This paper presents the Optimization of Non-Traditional Machining (NTM) process for the Electrochemical Grinding Operation by Particle Swarm Optimization Technique. The main aim of the work is to find the optimum values of machining parameters. The Non-Traditional or Unconventional Machining Process has proved to be better than conventional machining process to a large extent.

"/> Conventional Machining; Electrochemical Grinding Operation; Non-Traditional Machining; Partical Swarm Otimization; Parametric Optimization

"/> This paper presents the Optimization of Non-Traditional Machining (NTM) process for the Electrochemical Grinding Operation by Particle Swarm Optimization Technique. The main aim of the work is to find the optimum values of machining parameters. The Non-Traditional or Unconventional Machining Process has proved to be better than conventional machining process to a large extent.

"/> This paper presents the Optimization of Non-Traditional Machining (NTM) process for the Electrochemical Grinding Operation by Particle Swarm Optimization Technique. The main aim of the work is to find the optimum values of machining parameters. The Non-Traditional or Unconventional Machining Process has proved to be better than conventional machining process to a large extent.

"/> This paper presents the Optimization of Non-Traditional Machining (NTM) process for the Electrochemical Grinding Operation by Particle Swarm Optimization Technique. The main aim of the work is to find the optimum values of machining parameters. The Non-Traditional or Unconventional Machining Process has proved to be better than conventional machining process to a large extent.

"/>

Parametric Optimization of Electrochemical Grinding Operation by Particle Swarm Optimization Technique

International Journal of Mechanical Engineering
© 2015 by SSRG - IJME Journal
Volume 2 Issue 4
Year of Publication : 2015
Authors : Mr. Sumit Bhandari, Mr. Nitin Shukla
pdf
How to Cite?

Mr. Sumit Bhandari, Mr. Nitin Shukla, "Parametric Optimization of Electrochemical Grinding Operation by Particle Swarm Optimization Technique," SSRG International Journal of Mechanical Engineering, vol. 2,  no. 4, pp. 1-5, 2015. Crossref, https://doi.org/10.14445/23488360/IJME-V2I4P101

Abstract:

This paper presents the Optimization of Non-Traditional Machining (NTM) process for the Electrochemical Grinding Operation by Particle Swarm Optimization Technique. The main aim of the work is to find the optimum values of machining parameters. The Non-Traditional or Unconventional Machining Process has proved to be better than conventional machining process to a large extent.

Keywords:

Conventional Machining; Electrochemical Grinding Operation; Non-Traditional Machining; Partical Swarm Otimization; Parametric Optimization

References:

[1]    Jain, V.K., Advanced Machining Processes, Allied Publishers Pvt. Ltd, New Delhi,       2002.
[2]    Ghosh, A. and Mallik, A.K., Manufacturing Science. East West Press Private Limited, New Delhi, 2008.
[3]    Jain, R.K., Production Technology, Khanna Publishers, New Delhi, 2005.
[4]    Pandey, P.C. and Shan, H.S., Modern Machining Processes, Tata MacGraw-Hill     Publishing Company Limited, New Delhi, 2005.
[5]    Kamaruddin, S., Khan, Z.A., and Wan, K.S., The use of the Taguchi method in   determining the optimum plastic injection moulding parameters for the production of a consumer product, Jurnal Mekanikal, 18, 98-110 , 2004.
[6]    Zain, A.M., Haron, H. and Sharif, S., Estimation of the minimum machining performance in the abrasive water jet machining using integrated ANN-SA, Expert Systems with Applications, 38, 8316-8326, 2011.
[7]    Chen, H., Lin, J., Yang, Y. and Tsai, C., Optimization of wire electrical discharge   machining for pure tungsten using a neural network integrated simulated annealing approach, Expert Systems with Applications, 37, 7147-7153 , 2010.
[8]    Yusup, N., Zain, A.M. and Hashim, S.J.M., Evolutionary techniques in optimizing machining parameters: Review and recent applications (2007-2011), Expert Systems with Applications, 39, 9909-9927, 2012.
[9]    Jain, N.K., Jain, V.K. and Deb, K., Optimization of process parameters of mechanical type advanced machining processes using genetic algorithms, International Journal of Machine Tools & Manufacture, 47, 900, 919, 2007.
[10]    Colorni, A., Dorigo, M. and Maniezzo, V., Distributed optimization by ant colonies, In: Proceedings of the ECAL’91 European Conference on Artificial Life, France, 134-142, 1991.
[11]    Karaboga, D., An idea based on honeybee swarm for numerical optimization, Technical Report TR06, Erciyes University, Engineering Faculty, Computer Engineering Department, 2005.
[12]    Karaboga, D. and Basturk, B., A modified artificial bee colony algorithm for real-parameter optimization, Information Sciences, 192, 120-142, 2012.
[13]    Shi, Y. and Eberhart, R.C., Emperical study of particle swarm optimization, Congress on Evolutionary Computation, Washington DC, 1945-1950, 1999.
[14]    Ma, H., An analysis of the equilibrium of migration models for biogeography-based optimization, Information Sciences, 180, 3444-3464, 2010.
[15]    Akay, B. and Karaboga, D., Artificial bee colony algorithm for large-scale problems and engineering design optimization, Journal of Intelligent Manufacturing, 23, 1001-1014, 2012.
[16]    Abd-El-Wahed, W.F., El-Shorbagy, M.A. and  Mousa, A., A local search based hybrid particle swarm optimization algorithm for multi objective optimization, Swarm and Evolutionary Computation, 3, 1-14, 2012.
[17]    Afzulpurkar, N.V. and  Navalertporn, T., Optimization of tile manufacturing process using particle swarm optimization, Swarm and Evolutionary computation, 1, 97-109, 2011.
[18]    Singh, C. and Wang, L., Environmental/economic power dispatch using a fuzzified multi-objective particle swarm optimization algorithm, Electric Power System Research, 77, 1654-1664, 2007.
[19]    Malviya, R. and Pratihar, D.K., Tuning of neural networks using particle swarm optimization to model MIG welding process, Swarm and Evolutionary Computation, 1, 223-235, 2011.
[20]    Sedighizadeh, D. and Masehian, E., Particle swarm optimization methods, taxonomy and applications, International Journal of Computer Theory and Engineering, 1, 1793-8201, 2009.
[21]    Tripathi, P.K., Bandyopadhyay, S. and Pal, S.K., Multi-objective particle swarm optimization with time variant inertia and acceleration coefficients, Information Sciences, 177, 5033-5049, 2007.
[22]    Deepa, S.N. and Sugumaran, G., Model order formulation of a multivariable discrete system using a modified particle swarm optimization approach, Swarm and Evolutionary Computation, 1, 204-212, 2011.
[23]    Galvez, A. and Iglesias, A., Particle swarm optimization for non-uniform rational B-spline surface reconstruction from clouds of 3D data points, Information Sciences, 192, 174-192, 2012.
[24]    http://www.teampolypd.blogspot.in/2009/11/electrochemical-grinding-image.html/  (retrieved on 14th April 2013).
[25]    Bhattacharya, B. and Sorkhel, S.K., Investigation for controlled electrochemical machining through response surface methodology-based approach, Journal of Materials Processing Technology, 86, 200-207, 1999.