Vibration Signal Decomposition using Dilated CNN

Eli Gildish, Michael Grebshtein, Yehudit Aperstein, Igor Makienko
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Abstract

Vibration sensors have gained increasing popularity as valuable tools for Prognostics and Health Management (PHM) applications, enabling early detection of mechanical failures in industrial machines. Vibration signals comprise two main sources of information: periodic vibrations from components, phase-locked to the rotating speed (e.g., gears), and non-deterministic broadband vibrations associated with bearings, structure, and background noise. In PHM applications, it is important to decompose vibrations into these two sources to optimize the use of different diagnostic methods for each signal component. In practice, the decomposition should be cost-effective by working without supplementary information about system operating conditions and kinematics. Existing methods of vibration source separation commonly rely on an auto-regression (AR) model of vibrations and employ adaptive filtering techniques to estimate its parameters. However, these methods suffer from degraded accuracy in complex geared vibrations containing numerous periodic components and requiring large filter length to promise high frequency resolution in component separation. To address these challenges, we propose a new method that utilizes dilated Convolutional Neural Networks (CNNs) instead of adaptive filtering to improve the accuracy of decomposing complex vibration signals, all without the need for any supplementary information. To evaluate the performance of the new method, we conducted experiments using both simulated signals and real-world vibrations. The simulation results demonstrate improved accuracy in signal decomposition when our method is used instead of adaptive filtering. Additionally, the new method applied to real vibrations, showcases significant enhancement in bearing failure detection through accurate isolation of bearing-related vibrations. This study reveals the potential of our new method in various PHM applications requiring highly accurate diagnostics and prognostics in complex geared vibrations, particularly when supplementary information about operating conditions and system kinematics is unavailable.
基于扩张CNN的振动信号分解
振动传感器作为预测和健康管理(PHM)应用的宝贵工具越来越受欢迎,可以早期检测工业机器中的机械故障。振动信号包括两个主要的信息来源:来自组件的周期性振动,锁相到转速(例如,齿轮),以及与轴承,结构和背景噪声相关的非确定性宽带振动。在PHM应用中,重要的是将振动分解为这两个源,以优化对每个信号成分使用不同的诊断方法。在实际操作中,在没有系统运行条件和运动学补充信息的情况下,分解应该是经济有效的。现有的振动源分离方法通常依赖于振动的自回归(AR)模型,并采用自适应滤波技术来估计其参数。然而,这些方法在包含许多周期分量的复杂齿轮振动中精度下降,并且需要较大的滤波器长度才能保证在分量分离中实现高频率分辨率。为了解决这些挑战,我们提出了一种新的方法,利用扩展卷积神经网络(cnn)而不是自适应滤波来提高分解复杂振动信号的精度,而不需要任何补充信息。为了评估新方法的性能,我们使用模拟信号和现实世界的振动进行了实验。仿真结果表明,用该方法代替自适应滤波可以提高信号分解的精度。此外,新方法应用于实际振动,通过准确隔离轴承相关振动,显着增强了轴承故障检测。这项研究揭示了我们的新方法在各种需要高精度诊断和预测复杂齿轮振动的PHM应用中的潜力,特别是在无法获得有关操作条件和系统运动学的补充信息的情况下。
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