Optimization of machining parameters using genetic algorithm and experimental validation for end-milling operations
@article{Palanisamy2007OptimizationOM, title={Optimization of machining parameters using genetic algorithm and experimental validation for end-milling operations}, author={P. Palanisamy and I. Rajendran and S. Shanmugasundaram}, journal={The International Journal of Advanced Manufacturing Technology}, year={2007}, volume={32}, pages={644-655} }
Optimization of cutting parameters is valuable in terms of providing high precision and efficient machining. Optimization of machining parameters for milling is an important step to minimize the machining time and cutting force, increase productivity and tool life and obtain better surface finish. In this work a mathematical model has been developed based on both the material behavior and the machine dynamics to determine cutting force for milling operations. The system used for optimization is… CONTINUE READING
97 Citations
Optimization of machining parameters to minimize tool deflection in the end milling operation using Genetic Algorithm.
- Engineering
- 2009
- 34
- PDF
Optimization of Cutting Parameters in Milling Process Using Genetic Algorithm and ANOVA (March 2020)
- Mathematics
- 2020
- PDF
Experimental investigations and empirical modeling for optimization of surface roughness and machining time parameters in micro end milling using Genetic Algorithm
- Materials Science
- 2018
- 20
High speed CNC machining of AISI 304 stainless steel; Optimization of process parameters by MOGA
- Engineering
- 2013
- 16
- PDF
Optimal selection of operating parameters in end milling of Al-6061 work materials using multi-objective approach
- Engineering
- 2017
- 9
An effective and automatic approach for parameters optimization of complex end milling process based on virtual machining
- Computer Science
- J. Intell. Manuf.
- 2020
- 3
Selection of optimal cutting conditions for pocket milling using genetic algorithm
- Engineering
- 2013
- 16
- PDF
Optimization of machining parameters on temperature rise in end milling of Al 6063 using response surface methodology and genetic algorithm
- Engineering
- 2013
- 44
References
SHOWING 1-10 OF 14 REFERENCES
A genetic algorithmic approach for optimization of surface roughness prediction model
- Engineering
- 2002
- 342
- PDF
The optimal cutting-parameter selection of production cost in HSM for SKD61 tool steels
- Engineering
- 2003
- 67
Selection of optimal conditions in multi-pass face-milling using a genetic algorithm
- Engineering
- 2000
- 134
Optimisation of multi-pass milling using genetic algorithm and genetic simulated annealing
- Engineering
- 2004
- 65
Static and dynamic cutting force analysis when high speed rough milling hardened steel
- Materials Science
- 2004
- 59