36 mixed orthogonal array was used to optimize the input parameters, such as polarity, electrode type, and concentration of abrasive powder, discharge current, voltage and duty cycle. Taguchi technique individually is not effective for multiple performance characteristics, so ANN is applied for this experimental study for converting process parameters into single performance characteristics which allows for a potential economical experimentation. The outcome analysis shows that the suggested ANN models can predict the acceptable optimum machining parameters for Electrical Discharge Machining, and has been verified experimentally as well as graphically by adopting Back-Propagation Neural Networks (BPNN) model.
">Artificial Neural Network (ANN) analysis is used for the prediction of Material Removal Rate (MRR), Tool Wear Rate (TWR) and Surface Roughness (SR) in Electrical Discharge Machining(EDM) process of M2 tool steel, followed by a Matlab program.Taguchi's L36 mixed orthogonal array was used to optimize the input parameters, such as polarity, electrode type, and concentration of abrasive powder, discharge current, voltage and duty cycle. Taguchi technique individually is not effective for multiple performance characteristics, so ANN is applied for this experimental study for converting process parameters into single performance characteristics which allows for a potential economical experimentation. The outcome analysis shows that the suggested ANN models can predict the acceptable optimum machining parameters for Electrical Discharge Machining, and has been verified experimentally as well as graphically by adopting Back-Propagation Neural Networks (BPNN) model.