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基于注意力机制与深度学习算法的机床主轴系统故障辨识
引用本文:王伟平,王琦,于洋.基于注意力机制与深度学习算法的机床主轴系统故障辨识[J].兵工学报,2022,43(4):861-875.
作者姓名:王伟平  王琦  于洋
作者单位:(1.沈阳工业大学 信息科学与工程学院, 辽宁 沈阳 110870; 2.辽宁工业大学, 辽宁 锦州 121001)
基金项目:中国航空工业创新基金项目
摘    要:针对具有复杂非线性特点的数控机床主轴系统整体动态退化故障较难辨识及故障研究难度大的问题,从数据分析入手,提出一种基于注意力机制与深度学习算法的智能化故障辨识方法,研究机床主轴系统的整体故障辨识问题.该方法设计了注意力机制的研究框架,将研究问题分为全局纵向大分类区间和局部横向细粒度区间两个维度:采用训练并调优后推理平均绝...

关 键 词:机床主轴系统  故障辨识  注意力机制  门控循环单元模型  残差网络模型

Fault Identification of Machine Tool Spindle System Based on Attention Mechanism and Deep Learning Algorithm
WANG Weiping,WANG Qi,YU Yang.Fault Identification of Machine Tool Spindle System Based on Attention Mechanism and Deep Learning Algorithm[J].Acta Armamentarii,2022,43(4):861-875.
Authors:WANG Weiping  WANG Qi  YU Yang
Affiliation:(1. School of Information Science and Engineering, Shenyang University of Technology,Shenyang 110870,Liaoning,China;2. Liaoning University of Technology,Jinzhou 121001,Liaoning,China)
Abstract:The overall dynamic degradation fault of the numerically-controlled machine tool spindle system with complex nonlinear characteristics is difficultly identified and investigated.An intelligent fault identification method based on attention mechanism and depth learning algorithm is proposed to stud the overall fault identification of spindle system by starting with data analysis.The proposed method is used to design the research framework of attention mechanism,and divide the research problems into global vertical large classification interval dimension and local horizontal fine-grained interval dimension.The gated recurrent unit model with reasoning average absolute error of 0.028 7 after training and tuning is used to identify the global degradation faults in large classification interval.The residual network model with strong robustness and identification accuracy of 99.7% is used to accurately identify the local fine-grained interval faults, based on sym8 wavelet basis adaptive soft threshold noise reduction.The results show that the proposed method is used to quantitatively identify the overall fault of spindle system. The proposed attention mechanism is used to effectively distinguish the faults that cannot be accurately identified in the large classification interval in the fine-grained interval,and the data growth gradient in the category increases from 6.6% to 43.8%. The effectiveness and accuracy of the proposed method are verified by studying the typical faults,such as misalignment and local resonance encountered in the actual use of the machine tool spindle system under no-load,and the fault identification under loading.
Keywords:machinetoolspindlesystem                                                                                                                        faultidentification                                                                                                                        attentionmechanisms                                                                                                                        gatedrecurrentunitmodel                                                                                                                        ResNetmodel
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