基于人工神经网络的高速加工TC4表面粗糙度建模

Zhixin Liu, Dawei Zhang, H. Qi
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引用次数: 5

摘要

最近的研究表明,通过正确选择高速加工参数,可以大幅度提高表面质量。切削速度、每齿进给量、轴向切削深度和径向切削深度等加工参数对表面质量影响很大。本文建立了一种人工神经网络模型,用于分析和预测粗糙度与加工参数之间的关系。人工神经网络模型的输入参数为切削速度、进给速度、轴向切削深度和径向切削深度。该模型的输出参数为加工试验后测量的表面粗糙度。该模型由一个三层前馈反向传播神经网络组成。该网络使用高速铣削钛合金(TC4)时产生的成对输入/输出数据集进行训练。该神经网络的性能与实验数据吻合良好。该模型不仅可以用于预先确定工件的表面粗糙度,而且可以使我们了解这些加工参数对表面粗糙度的影响
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Surface roughness modeling of high speed machining TC4 based on artificial neural network method
Recent works suggests that substantial gains in surface quality can be realized by better selection of high speed machining parameters. Machining parameters such as cutting speed, feed per tooth, axial depth of cut and radial depth of cut deeply affect the surface quality. This paper developed an artificial neural network (ANN) model for analysis and prediction of the relationship between roughness and machining parameters. The input parameters of the ANN model are the cutting speed, feed rate, axial depth of cut and radial depth of cut. The output parameters of the model are surface roughness measured after the machining trials. The model consists of a three-layered feed-forward back-propagation neural network. The network is trained with pairs of inputs/outputs datasets generated when high speed milling titanium alloy (TC4). A very good performance of the neural network, in terms of agreement with experimental data was achieved. The model can not only be used to determine in advance the surface roughness of work piece, but also make us know how these machining parameters affect the surface roughness
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