Indirect prediction of flank wear using ANNs in turning of CK45
Subject Areas :
Journal of Simulation and Analysis of Novel Technologies in Mechanical Engineering
Hossein Sepehri
1
1 - Department of Mechanical Engineering, Khomeinishahr Branch, Islamic Azad University, Isfahan, 84175-119, Iran
Received: 2022-05-25
Accepted : 2022-06-21
Published : 2022-06-01
Keywords:
Cutting Forces,
Tool wear,
cutting condition,
Abstract :
This work aims to develop models to investigate the effects of flank wear on cutting forces during the turning of ck45 steel using carbide tools. Therefore, various turning experiments were performed with different cutting conditions. Flank wear and cutting forces were recorded at different stages of each experiment. The data obtained from the experiments showed that the tangential component of the cutting force was not significantly correlated with the tool flank wear. Instead, there was a good correlation between the axial and radial components of the cutting forces against flank wear. Since the cutting forces depend on both the cutting conditions and the tool flank wear, different cutting forces and cutting condition ratios were used to find the cutting force models that are more sensitive to tool wear. These ratios were used to develop artificial neural network models. The statistical results showed that the tool wear obtained from the artificial neural network models was very close to the results obtained from the experiments. In addition, the accuracy of the models including the axial component of cutting force was higher than in other models.
References:
Choudhury, S. K. and Kishore, K. K., (2000). Tool wear measurement in turning using force ratio. International Journal of Machine Tools and Manufacture, 40, 899-909.
Dan, L. and Mathew, J., (1990). Tool wear and failure monitoring techniques for turning-A review. International Journal of Machine Tools and Manufacture, 30, 579-598.
Cook, N.H., (1980). Tool wear sensors. Wear, 62, 49-57.
Dutta, S. K. Pal, S. Mukhopadhyay, R. Sen, (2013). Application of digital image processing in tool condition monitoring: a review. CIRP Journal of Manufacturing Science and Technology, 6(3), 212–232.
Chalwa, R. and Datar, S. B., (1980). Deduction of flank and crater wear from measurements of the total volumetric wear rates of radioactive tools. Wear, 58, 213-222.
Choudhury, S. K., Jain, V. K. and Rama Rao, Ch. V. V, (1999). On-line monitoring of tool wear in turning using a neural network. International Journal of Machine Tools and Manufacture, 39, 489-504.
El Gomayal, J.I. and Bregger, K.D., (1986). On-line tool-wear sensing for turning operations. Journal of Engineering for Industry, 108(1), 44-47.
Drouillet C, Karandikar J, Nath C, et al., (2016). Tool life predictions in milling using spindle power with the neural network technique. Journal of Manufacturing Process, 22, 161–168.
Cuppin, D., Derrico, G., and Rutelli, G., (2001). Tool wear monitoring based on cutting power measurement. Wear, 39(5), 981-992.
Khanna, C. Agrawal, M. Dogra, C. I. Pruncu, (2020). Evaluation of tool wear, energy consumption, and surface roughness during turning of Inconel 718 using sustainable machining technique, Journal of Materials Research and Technology, 9(3), 5794-5804.
Balla Srinivasa Prasad, M. Prakash Babu, (2017). Correlation between vibration amplitude and tool wear in turning: Numerical and experimental analysis, Engineering Science and Technology, an International Journal, 20(1), 197-211.
Twardowski, M. Tabaszewski, M. W. Pikuła, A. F. Czyryca, (2021). Identification of tool wear using acoustic emission signal and machine learning methods, Journal of the International Societies for Precision Engineering and Nanotechnology, 72, 738-744.
Koren, Y. and Lenz, E., (1970). A mathematical model for the flank wear while turning steel with carbide tools, CIRP seminar, Trondheim.
Sumit Kanti Sikdar, Mingyuan Chen, (2002). Relationship between tool flank wear area and component forces in single-point turning, Journal of Materials Processing Technology, 128(1), 210-215.
S. Sharma, S.K. Sharma, A.K. Sharma, (2008). Cutting tool wear estimation for turning, Journal of Intelligent Manufacturing, 19(1), 99–108.
Jaharah A. Ghani, Muhammad Rizal, Mohd Zaki Nuawi, Che Hassan Che Haron, Mariyam Jameelah Ghazali, Mohd Nizam Ab Rahman, Online Cutting Tool Wear Monitoring using I-Kaz Method and New Regression Model, (2010). Advanced Materials Research, 126, 738-743.
Vallabh D. Patel, Anish H. Gandhi, (2019). Modeling of cutting forces considering progressive flank wear in finish turning of hardened AISI D2 steel with CBN tool, The International Journal of Advanced Manufacturing Technology, 104(1), 1-14.
Baig, S. Javed, M. Khaisar, (2021). Development of an ANN model for prediction of tool wear in turning EN9 and EN24 steel alloy, Advances in Mechanical Engineering, 13(6), 1–14
S. Alajmi, A. M. Almeshal, (2021). Modeling of Cutting Force in the Turning of AISI 4340 Using Gaussian Process Regression Algorithm, Applied Sciences, 11, 4055.
Siddhpura and R. Paurobally, (2013). A review of flank wear prediction methods for tool condition monitoring in a turning process, The International Journal of Advanced Manufacturing Technology, 65(1–4), 371–393.
Zhang, C. Guo, (2016). Modeling Flank Wear Progression Based on Cutting Force and Energy Prediction in Turning Process, Procedia Manufacturing, 5, 536–545.
Hanief, M.F. Wani, M.S. Charoo, (2017). Modeling and prediction of cutting forces during the turning of red brass (C23000) using ANN and regression analysis, Engineering Science and Technology, 20, 1220–1226.
Kolahdooz, A. & Loh-Mousavi, M. (2015). Optimization of Microstructure and Mechanical Properties of Al-A360 Produced by Semi-Solid Casting, Journal of Simulation and Analysis of Novel Technologies in Mechanical Engineering, 8(1), 59-71, (in Persian).
Manoochehri M. & Kolahan, F. (2014). Integration of artificial neural network and simulated annealing algorithm to optimize deep drawing process, International Journal of Advanced Manufacturing Technology, 73(1), 241-249.
Zohoor, , Shahverdi, H. Tafakori, A., (2010). Optimization of Flash, Billet Dimensions and Friction Factor in Closed Die Cold Forging Process, Journal of Simulation and Analysis of Novel Technologies in Mechanical Engineering, 3(1), 71-80, (in Persian).
Azimi, A. Kolahdooz, S.A. Eftekhari, (2016). Optimization of Material Removal Rate in Electrical Discharge Machining Alloy on DIN1.2080 with the Neural Network and Genetic Algorithm, Journal of Simulation and Analysis of Novel Technologies in Mechanical Engineering, 9(1), 77-92, (in Persian).
Menhaj M.B. (2000). fundamentals of neural networks vol. 1: Computational intelligence. Amirkabir University of Technology Press, (in Persian).
Woong Youn, J. and Yang Yang, M., (2001). A study on the relationships between static/dynamic cutting force components and tool wear, Journal of Manufacturing Science and Engineering, 123, 196-205.