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Application of neural network in determination of parameters for milling AZ91HP magnesium alloy with surface roughness constraint

机译:神经网络在表面粗糙度约束AZ91HP镁合金铣削参数确定中的应用

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This paper presents the model for milling AZ91HP magnesium alloy with TiAlN coated carbide end mill. The model was developed on the basis of experimental data from the neural network training data set. The milling process was conducted at constant parameters of tool geometry, workpiece strength properties, technological machine properties, radial and axial depth of cut. The range of changeable machining parameters specified in this study included cutting speed, feed per tooth, and the output variable: the arithmetical mean roughness parameter (Ra). The process was modelled by means of MatLab software and its Neural Network Toolbox. The developed model was implemented in the algorithm designed to determine optimal milling conditions, exploring the space of acceptable parameters in search of those which would meet the specified roughness parameter at maximum efficiency.
机译:本文介绍了用TiAlN涂层硬质合金立铣刀铣削AZ91HP镁合金的模型。该模型是根据来自神经网络训练数据集的实验数据开发的。铣削过程在以下条件下进行:刀具几何形状,工件强度特性,工艺机械特性,径向和轴向切削深度。本研究中指定的可变加工参数范围包括切削速度,每齿进给量和输出变量:算术平均粗糙度参数(Ra)。该过程通过MatLab软件及其神经网络工具箱进行建模。开发的模型在设计用于确定最佳铣削条件的算法中实施,探索可接受参数的空间,以寻找能够以最大效率满足指定粗糙度参数的参数。

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