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ANN-based performance prediction of electrical discharge machining of Ti-13Nb-13Zr alloys

Md Doulotuzzaman Xames (Department of Industrial and Production Engineering, Military Institute of Science and Technology, Dhaka, Bangladesh)
Fariha Kabir Torsha (Department of Industrial Engineering, University of Houston Cullen College of Engineering, Houston, Texas, USA)
Ferdous Sarwar (Department of Industrial and Production Engineering, Bangladesh University of Engineering and Technology, Dhaka, Bangladesh)

World Journal of Engineering

ISSN: 1708-5284

Article publication date: 22 November 2022

Issue publication date: 23 February 2024

63

Abstract

Purpose

The purpose of this paper is to predict the machining performance of electrical discharge machining of Ti-13Nb-13Zr (TNZ) alloy, a promising biomedical alloy, using artificial neural networks (ANN) models.

Design/methodology/approach

In the research, three major performance characteristics, i.e. the material removal rate (MRR), tool wear rate (TWR) and surface roughness (SR), were chosen for the study. The input parameters for machining were the voltage, current, pulse-on time and pulse-off time. For the ANN model, a two-layer feedforward network with sigmoid hidden neurons and linear output neurons were chosen. Levenberg–Marquardt backpropagation algorithm was used to train the neural networks.

Findings

The optimal ANN structure comprises four neurons in input layer, ten neurons in hidden layer and one neuron in the output layer (4–10-1). In predicting MRR, the 60–20-20 data split provides the lowest MSE (0.0021179) and highest R-value for training (0.99976). On the contrary, the 70–15-15 data split results in the best performance in predicting both TWR and SR. The model achieves the lowest MSE and highest R-value for training in predicting TWR as 1.17E-06 and 0.84488, respectively. Increasing the number of hidden neurons of the network further deteriorates the performance. In predicting SR, the authors find the best MSE and R-value as 0.86748 and 0.94024, respectively.

Originality/value

This is a novel approach in performance prediction of electrical discharge machining in terms of new workpiece material (TNZ alloys).

Keywords

Acknowledgements

Disclosure statement: The authors declare that they have no potential conflict of interest or financial conflict to disclose.

Citation

Xames, M.D., Torsha, F.K. and Sarwar, F. (2024), "ANN-based performance prediction of electrical discharge machining of Ti-13Nb-13Zr alloys", World Journal of Engineering, Vol. 21 No. 2, pp. 217-227. https://doi.org/10.1108/WJE-02-2022-0068

Publisher

:

Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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