金属切割机模块诊断的神经网络

K. Masalimov, R. Munasypov
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引用次数: 0

摘要

本文致力于利用基于数据的模型解决机床模块在线诊断问题。作者提出了一种诊断方法,包括基于长短期神经记忆网络的模型作为频率参考值的存储库。用于训练神经网络的数据是反映工具和工件垂直于表面的振荡的频谱,这些振荡是由金属加工机床的模块元件中存在制造缺陷引起的。采用具有长短期记忆的神经网络模型来逼近非线性频率特性。针对模块缺陷的分类提出了第二种神经网络,将参考谱的神经网络模型与零件实际质量参数得到的谱进行实时比较,确定缺陷的来源。为了验证该方法的有效性,通过对缺陷机模块的定义进行了一系列实验。给出了应用的实验结果
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Networks For Diagnostics Of Metal Cutting Machine Modules
The work is devoted to solving the problem online diagnostics of machine tools modules using data-based models. The authors propose a diagnostic method that includes models based on long short-term neural memory networks as a repository of frequency reference values. Data for training neural networks is a frequency spectrum reflecting the oscillations of the tool and the workpiece normal to surfaces caused by the presence of a manufacturing defect in the module element of a metalworking machine. Neural network model with long short-term memory are used for approximation the nonlinear frequency characteristics. For classification of module defects proposed a second neural network that compare the neural network model of the reference spectrum with the spectrum obtained from the actual quality parameters of the part in real time, determine the sources of defects. To evaluate the effectiveness of the method, a series of experiments were carried out with the definition of defective machine modules. An experimental result of the application of proposed
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