Mukhopadhyay Arkadeb, Barman Tapan Kumar, Sahoo Prasanta, Davim J Paulo
Department of Mechanical Engineering, Jadavpur University, Kolkata 700032, India.
Department of Mechanical Engineering, University of Aveiro, 3810-193 Aveiro, Portugal.
Materials (Basel). 2019 Feb 1;12(3):454. doi: 10.3390/ma12030454.
To achieve enhanced surface characteristics in wire electrical discharge machining (WEDM), the present work reports the use of an artificial neural network (ANN) combined with a genetic algorithm (GA) for the correlation and optimization of WEDM process parameters. The parameters considered are the discharge current, voltage, pulse-on time, and pulse-off time, while the response is fractal dimension. The usefulness of fractal dimension to characterize a machined surface lies in the fact that it is independent of the resolution of the instrument or length scales. Experiments were carried out based on a rotatable central composite design. A feed-forward ANN architecture trained using the Levenberg-Marquardt (L-M) back-propagation algorithm has been used to model the complex relationship between WEDM process parameters and fractal dimension. After several trials, 4-3-3-1 neural network architecture has been found to predict the fractal dimension with reasonable accuracy, having an overall R-value of 0.97. Furthermore, the genetic algorithm (GA) has been used to predict the optimal combination of machining parameters to achieve a higher fractal dimension. The predicted optimal condition is seen to be in close agreement with experimental results. Scanning electron micrography of the machined surface reveals that the combined ANN-GA method can significantly improve the surface texture produced from WEDM by reducing the formation of re-solidified globules.
为了在电火花线切割加工(WEDM)中获得更好的表面特性,本研究报告了使用人工神经网络(ANN)结合遗传算法(GA)对电火花线切割加工工艺参数进行关联和优化。所考虑的参数为放电电流、电压、脉冲导通时间和脉冲关断时间,而响应量为分形维数。分形维数用于表征加工表面的有用性在于它与仪器分辨率或长度尺度无关。实验基于旋转中心复合设计进行。使用Levenberg-Marquardt(L-M)反向传播算法训练的前馈人工神经网络架构已被用于对电火花线切割加工工艺参数与分形维数之间的复杂关系进行建模。经过多次试验,发现4-3-3-1神经网络架构能够以合理的精度预测分形维数,总体R值为0.97。此外,遗传算法(GA)已被用于预测加工参数的最佳组合,以实现更高的分形维数。预测的最佳条件与实验结果非常吻合。加工表面的扫描电子显微镜图像显示,人工神经网络-遗传算法相结合的方法可以通过减少再凝固小球的形成,显著改善电火花线切割加工产生的表面纹理。