Corpus ID: 14228637

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
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