一种新颖的带有注意特征选择的混合神经网络用于飞机自锁螺母退化状态识别

Zhang Wenjing, Ma Yulin, Xu Yanwei, Liang Xinfu, Qi Le, Yang Jun, Li Lei
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引用次数: 0

摘要

自锁螺母广泛应用于航空航天装配线的结构连接。由于这些部件通常安装在遭受严重冲击和振动的地区,因此这些重要部件的状态与飞机的安全性和可靠性密切相关。为了实现对这些螺母的精确感知,提高系统的可靠性,本文提出了一种带有新型特征选择模块的混合神经网络来识别其退化状态。具体而言,通过长短期记忆(LSTM)网络和堆叠卷积神经网络(CNN)分别捕获监测退化力矩的时间趋势信息和空间故障模式。此外,为了有效地整合这些双重网络,提出了一种新的吸收时间特征的注意力模块来重新加权空间卷积特征。特别是,为了在多个监测扭矩存在的情况下探索故障信息,引入了正则化多任务分类器来学习不同的表示。基于工业自锁数据集的实验证明,该方法比传统神经网络具有更准确的退化状态识别能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Hybrid Neural Network with Attentive Feature Selection for Degradation Status Identification of Aircraft Self-locking Nuts
The self-locking nuts are widely used to connect structures in aerospace assembly lines. As these parts are usually installed in regions that suffered from heavy shocks and vibrations, the status of such essential parts closely relates to the safety and reliability of the aircraft. To enable precise sensing of these nuts and improve the system reliability, this paper proposes a hybrid neural network with a novel feature selection module for the identification of its degradation status. Specifically, the temporal tendency information and spatial fault patterns of monitored degradation torques are captured through a long- short-term memory (LSTM) network and a stacked Convolutional neural network (CNN) respectively. Besides, to effectively integrate these dual networks, a novel attention module absorbing the temporal features is proposed to reweight the spatial convolutional features. In particular, to explore fault information in the presence of multiple monitored torques, a regularized multi-task classifier is introduced to learn diverse representations. Experiments based on an industrial self-locking dataset proved that the proposed method possesses an accurate identification capability of degradation status than conventional neural networks.
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