The development of comprehensive grinding process models and computer-aided manufacturing provides a basis for realizing grinding parameter optimization. The variables affecting the economics of machining operations are numerous and include machine tool capacity, required workpiece geometry, cutting conditions such as speed, feed, and depth of cut, and many others. Approximate determination of the cutting conditions not only increases the production cost, but also diminishes the product quality. In this paper a new evolutionary computation technique, particle swarm optimization, is developed to optimize the grinding process parameters such as wheel speed, workpiece speed, depth of dressing, and lead of dressing, simultaneously subjected to a comprehensive set of process constraints, with an objective of minimizing the production cost and maximizing the production rate per workpiece, besides obtaining the finest possible surface finish. Optimal values of the machining conditions obtained by particle swarm optimization are compared with the results of genetic algorithm and quadratic programming techniques.
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November 2005
Technical Papers
Optimization of Surface Grinding Operations Using Particle Swarm Optimization Technique
P. Asokan,
P. Asokan
Department of Production Engineering,
National Institute of Technology
, Trichy 620 015, India
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N. Baskar,
N. Baskar
School of Mechanical Engineering, Shanmugha, Arts Science Technology and Research Academy,
e-mail: baskarnaresh@yahoo.co.in
(SASTRA) Deemed University
, Thanjavur 613 402, India
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K. Babu,
K. Babu
School of Mechanical Engineering, Shanmugha, Arts Science Technology and Research Academy,
(SASTRA) Deemed University
, Thanjavur 613 402, India
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G. Prabhaharan,
G. Prabhaharan
Department of Production Engineering,
National Institute of Technology
, Trichy 620 015, India
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R. Saravanan
R. Saravanan
Department of Mechanical Engineering,
J.J. College of Engineering and Technology
, Trichy 620 009, India
Search for other works by this author on:
P. Asokan
Department of Production Engineering,
National Institute of Technology
, Trichy 620 015, India
N. Baskar
School of Mechanical Engineering, Shanmugha, Arts Science Technology and Research Academy,
(SASTRA) Deemed University
, Thanjavur 613 402, Indiae-mail: baskarnaresh@yahoo.co.in
K. Babu
School of Mechanical Engineering, Shanmugha, Arts Science Technology and Research Academy,
(SASTRA) Deemed University
, Thanjavur 613 402, India
G. Prabhaharan
Department of Production Engineering,
National Institute of Technology
, Trichy 620 015, India
R. Saravanan
Department of Mechanical Engineering,
J.J. College of Engineering and Technology
, Trichy 620 009, IndiaJ. Manuf. Sci. Eng. Nov 2005, 127(4): 885-892 (8 pages)
Published Online: January 11, 2005
Article history
Received:
June 17, 2004
Revised:
January 11, 2005
Citation
Asokan, P., Baskar, N., Babu, K., Prabhaharan, G., and Saravanan, R. (January 11, 2005). "Optimization of Surface Grinding Operations Using Particle Swarm Optimization Technique." ASME. J. Manuf. Sci. Eng. November 2005; 127(4): 885–892. https://doi.org/10.1115/1.2037085
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