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Predictive Analysis on Responses in WEDM of Titanium Grade 6 Using General Regression Neural Network (GRNN) and Multiple Regression Analysis (MRA)

机译:一般回归神经网络(GRNN)和多元回归分析对钛级6级WEDM反应预测分析及多元回归分析(MRA)

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摘要

In the present investigation two smart prediction tools, namely the general regression neural network (GRNN) and multiple regression analysis (MRA) models were developed to predict and compare some of the key machinability aspects like average kerf width, average surface roughness and material removal rate in the wire electrical discharge machining process of titanium grade 6. Pulse-on time, pulse-off time, wire feed and wire tension were considered as machining variables to develop the predictive model. In order to curtail cross-validation error in GRNN, optimized kernel bandwidth was utilized using the grid search method. The neural network and regression models were trained, validated and tested with measured data. A mathematical model was developed using multiple regression analysis. The ANOVA test was also conducted to determine the significant parameters affecting the responses. The results indicated that the predicted responses lie within ±?5% and ±?10% error for GRNN and MRA, respectively, which suggests that the GRNN model is more reliable and adequate than the regression model. A comparative study with previous research work was also done to confirm the novelty along with application potential of the proposed model.
机译:在本研究中,建立了两个智能预测工具,即开发了一般回归神经网络(GRNN)和多元回归分析(MRA)模型来预测和比较平均Kerf宽度,平均表面粗糙度和材料去除率的一些关键可加工性方面在钛级的电线电气放电加工过程中。脉冲接通时间,脉冲关闭时间,送丝和线张力被认为是制造预测模型的加工变量。为了在GRNN中缩短交叉验证误差,使用网格搜索方法使用优化的内核带宽。通过测量数据训练,验证和测试神经网络和回归模型。使用多元回归分析开发了数学模型。还进行了ANOVA测试以确定影响反应的重要参数。结果表明,预测的响应分别在±5%和±10%的误差内,这表明GRNN模型比回归模型更可靠和充分。还进行了对比较的研究工作,以确认新颖性以及所提出的模型的应用潜力。

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