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Investigation of Surface Roughness and Predictive Modelling of Machining Stellite 6

机译:加工Stellite 6的表面粗糙度及预测建模研究。

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摘要

The aim of the paper was to examine the influence of cutting conditions on the roughness of surfaces machined by longitudinal turning, namely of surfaces coated with Stellite 6 prepared by high-velocity oxygen fuel (HVOF) technology and applied onto a standard structural steel substrate. From the results of measurements of the cutting parameters, a prediction model of the roughness parameters was created using mathematical and statistical methods. Based on a more detailed analysis and data comparison, a new method for prediction of parameters of longitudinal turning technology was obtained. The main aim of the paper was to identify the mutual discrete relationships between the substrate roughness and the machining parameters. These were the feed rate vc (m·min−1), in the case of turning and milling, and the feed rate f (mm·rev−1) and the depth of cut ap (mm). The paper compared and verified two approaches of this method, namely the mathematical statistical approach, the analytical approach and measured dates. From the evaluated and interpreted results, new equations were formulated, enabling prediction of the material parameters of the workpiece, the technological parameters and the parameters of surface quality.
机译:本文的目的是研究切削条件对纵向车削加工表面的粗糙度的影响,即通过高速氧燃料(HVOF)技术制备并涂覆在标准结构钢基材上的涂有Stellite 6的表面的粗糙度。根据切削参数的测量结果,使用数学和统计方法创建了粗糙度参数的预测模型。在更详细的分析和数据比较的基础上,获得了一种预测纵向车削工艺参数的新方法。本文的主要目的是确定基材粗糙度和加工参数之间的相互离散关系。这些是车削和铣削时的进给速度vc(m·min -1 ),进给速度f(mm·rev -1 )和切割深度ap(毫米)。本文比较并验证了该方法的两种方法,即数学统计方法,分析方法和测量日期。根据评估和解释的结果,制定了新的方程式,从而可以预测工件的材料参数,工艺参数和表面质量参数。

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