Prediction of machining performances in powder mixed electro-discharge machining to process skd61 steel by response surface methodology

Le Van Tao, Banh Tien Long, Nguyen Thi Hong Minh, Hoang Tien Dung, Dang Van Thuc, Phan Hoang Cuong
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Abstract

In electro-discharge machining (EDM) with mixing powder, it is called powder mixed electro-discharge machining (PMEDM), then machining performances- i.e. material removal rate(MRR) and tool wear rate (TWR) has great significance in evaluating the effectiveness and machining accuracy of the machining method. Therefore, in this study, response surface methodology (RSM) was utilized for estimating functions of process variables {comprising peak current (Ip), pulse on time (Ton), and powder concentration (Cp)} for the machining performances for processing SKD61 steel during EDM process with tungsten compound powder. Box-Behnken matrix was utilized for designing and conducting a series of empirical trials. Analysis of variance (ANOVA) was applied to evaluate the adequate of predictive models. The outcomes reveal that the predicted models of MRR and TWR have a high precision with R2 values of MRR and TWR being 99.2% and 99.11%, respectively. The error comparison of the predictive and empirical values for the confirmed experiments is less than 5%, this once again consolidates that the developed models' accuracy. These development models can efficiently prognosticate the desired machining performances of the PMEDM method for processing SKD61 steel
用响应曲面法预测加工 skd61 钢的粉末混合放电加工的加工性能
在混合粉末的放电加工(EDM)中,被称为粉末混合放电加工(PMEDM),那么加工性能--即材料去除率(MRR)和刀具磨损率(TWR)--对于评估加工方法的有效性和加工精度具有重要意义。因此,本研究利用响应面方法(RSM)估算了钨化合物粉末电火花加工 SKD61 钢过程中加工性能的工艺变量函数(包括峰值电流(Ip)、脉冲导通时间(Ton)和粉末浓度(Cp))。利用方框-贝肯矩阵设计并进行了一系列经验试验。应用方差分析(ANOVA)来评估预测模型的充分性。结果显示,MRR 和 TWR 的预测模型具有很高的精度,MRR 和 TWR 的 R2 值分别为 99.2% 和 99.11%。在已确认的实验中,预测值和经验值的误差比较小于 5%,这再次证明了所开发模型的准确性。这些开发的模型可以有效地预测 PMEDM 方法在加工 SKD61 钢时所需的加工性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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