Structural Vibration Signal Denoising Using Stacking Ensemble of Hybrid CNN-RNN

Youzhi Liang, Wen-Chieh Liang, Jianguo Jia
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引用次数: 3

Abstract

Vibration signals have been increasingly utilized in various engineering fields for analysis and monitoring purposes, including structural health monitoring, fault diagnosis and damage detection, where vibration signals can provide valuable information about the condition and integrity of structures. In recent years, there has been a growing trend towards the use of vibration signals in the field of bioengineering. Activity-induced structural vibrations, particularly footstep-induced signals, are useful for analyzing the movement of biological systems such as the human body and animals, providing valuable information regarding an individual’s gait, body mass, and posture, making them an attractive tool for health monitoring, security, and human-computer interaction. However, the presence of various types of noise can compromise the accuracy of footstep-induced signal analysis. In this paper, we propose a novel ensemble model that leverages both the ensemble of multiple signals and of recurrent and convolutional neural network predictions. The proposed model consists of three stages: preprocessing, hybrid modeling, and ensemble. In the preprocessing stage, features are extracted using the Fast Fourier Transform and wavelet transform to capture the underlying physics-governed dynamics of the system and extract spatial and temporal features. In the hybrid modeling stage, a bi-directional LSTM is used to denoise the noisy signal concatenated with FFT results, and a CNN is used to obtain a condensed feature representation of the signal. In the ensemble stage, three layers of a fully-connected neural network are used to produce the final denoised signal. The proposed model addresses the challenges associated with structural vibration signals, which outperforms the prevailing algorithms for a wide range of noise levels, evaluated using PSNR, SNR, and WMAPE.
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基于混合CNN-RNN叠加综的结构振动信号去噪
振动信号越来越多地用于各种工程领域的分析和监测,包括结构健康监测、故障诊断和损伤检测,其中振动信号可以提供有关结构状态和完整性的有价值的信息。近年来,振动信号在生物工程领域的应用呈现出日益增长的趋势。活动引起的结构振动,特别是脚步声引起的信号,对于分析生物系统(如人体和动物)的运动非常有用,可以提供有关个人步态、体重和姿势的宝贵信息,使其成为健康监测、安全和人机交互的有吸引力的工具。然而,各种类型的噪声的存在会影响足迹信号分析的准确性。在本文中,我们提出了一种新的集成模型,该模型既利用了多个信号的集成,也利用了循环和卷积神经网络预测。该模型分为预处理、混合建模和集成三个阶段。在预处理阶段,使用快速傅立叶变换和小波变换提取特征,以捕获系统的底层物理控制动态,并提取空间和时间特征。在混合建模阶段,使用双向LSTM对与FFT结果拼接的噪声信号进行降噪,并使用CNN获得信号的压缩特征表示。在集成阶段,使用三层全连接神经网络来产生最终的去噪信号。所提出的模型解决了与结构振动信号相关的挑战,在广泛的噪声水平范围内优于现行算法,使用PSNR, SNR和WMAPE进行评估。
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