Development of Surface Roughness Model in Turning Process of 3X13 Steel Using TiAIN Coated Carbide Insert

N. Nguyen, D. Trung
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引用次数: 4

Abstract

Surface roughness that is one of the most important parameters is used to evaluate the quality of a machining process. Improving the accuracy of the surface roughness model will contribute to ensure an accurate assessment of the machining quality. This study aims to improve the accuracy of the surface roughness model in a machnining process. In this study, Johnson and Box-Cox transformations were successfully applied to improve the accuracy of surface roughness model when turning 3X13 steel using TiAlN insert. Four input parameters that were used in experimental process were cutting velocity, feed rate, depth of cut, and insert-nose radius. The experimental matrix was designed using Central Composite Design (CCD) with 29 experiments. By analyzing the experimental data, the influence of input parameters on surface roughness was investigated. A quadratic model was built to explain the relationship of surface roughness and the input parameters. Box-Cox and Johnson transformations were applied to develop two new models of surface roughness. The accuracy of three surface roughness models showed that the surface roughness model using Johnson transformation had the highest accuracy. The second one model of surface roughness is the model using Box-Cox transformation. And surface roughness model without transformation had the smallest accuracy. Using the Johnson transformation, the determination coefficient of surface roughness model increased from 80.43 % to 84.09 %, and mean absolute error reduced from 19.94 % to 16.64 %. Johnson and Box-Cox transformations could be applied to improve the acuaracy of the surface roughness prediction in turning process of 3X13 steel and can be extended with other materials and other machining processes
镀钛硬质合金刀片3X13钢车削过程表面粗糙度模型的建立
表面粗糙度是评价加工质量最重要的参数之一。提高表面粗糙度模型的精度将有助于确保对加工质量的准确评估。本研究旨在提高加工过程中表面粗糙度模型的精度。在本研究中,成功地应用Johnson和Box-Cox变换提高了使用TiAlN刀片车削3X13钢时表面粗糙度模型的精度。实验过程中使用的四个输入参数是切削速度、进给速度、切削深度和插鼻半径。采用中心复合设计(CCD)设计29个实验的实验矩阵。通过对实验数据的分析,研究了输入参数对表面粗糙度的影响。建立了二次模型来解释表面粗糙度与输入参数的关系。应用Box-Cox和Johnson变换建立了两种新的表面粗糙度模型。三种表面粗糙度模型的精度表明,采用Johnson变换的表面粗糙度模型精度最高。表面粗糙度的第二个模型是使用Box-Cox变换的模型。未经变换的表面粗糙度模型精度最低。采用Johnson变换,表面粗糙度模型的决定系数由80.43%提高到84.09%,平均绝对误差由19.94%降低到16.64%。Johnson变换和Box-Cox变换可用于提高3X13钢车削过程中表面粗糙度预测的精度,并可推广到其他材料和其他加工工艺中
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