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Intelligent model-based optimization of cutting parameters for high quality turning of hardened AISI D2

Published online by Cambridge University Press:  03 March 2020

Vahid Pourmostaghimi
Affiliation:
Department of Manufacturing and Production Engineering, Faculty of Mechanical Engineering, University of Tabriz, Tabriz, Iran
Mohammad Zadshakoyan*
Affiliation:
Department of Manufacturing and Production Engineering, Faculty of Mechanical Engineering, University of Tabriz, Tabriz, Iran
Mohammad Ali Badamchizadeh
Affiliation:
Control Engineering Department, Faculty of Electrical and Computer Engineering, University of Tabriz, Tabriz, Iran
*
Author for correspondence: Mohammad Zadshakoyan, E-mail: [email protected]

Abstract

This paper proposes an intelligent model-based optimization methodology for optimizing the production cost and material removal rate subjected to surface quality constraint in turning operation of hardened AISI D2. Unlike traditional approaches, this paper deals with finding optimum cutting parameters considering the real condition of the cutting tool. Tool flank wear is predicted by the model obtained using genetic programming. On the basis of the predicted flank wear value, the surface roughness of work piece is estimated by neural networks. Applying the particle swarm optimization algorithm, the optimum machining parameters are determined. The simulation and experimental results show that machining with proposed intelligent optimization methodology has higher efficiency than conventional techniques with constant optimized cutting parameters.

