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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Soft computing models based prediction of cutting speed and surface roughness in wire electro-discharge machining of tungsten carbide cobalt composite
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Soft computing models based prediction of cutting speed and surface roughness in wire electro-discharge machining of tungsten carbide cobalt composite

机译:基于软计算模型的碳化钨钴复合材料线材放电加工中切削速度和表面粗糙度的预测

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摘要

In the present study, a second order multi-variable regression model and a feed-forward back-propagation neural network (BPNN) model have been developed to correlate the input process parameters, such as pulse on-time, pulse off-time, peak current, and capacitance with the performance measures namely, cutting speed and surface roughness while wire electro-discharge machining (WEDM) of tungsten carbide-cobalt (WC-Co) composite material. From a large number of neural network architectures, 4-11-2 has been found to be the optimal one, which can predict cutting speed and surface roughness with 3.29% overall mean prediction error. The multivariable regression model yields an overall mean prediction error of 6.02%. Both the models have been used to study the effect of input parameters on the cutting speed and surface roughness, and finally to corroborate them with those of the experimental results. Scanning electron micrographs reveal that at higher energy level the machined surface is characterized by several microcracks and loosely bound solidified WC grains.
机译:在本研究中,已经开发了二阶多变量回归模型和前馈反向传播神经网络(BPNN)模型来关联输入过程参数,例如脉冲开启时间,脉冲关闭时间,峰值电流,电容以及性能,即碳化钨-钴(WC-Co)复合材料的线放电加工(WEDM)时的切割速度和表面粗糙度。从大量的神经网络体系结构中,发现4-11-2是最佳的,可以预测切削速度和表面粗糙度,总体平均预测误差为3.29%。多变量回归模型的总平均预测误差为6.02%。两种模型均已用于研究输入参数对切削速度和表面粗糙度的影响,并最终与实验结果相吻合。扫描电子显微照片显示,在较高的能级下,加工后的表面具有多个微裂纹和松散结合的凝固碳化钨晶粒。

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