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首页> 外文期刊>Journal of Manufacturing Processes >Parametric study along with selection of optimal solutions in dry wire cut machining of cemented tungsten carbide (WC-Co)
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Parametric study along with selection of optimal solutions in dry wire cut machining of cemented tungsten carbide (WC-Co)

机译:硬质合金(WC-Co)干线切割加工中的参数研究以及最佳解决方案的选择

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This work deals with parametric study of dry wire EDM (WEDM) process of cemented tungsten carbide. Experiments have been conducted using air as dielectric medium to investigate effects of pulse on time, pulse off time, gap set voltage, discharge current and wire tension on cutting velocity (CV) surface roughness (SR) and oversize (OS). Firstly, a series of exploratory experiments were carried out to identify appropriate gas and its pressure. Afterward, preliminary experiments were conducted to investigate effects of process parameters on dry WEDM characteristics and find appropriate ranges for each factor. Then a central composite rotatable method was employed to design experiments based on response surface methodology (RSM). Empirical models were developed to create relationships between process factors and responses by considering to analysis of variances (ANOVA). To increase the predictability of the process, intelligent models have been developed based on back-propagation neural network (BPNN) and accuracy of these models was compared with mathematical models based on root mean square error (RMSE) and prediction error percent (PEP). In order to select optimal solutions in the cases of single-objective and multi-objectives optimization problems, optimization includes two main approaches. First approach was based on mathematical model and desirability function. Also second approach was designed based on neural network and particle swarm optimization. These approaches were applied in both cases of single-objective and multi-objectives optimization problems and their results were compared with together. Results indicated that selection of air at inlet pressure of 1.5 bar is really appropriate for conducting experiments of next stages. Also, the BPNN creates more accurate prediction rather than mathematical model. Moreover, the BPNN-PSO approach was more efficient in optimization of process rather than mathematical model-desirability function in respect with validation tests.
机译:这项工作涉及硬质合金碳化钨干线EDM(WEDM)工艺的参数研究。已经使用空气作为电介质进行了实验,以研究脉冲开启时间,脉冲关闭时间,间隙设置电压,放电电流和线张力对切削速度(CV)表面粗糙度(SR)和超尺寸(OS)的影响。首先,进行了一系列探索性实验,以确定合适的气体及其压力。之后,进行了初步实验以研究工艺参数对干WEDM特性的影响,并为每个因素找到合适的范围。然后基于响应面方法(RSM),采用中心复合旋转法设计实验。通过考虑方差分析(ANOVA),开发了经验模型来创建过程因素与响应之间的关系。为了提高过程的可预测性,已经开发了基于反向传播神经网络(BPNN)的智能模型,并将这些模型的准确性与基于均方根误差(RMSE)和预测误差百分比(PEP)的数学模型进行了比较。为了在单目标和多目标优化问题的情况下选择最优解,优化包括两种主要方法。第一种方法是基于数学模型和期望函数。还基于神经网络和粒子群优化设计了第二种方法。这些方法适用于单目标和多目标优化问题,并将它们的结果进行了比较。结果表明,选择进气压力为1.5 bar的空气确实适合进行下一阶段的实验。而且,BPNN可以创建比数学模型更准确的预测。此外,就验证测试而言,BPNN-PSO方法在优化过程方面比数学模型期望函数更有效。

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