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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Machining Parameters and Toolpath Productivity Optimization Using a Factorial Design and Fit Regression Model in Face Milling and Drilling Operations
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Machining Parameters and Toolpath Productivity Optimization Using a Factorial Design and Fit Regression Model in Face Milling and Drilling Operations

机译:使用阶段铣削和钻井作业中使用因子设计和拟合回归模型加工参数和刀具路径的生产率优化

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Very commonly, a mechanical workpiece manufactured industrially includes more than one machining operation. Even more, it is a common activity of programmers, who make a decision in this regard every time a milling and drilling operation is performed. This research is focused on better understanding the power behavior for face milling and drilling manufacturing operations, and the methodology followed was the design of experiments (DOEs) with the cutting parameters set in combination with toolpath evaluation available in commercial software, having as main goal to get a predictive power equation validated in two ways, linear or nonlinear, and understanding the energy consumption and the quality surface in face milling and final diameter in drilling. The results show that it is possible to find difference in a power demand of 1.52?kW to 3.9?kW in the same workpiece, depending on the operations (face milling or drilling), cutting parameters, and toolpath chosen. Additionally, the equations modelled showed acceptable values to predict the power, with p values higher than 0.05 which is the significance level for the nonlinear and linear equations with an R square predictive of 98.36. Some conclusions established that optimization of the cutting parameters combined with toolpath strategies can represent an energy consumption optimization higher than 0.21% and the importance to try to find an energy consumption balance when a workpiece has different milling operations.
机译:通常,在工业上制造的机械工件包括多于一种加工操作。甚至更多,这是程序员的共同活动,在每次执行铣削和钻井操作时,在这方面做出决定。该研究专注于更好地理解面部铣削和钻井制造操作的动力行为,并且该方法遵循的方法是实验(DO)的设计,切割参数与商业软件中可用的刀具路径评估组合,具有主要目标通过两种方式,线性或非线性验证的预测功率方程,并理解钻孔中面铣和最终直径的能量消耗和质量表面。结果表明,根据操作(面部铣削或钻井),切割参数和刀具路径,可以在相同的工件中找到1.52Ω·kW至3.9 kW的电力需求差异。另外,建模的等式显示可接受的值以预测功率,P值高于0.05,其是具有98.36的R平方预测性的非线性和线性方程的显着性水平。一些结论确立了切割参数的优化与刀具路径策略相结合,可以代表高于0.21%的能耗优化,并且在工件有不同的铣削操作时尝试找到能量消耗平衡的重要性。

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