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Prediction of cutting force in end-milling operation of modified AISI P20 tool steel

机译:改进的AISI P20工具钢的立铣刀中切削力的预测

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摘要

The present paper discusses the development of the first and second order models for predicting the cutting force produced in end-milling operation of modified AISIP20 tool steel. The first and second order cutting force equations are developed using the response surface methodology (RSM) to study the effect of four input cutting parameters (cutting speed, feed rate, radial depth and axial depth of cut) on cutting force. The cutting force contours with respect to input parameters are presented and the predictive models analyses are performed with the aid of the statistical software package Minitab. The separate affect of individual input factors and the interaction between these factors are also investigated in this study. The received second order equation shows, based on the variance analysis, that the most influential input parameter was the feed rate followed by axial depth, and radial depth of cut and, finally, by the cutting speed. It was found that the interaction of feed with axial depth was extremely strong. In addition, the interactions of feed with radial depth; and feed rate with radial depth of cut were observed to be quite significant. The predictive models in this study are believed to produce values of the longitudinal component of the cutting force close to those readings recorded experimentally with a 95 percent confident interval.
机译:本文讨论了用于预测改进的AISIP20工具钢的端铣削加工中产生的切削力的一阶和二阶模型的开发。使用响应表面方法(RSM)建立一阶和二阶切削力方程,以研究四个输入切削参数(切削速度,进给速度,径向深度和轴向切削深度)对切削力的影响。给出了与输入参数有关的切削力轮廓,并借助统计软件包Minitab进行了预测模型分析。本研究还研究了各个输入因素的单独影响以及这些因素之间的相互作用。根据方差分析,收到的二阶方程表明,最有影响的输入参数是进给速度,然后是轴向深度,径向切削深度,最后是切削速度。发现进料与轴向深度的相互作用非常强。另外,进给与径向深度的相互作用;观察到带有径向切削深度的进给速度非常显着。据信,本研究中的预测模型产生的切削力纵向分量值接近于以95%置信区间通过实验记录的读数。

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