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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Specific cutting force and cutting condition interaction modeling for round insert face milling operation
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Specific cutting force and cutting condition interaction modeling for round insert face milling operation

机译:圆刀片端面铣削加工的比切削力和切削条件相互作用模型

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摘要

Face milling by round insert is currently one of the most common processes for roughing, semi-finishing, and finishing machining operations. Proper estimation and analysis of the round insert cutting forces play an important role in the process optimization. This paper presents a new method for identifying specific cutting force coefficients (SCFCs) for full immersion face milling with round inserts. At the first step, an inverse method is proposed to solve the mechanistic force model equations by non-dominated sorting genetic algorithm II (NSGA-II) which is one of the powerful multi-objective optimization methods. In addition, the artificial neural network (ANN) models are developed to predict the SCFCs in non-experimented conditions. Mean absolute percentage error values for the proposed ANN are between 1.7 and 10.1 % for training and testing which are satisfactory. In order to evaluate the efficiency of NSGA-II and ANN models, extensive experimental cutting force results are compared with those obtained with the proposed algorithm. The good accordance in the entire time of cutting edge engagement shows the validity of the developed methodology. Moreover, the interactions of cutting parameters, i.e., cutting speed, feed per tooth, and depth of cut (DOC) on variations of tangential and radial shearing coefficients (k(tc), k(rc)) of specific cutting force are thoroughly investigated. The results show that in addition to cutting conditions, the cutting edge geometry of round insert has a significant influence on k(tc) and k(rc) variations.
机译:当前,通过圆刀片进行端面铣削是粗加工,半精加工和精加工的最常见工艺之一。正确估计和分析圆刀片切削力在工艺优化中起着重要作用。本文提出了一种新的方法,该方法可以识别带有圆形刀片的​​全浸入式平面铣削的比切削力系数(SCFC)。第一步,提出了一种逆向方法,通过非支配排序遗传算法II(NSGA-II)求解机械力模型方程,这是一种强大的多目标优化方法。此外,还开发了人工神经网络(ANN)模型来预测非实验条件下的SCFC。对于训练和测试,拟议的人工神经网络的平均绝对百分比误差值在1.7%和10.1%之间,这是令人满意的。为了评估NSGA-II和ANN模型的效率,将广泛的实验切削力结果与该算法获得的结果进行了比较。始终保持最前沿的参与度,这表明了所开发方法的有效性。此外,还详细研究了切削参数(即切削速度,每齿进给量和切削深度(DOC))对特定切削力的切向和径向剪切系数(k(tc),k(rc))变化的相互作用。 。结果表明,除了切削条件外,圆形刀片的​​切削刃几何形状对k(tc)和k(rc)的变化也有显着影响。

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