The Roundness Prediction at Numerical Control Machine Using Neural Network

수치제어 공작기계에서 신경망을 이용한 진원도 예측

  • Published : 2009.06.15

Abstract

The purpose of this study is to predict the roundness of Numerical Control Machining so that helps the operator to choose the right machining conditions to produce a product within the given error limits. Learning of neural network is Backpropagation theory. From this study, the base was set to setup the database to produce precisely machined product by predicting the rate of error in the fabrication facility which does not have the environment to analyze it.

Keywords

References

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