Huang Wenkuan, Li Yong, Tang Jinsong, Qian Linfang
School of Mechanical Engineering, Nanjing University of Science and Technology, Nanjing 210094, China.
Northwest Institute of Mechanical and Electrical Engineering, Xianyang 712099, China.
Sensors (Basel). 2024 Jan 28;24(3):847. doi: 10.3390/s24030847.
With the development of modern military technology, electrical drive technology has become a power source for modern artillery. In fault monitoring of a driving motor mounted on a piece of artillery, various sensors are susceptible to interference from the complex environment, both inside and outside the artillery itself. In this study, we creatively propose a fault diagnosis model based on an attention mechanism, the AdaBoost method and a wavelet noise reduction network to address the difficulty in obtaining high-quality motor signals in complex noisy interference environments. First, multiple fusion wavelet basis, soft thresholding, and index soft filter optimization were used to train multiple wavelet noise reduction networks that could recover sample signals under different noise conditions. Second, a convolutional neural network (CNN) classification module was added to construct end-to-end classification models that could correctly identify faults. The above basis classification models were then integrated into the AdaBoost method with an improved attention mechanism to develop a fault diagnosis model suitable for complex noisy environments. Finally, two experiments were conducted to validate the proposed method. Under motor signals with varying signal-to-noise ratios (SNRs) noises, the proposed method achieved an average accuracy of 92%, surpassing the conventional method by over 8.5%.
随着现代军事技术的发展,电力驱动技术已成为现代火炮的动力源。在某门火炮上安装的驱动电机的故障监测中,各种传感器容易受到火炮内部和外部复杂环境的干扰。在本研究中,我们创造性地提出了一种基于注意力机制、AdaBoost方法和小波降噪网络的故障诊断模型,以解决在复杂噪声干扰环境中获取高质量电机信号的困难。首先,使用多重融合小波基、软阈值处理和指数软滤波器优化来训练多个小波降噪网络,这些网络能够在不同噪声条件下恢复样本信号。其次,添加卷积神经网络(CNN)分类模块以构建能够正确识别故障的端到端分类模型。然后将上述基础分类模型集成到具有改进注意力机制的AdaBoost方法中,以开发适用于复杂噪声环境的故障诊断模型。最后,进行了两项实验来验证所提出的方法。在具有不同信噪比(SNR)噪声的电机信号下,所提出的方法平均准确率达到92%,比传统方法高出8.5%以上。