使用小波和经验模式分解技术对工具发出的声音信号进行分解--比较

Symmetry Pub Date : 2024-09-18 DOI:10.3390/sym16091223
Emerson Raja Joseph, Hossen Jakir, Bhuvaneswari Thangavel, Azlina Nor, Thong Leng Lim, Pushpa Rani Mariathangam
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引用次数: 0

摘要

分析从动态过程中获得的非稳态和非线性声音信号是信号处理领域最大的挑战之一。车床操作是一个高度动态的过程,受到许多事件的影响,如动态响应、切屑形成和加工操作条件。传统的、广泛使用的快速傅里叶变换和频谱图并不适合处理从动态系统中获取的声音信号,因为它们的结果存在明显的缺陷,因为存在静态假设和先验基础。一种相对较新的技术,即使用小波分解(WD)的离散小波变换(DWT),以及最近开发的使用经验模式分解(EMD)的希尔伯特-黄变换(HHT),在分析非线性和非稳态声音信号方面具有明显更好的特性。EMD 处理通过在信号上形成对称包络,帮助 HHT 定位信号的瞬时频率。本文旨在介绍使用 EMD 和 WD 对多成分声音信号进行分解的比较研究,以突出 HHT 分析车削过程中接收到的刀具发出的声音信号的适用性。实现这一目标的方法是通过在车床上进行实验来记录刀具发出的声音信号,并比较使用 WD 和 EMD 技术分解信号的结果。除了简短的变换数学和理论基础外,本文还通过车削中刀具侧面磨损监测的实验案例研究证明了其分解强度。本文还得出结论,HHT 比 DWT 更适合分析车削过程中接收到的刀具发出的声音信号。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tool-Emitted Sound Signal Decomposition Using Wavelet and Empirical Mode Decomposition Techniques—A Comparison
Analysis of non-stationary and nonlinear sound signals obtained from dynamical processes is one of the greatest challenges in signal processing. Turning machine operation is a highly dynamic process influenced by many events, such as dynamical responses, chip formations and the operational conditions of machining. Traditional and widely used fast Fourier transformation and spectrogram are not suitable for processing sound signals acquired from dynamical systems as their results have significant deficiencies because of stationary assumptions and having an a priori basis. A relatively new technique, discrete wavelet transform (DWT), which uses Wavelet decomposition (WD), and the recently developed technique, Hilbert–Huang Transform (HHT), which uses empirical mode decomposition (EMD), have notably better properties in the analysis of nonlinear and non-stationary sound signals. The EMD process helps the HHT to locate the signal’s instantaneous frequencies by forming symmetrical envelopes on the signal. The objective of this paper is to present a comparative study on the decomposition of multi-component sound signals using EMD and WD to highlight the suitability of HHT to analyze tool-emitted sound signals received from turning processes. The methodology used to achieve the objective is recording a tool-emitted sound signal by way of conducting an experiment on a turning machine and comparing the results of decomposing the signal by WD and EMD techniques. Apart from the short mathematical and theoretical foundations of the transformations, this paper demonstrates their decomposition strength using an experimental case study of tool flank wear monitoring in turning. It also concludes HHT is more suitable than DWT to analyze tool-emitted sound signals received from turning processes.
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