Abstract

Intelligent manufacturing systems rely on effective and efficient decision making tools. Decision making is increasingly difficult due to the rapid changes in design, parameters and environments due to variety of applications. Mathematical models which are derived based on the assumptions are limited to model the functioning of the real manufacturing system. There is a need to develop generalised models which can dynamically predict a wide variety of process parameters such others to assist the intelligent manufacturing system. Artificial intelligent tools like neural networks are being attempted in decision-making process. This paper addresses the development of neural radial basis function neural network (RBFNN) model for machining quality prediction. Data acquired to develop the proposed RBFNN model is obtained from experimentation on computer numerical control (CNC) machine centre using response surface methodology design matrix. Results obtained are utilised to train the proposed model with an object...

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