology, 1(4), 432-443, 2012.
  8. Chabbi, A., Yallese, M. A., Nouioua, M., Meddour, I., Mabrouki, T., & Girardin, F. Modeling and optimization of turning process parameters during the cutting of polymer (POM C) based on RSM, ANN, and DF methods. International Journal of Advanced Manufacturing Technology, 91(5-8), 2267-2290, 2017, doi: 10.1007/s00170-016-9858-8.

Ayrıntılar

Birincil Dil

Türkçe

Konular

Makine Mühendisliğinde Optimizasyon Teknikleri, Endüstri Mühendisliği, Makine İle İşleme, Üretimde Optimizasyon

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

19 Haziran 2026

Gönderilme Tarihi

28 Nisan 2026

Kabul Tarihi

15 Haziran 2026

Yayımlandığı Sayı

Yıl 2026 Cilt: 10 Sayı: 1

Kaynak Göster

APA
Er, A. O. (2026). Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm. International Scientific and Vocational Studies Journal, 10(1), 26-39. https://doi.org/10.47897/bilmes.1912992
AMA
1.Er AO. Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm. ISVOS. 2026;10(1):26-39. doi:10.47897/bilmes.1912992
Chicago
Er, Ali Osman. 2026. “Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm”. International Scientific and Vocational Studies Journal 10 (1): 26-39. https://doi.org/10.47897/bilmes.1912992.
EndNote
Er AO (01 Haziran 2026) Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm. International Scientific and Vocational Studies Journal 10 1 26–39.
IEEE
[1]A. O. Er, “Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm”, ISVOS, c. 10, sy 1, ss. 26–39, Haz. 2026, doi: 10.47897/bilmes.1912992.
ISNAD
Er, Ali Osman. “Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm”. International Scientific and Vocational Studies Journal 10/1 (01 Haziran 2026): 26-39. https://doi.org/10.47897/bilmes.1912992.
JAMA
1.Er AO. Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm. ISVOS. 2026;10:26–39.
MLA
Er, Ali Osman. “Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm”. International Scientific and Vocational Studies Journal, c. 10, sy 1, Haziran 2026, ss. 26-39, doi:10.47897/bilmes.1912992.
Vancouver
1.Ali Osman Er. Hybrid Modeling of Cutting Forces in Turning of Engineering Polymers Using Kienzle Approach and Data Augmentation-Enhanced Random Forest Algorithm. ISVOS. 01 Haziran 2026;10(1):26-39. doi:10.47897/bilmes.1912992

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