Comparison between ANN, Regression and Genetic in Turning Process

Authors

  • Ahmed Samy Elakkad Ain shams university. Cairo. Egypt
  • Omar Koura

Keywords:

Surface roughness, artificial neural network, regression, Genetic Algorithm, turning operations.

Abstract

In literature predicting surface roughness has gained greater interest. Several approaches has been adopted. One is using regression analysis, other uses the Genetic Algorithm and third used Artificial Neural Networks. Different results were usually obtained. This paper aims at comparing the three models to come out with the most reasonable model describing surface roughness (Ra).

 

References

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Published

2015-11-01

How to Cite

Elakkad, A. S., & Koura, O. (2015). Comparison between ANN, Regression and Genetic in Turning Process. American Scientific Research Journal for Engineering, Technology, and Sciences, 14(2), 304–310. Retrieved from https://asrjetsjournal.org/index.php/American_Scientific_Journal/article/view/1037