To know the impact of processing parameters of PA6G under different humidity conditions is important as it is vulnerable to humidity up to 7 %. This study investigated the effect of cutting parameters to surface roughness quality in wet and dry conditions. Artificial Neural Network (ANN) modeling is also developed with the obtained results from the experiments. Humidity condition, tool type, cutting speed, cutting rate, and depth of cutting parameters were used as input and average surface roughness value were used as output of the ANN model. Testing results showed that ANN can be used for prediction of average surface roughness.
CITATION STYLE
Bozdemir, M. (2018). Prediction of Surface Roughness considering Cutting Parameters and Humidity Condition in End Milling of Polyamide Materials. Computational Intelligence and Neuroscience, 2018. https://doi.org/10.1155/2018/5850432
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