Neuro-fuzzy and neural network-based prediction of various responses in electrical discharge machining of AISI D2 steelNF and NN based prediction of responses in EDM of D2 steel

被引:0
作者
Mohan Kumar Pradhan
Chandan Kumar Biswas
机构
[1] National Institute of Technology,Department of Mechanical Engineering
来源
The International Journal of Advanced Manufacturing Technology | 2010年 / 50卷
关键词
EDM; MRR; Tool wear rate; Radial overcut; Neuro-fuzzy model; ANN;
D O I
暂无
中图分类号
学科分类号
摘要
In the present research, two neuro-fuzzy models and a neural network model are presented for predictions of material removal rate (MRR), tool wear rate (TWR), and radial overcut (G) in die sinking electrical discharge machining (EDM) process for American Iron and Steel Institute D2 tool steel with copper electrode. The discharge current (Ip), pulse duration (Ton), duty cycle (τ), and voltage (V) are considered as inputs to the network. A full-factorial design was used to conduct the experiments with various levels of Ip, Ton, τ, and V. The analysis of variance results reveal that Ip is the most influencing factor for MRR and G, having the highest degree of contributions of 87.61% and 81.90%, respectively. In case of TWR, Ton has the highest degree of contribution of 46.05% and is the most significant factor. The half of the experimental data set was used to train the networks and was tested for convergence with a different set of data to obtain appropriate number of neurons, epoch, and the fuzzy rule base. The mean square error convergence criteria, both in training and testing, came out very well. The developed models are found to approximate the responses quite accurately. Moreover, the predicted results based on above models have been confirmed with unseen validation set of experiments and are found to be in good agreement with the experimental results. The comparison results reveal that the artificial neural network and the neuro-fuzzy models are comparable in terms of accuracy and speed, and further, the proposed models can be employed successfully in prediction of MRR, TWR, and G of the stochastic and complex EDM process.
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页码:591 / 610
页数:19
相关论文
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