Modeling of CNC Machining Process - Artificial Neural Networks Approach
نویسندگان
چکیده
CNC machining is known as an advanced machining process increasingly used for modern materials. This paper outlines modeling methodology applied to optimize cutting parameters during CNC milling with ball end mill tool. The parameters taken into account were radial depth of cut and feed per tooth. A predictive model was based on artificial neural network approach. Key-Words: Modeling, artificial neural networks, CNC machining, surface roughness, feed-forward networks
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