A Hybrid Genetic Programming – Artificial Neural Network Approach For Modeling of Vibratory Finishing Process
@inproceedings{GargAHG, title={A Hybrid Genetic Programming – Artificial Neural Network Approach For Modeling of Vibratory Finishing Process}, author={A. Garg and K. Tai} }
Finishing processes are gaining importance over the last decades as manufacturers seek to improve process efficiency while meeting increasingly severe cost and product requirements. A number of researchers have employed conventional modeling techniques such as response surface methodology and linear programming but very few or none has paid attention to the non-conventional modeling approaches such as Artificial Neural Network (ANN), Genetic Programming (GP) and Fuzzy logic (FL) for studying… CONTINUE READING
15 Citations
Genetic Programming for Modeling Vibratory Finishing Process: Role of Experimental Designs and Fitness Functions
- Computer Science
- SEMCCO
- 2013
- 21
Predictive Models of Double-Vibropolishing in Bowl System Using Artificial Intelligence Methods
- Computer Science
- 2019
- PDF
Empirical analysis of model selection criteria for genetic programming in modeling of time series system
- Economics, Computer Science
- 2013 IEEE Conference on Computational Intelligence for Financial Engineering & Economics (CIFEr)
- 2013
- 35
Selection of a robust experimental design for the effective modeling of nonlinear systems using Genetic Programming
- Computer Science
- 2013 IEEE Symposium on Computational Intelligence and Data Mining (CIDM)
- 2013
- 28
A hybrid $$\text{ M}5^\prime $$-genetic programming approach for ensuring greater trustworthiness of prediction ability in modelling of FDM process
- Computer Science
- J. Intell. Manuf.
- 2014
- 43
- Highly Influenced
Modeling of Drilling Forces Based on Twist Drill Point Angles Using Multigene Genetic Programming
- Engineering
- 2016
- 2
- PDF
Prediction of landslide displacement based on GA-LSSVM with multiple factors
- Engineering
- Bulletin of Engineering Geology and the Environment
- 2015
- 43
Estimation of Pore Water Pressure of Soil Using Genetic Programming
- Physics
- Geotechnical and Geological Engineering
- 2014
- 5
References
SHOWING 1-10 OF 15 REFERENCES
Application of soft computing techniques in machining performance prediction and optimization: a literature review
- Engineering
- 2010
- 306
Model development and optimization of vibratory finishing process
- Engineering
- 1979
- 30
- Highly Influential
Prediction of strain energy-based liquefaction resistance of sand-silt mixtures: An evolutionary approach
- Environmental Science, Computer Science
- Comput. Geosci.
- 2011
- 42
Genetic programming - on the programming of computers by means of natural selection
- Computer Science
- Complex adaptive systems
- 1993
- 13,420
- PDF
GPTIPS: Genetic Programming and Symbolic Regression for Matlab
- Computer Science
- 2009
- 55
- Highly Influential