基于音频信号识别系统的旋转机械故障诊断:一种有效方法

Thabit Sultan Mohammed, M. Rasheed, M. Al-Ani, Qeethara Al-Shayea, F. Alnaimi
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引用次数: 11

摘要

提出了一种有效的旋转机械状态监测算法。状态指示器来源于声音信号,用来判断机器的性能状态。声音信号由麦克风记录,并使用时频域分析进行处理。在本研究中,统计特征数;如平均值,标准差,偏度和峰度被考虑。这些统计特征被证明是有效且易于解释的。考虑机器的健康、即将故障和故障性能状态,并记录每种状态的音频信号。实现的方法包括五个主要步骤:数据采集、预处理、特征提取、时频域分析和决策。基于所采用的统计度量,实验结果表明,该方法能很好地识别机器的性能状态,从而实现高效的故障检测和诊断。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Diagnosis of Rotating Machine Based on Audio Signal Recognition System: An Efficient Approach
An efficient algorithm for condition monitoring of rotating machines is proposed in this paper. Condition indicators are derived from sound signals, and used to arrive at a decision about the performance state of the machine. Sound signals are recorded by microphones and processed using time-frequency domain analysis. In this study, number of statistical features; such as mean, standard deviation, skewness, and kurtosis are considered. These statistical features were proven to be effective and simple to interpret. Healthy, about to be faulty, and faulty performance states of the machine are considered, and audio signals are recorded for each state. The five main steps comprising the implemented approach are data acquisition, preprocessing, feature extraction, time and frequency domain analysis, and the decision making. Based on the adopted statistical measures, the experimental results indicate that an excellent recognition of machine performance states is obtained, leading to an efficient fault detection and diagnosis.
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