Type
Research Article
Copyright
Copyright © Cambridge University Press 2020

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References

Abellan, J, Romero, F, Siller, H, Estruch, A and Vila, C (2008) Adaptive control optimization of cutting parameters for high quality machining operations based on neural networks and search algorithms. In Jesus Aramburo and Antonio Ramirez Trevino (eds), Advances in Robotics, Automation and Control. Rijeka, Croatia: InTech, pp. 120.Google Scholar
Adeniran, AA and El Ferik, S (2017) A reinforced combinatorial particle swarm optimization based multimodel identification of nonlinear systems. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 31, 327358.CrossRefGoogle Scholar
Asadi, R, Asadi, M and Kareem, SA (2016) An efficient semisupervised feedforward neural network clustering. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 30, 115.CrossRefGoogle Scholar
Babić, BR, Nešić, N and Miljković, Z (2011) Automatic feature recognition using artificial neural networks to integrate design and manufacturing: review of automatic feature recognition systems. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 25, 289304.CrossRefGoogle Scholar
Badamchizadeh, M, Nikdel, N and Kouzehgar, M (2010) Comparison of genetic algorithm and particle swarm optimization for data fusion method based on Kalman filter. International Journal of Artificial Intelligence 5, 6778.Google Scholar
Brown, KN and Cagan, J (1997) Optimized process planning by generative simulated annealing. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 11, 219235.CrossRefGoogle Scholar
Chandrasekaran, M, Muralidhar, M and Dixit, U (2014) Online optimization of a finish turning process: strategy and experimental validation. The International Journal of Advanced Manufacturing Technology 75, 783791.CrossRefGoogle Scholar
Chen, H-Y and Chang, H-C (2016) Consumers’ perception-oriented product form design using multiple regression analysis and backpropagation neural network. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 30, 6477.CrossRefGoogle Scholar
Chiang, S-T, Liu, D-I, Lee, A-C and Chieng, W-H (1995) Adaptive control optimization in end milling using neural networks. International Journal of Machine Tools and Manufacture 35, 637660.Google Scholar
Dym, CL and Levitt, RE (1994) On the evolution of CAE research. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 8, 275282.CrossRefGoogle Scholar
Eby, D, Averill, RC, Punch, WF and Goodman, ED (1999) Optimal design of flywheels using an injection island genetic algorithm. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 13, 327340.CrossRefGoogle Scholar
Ekárt, A and Márkus, A (2003) Using genetic programming and decision trees for generating structural descriptions of four bar mechanisms. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 17, 205220.CrossRefGoogle Scholar
Goel, AK (2013) A 30-year case study and 15 principles: implications of an artificial intelligence methodology for functional modeling. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 27, 203215.CrossRefGoogle Scholar
Hu, J, Goodman, ED, Li, S and Rosenberg, R (2008) Automated synthesis of mechanical vibration absorbers using genetic programming. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 22, 207217.CrossRefGoogle Scholar
Hu, Y-J, Wang, Y, Wang, Z-L, Wang, Y-Q and Zhang, B-C (2014) Machining scheme selection based on a new discrete particle swarm optimization and analytic hierarchy process. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 28, 7182.CrossRefGoogle Scholar
Ivester, RW and Heigel, JC (2000) Smart Machining Systems: Robust Optimization and Adaptive Control Optimization for Turning Operations. Transactions of NAMRI/SME, Vol. 35. Cleveland, United States of America: Society of Manufacturing Engineers, pp. 505512.Google Scholar
Jadid, MN and Fairbairn, DR (1994) The application of neural network techniques to structural analysis by implementing an adaptive finite-element mesh generation. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 8, 177191.CrossRefGoogle Scholar
Kant, G and Sangwan, KS (2015) Predictive modelling and optimization of machining parameters to minimize surface roughness using artificial neural network coupled with genetic algorithm. Procedia CIRP 31, 453458.CrossRefGoogle Scholar
Keles, HY (2018) Embedding parts in shape grammars using a parallel particle swarm optimization method on graphics processing units. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 32, 256268.CrossRefGoogle Scholar
Ko, TJ and Cho, DW (1998) Adaptive optimization of face milling operations using neural networks. Journal of Manufacturing Science and Engineering 120, 443451.CrossRefGoogle Scholar
Ko, TJ and Kim, HS (1998) Autonomous cutting parameter regulation using adaptive modeling and genetic algorithms. Precision Engineering 22, 243251.CrossRefGoogle Scholar
Koren, Y (1988) Adaptive control systems for machining. Paper Presented at the American Control Conference, IEEE, Atlanta, United States of America, pp. 11611167.CrossRefGoogle Scholar
Koza, JR, Keane, MA, Streeter, MJ, Adams, TP and Jones, LW (2004) Invention and creativity in automated design by means of genetic programming. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 18, 245269.CrossRefGoogle Scholar
Koza, JR, Al-Sakran, SH and Jones, LW (2008) Automated ab initio synthesis of complete designs of four patented optical lens systems by means of genetic programming. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 22, 249273.CrossRefGoogle Scholar
Lee, HC and Tang, MX (2009) Evolving product form designs using parametric shape grammars integrated with genetic programming. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 23, 131158.CrossRefGoogle Scholar
Liu, Y and Wang, C (1999) Neural network based adaptive control and optimisation in the milling process. The International Journal of Advanced Manufacturing Technology 15, 791795.CrossRefGoogle Scholar
Matthews, PC, Standingford, DW, Holden, CM and Wallace, KM (2006) Learning inexpensive parametric design models using an augmented genetic programming technique. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 20, 118.CrossRefGoogle Scholar
Nikdel, P, Hosseinpour, M, Badamchizadeh, MA and Akbari, M (2014) Improved Takagi–Sugeno fuzzy model-based control of flexible joint robot via Hybrid-Taguchi genetic algorithm. Engineering Applications of Artificial Intelligence 33, 1220.CrossRefGoogle Scholar
Pourmostaghimi, V and Zadshakoyan, M (2019) Optimization of cutting parameters during hard turning using evolutionary algorithms. In Kumar, Kaushik Davim, J. Paulo (eds), Optimization for Engineering Problems. United States of America: Wiley Online Library, pp. 7799.CrossRefGoogle Scholar
Rashid, WB, Goel, S, Luo, X and Ritchie, JM (2013) An experimental investigation for the improvement of attainable surface roughness during hard turning process. Proceedings of the Institution of Mechanical Engineers, Part B: Journal of Engineering Manufacture 227, 338342.CrossRefGoogle Scholar
Rossi, A and Lanzetta, M (2013) Nonpermutation flow line scheduling by ant colony optimization. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 27, 349357.CrossRefGoogle Scholar
Saini, S, Ahuja, IS and Sharma, VS (2012) Residual stresses, surface roughness, and tool wear in hard turning: a comprehensive review. Materials and Manufacturing Processes 27, 583598.CrossRefGoogle Scholar
Shukla, R and Singh, D (2017) Experimentation investigation of abrasive water jet machining parameters using Taguchi and Evolutionary optimization techniques. Swarm and Evolutionary Computation 32, 167183.CrossRefGoogle Scholar
Silva, JA, Abellán-Nebot, JV, Siller, HR and Guedea-Elizalde, F (2014) Adaptive control optimisation system for minimising production cost in hard milling operations. International Journal of Computer Integrated Manufacturing 27, 348360.CrossRefGoogle Scholar
Spector, L (2008) Introduction to the Special Issue on genetic programming for human-competitive designs. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 22, 183184.CrossRefGoogle Scholar
Spector, L and Klein, J (2008) Machine invention of quantum computing circuits by means of genetic programming. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 22, 275283.CrossRefGoogle Scholar
Su, Z and Yan, W (2015) A fast genetic algorithm for solving architectural design optimization problems. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 29, 457469.CrossRefGoogle Scholar
Zadshakoyan, M and Pourmostaghimi, V (2013) Genetic equation for the prediction of tool–chip contact length in orthogonal cutting. Engineering Applications of Artificial Intelligence 26, 17251730.CrossRefGoogle Scholar
Zeng, K, Tan, Z, Dong, M and Yang, P (2014) Probability increment based swarm optimization for combinatorial optimization with application to printed circuit board assembly. Artificial Intelligence for Engineering Design, Analysis and Manufacturing 28, 429437.CrossRefGoogle Scholar
Zuperl, U and Cus, F (2003) Optimization of cutting conditions during cutting by using neural networks. Robotics and Computer-Integrated Manufacturing 19, 189199.CrossRefGoogle Scholar