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首页> 外文期刊>Multidiscipline modeling in materials and structures >Modeling and analysis of process parameters on metal removal rate (MRR) in machining of aluminium titanium diboride (Al-TiB_2) composite
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Modeling and analysis of process parameters on metal removal rate (MRR) in machining of aluminium titanium diboride (Al-TiB_2) composite

机译:二硼化铝钛(Al-TiB_2)复合材料加工中金属去除率(MRR)工艺参数的建模和分析

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Purpose - The purpose of this paper is to develop a mathematical model for optimizing the metal removal rate (MRR) through Response Surface Methodology (RSM). The developed model helps us to analyze the influence of individual input machining parameters (cutting speed, feed rate, weight percentage) on the responses in machining of Al-TiB_2 composite. Design/methodology/approach - RSM is used to optimize the MRR by developing a mathematical model. Three factors, three-level box Behnken design matrix in RSM is employed to carry out the experimental investigation. The "Design Expert 8.0" software is used for regression and graphical analysis of the data are collected. The optimum values of the selected variables are obtained by solving the regression equation and by analyzing the response surface contour plots. Analysis of variance (ANOVA) is applied to check the validity of the model and for finding the significant parameters. Findings - The response surface model developed, helps to calculate the MRR at different input cutting parameters with the chosen range with more than 95 per cent confidence intervals. Originality/value - The effect of machining parameters on MRR during machining of Al-TiB_2 composites using RSM has not been previously analyzed.
机译:目的-本文的目的是建立一个数学模型,以通过响应表面方法(RSM)优化金属去除率(MRR)。开发的模型有助于我们分析各个输入加工参数(切削速度,进给速度,重量百分比)对Al-TiB_2复合材料加工响应的影响。设计/方法/方法-RSM用于通过开发数学模型来优化MRR。利用RSM中的三因素三级Box Behnken设计矩阵进行了实验研究。使用“ Design Expert 8.0”软件进行回归,并收集数据的图形分析。通过求解回归方程并分析响应表面轮廓图,可获得选定变量的最佳值。方差分析(ANOVA)用于检查模型的有效性和查找重要参数。结果-开发的响应面模型有助于在选定范围内以95%以上的置信区间计算不同输入切削参数下的MRR。原创性/价值-以前尚未分析过使用RSM加工Al-TiB_2复合材料期间加工参数对MRR的影响。

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