Modelling and prediction of surface roughness and power consumption using parallel extreme learning machine based particle swarm optimization
Prediction model allows the machinist to determine the values of the cutting performance before machining. Modelling using improved extreme learning machine based particle swarm optimization, IPSO-ELM has less parameters to adjust and also takes real number as particles while decreasing the norm of...
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Main Authors: | Nooraziah Ahmad, Tiagrajah V. Janahiraman |
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Format: | Book Section |
Published: |
2014
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Online Access: | http://discol.umk.edu.my/id/eprint/8600/ |
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