Optical Fiber Intrusion Signal Recognition Based on Improved Mel Frequency Cepstrum Coefficient

Yuan Zhang, Lu Zhao, Qing Tian, Jun Fan
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引用次数: 5

Abstract

Oil and gas resources pipelines, boundary lines and other places need to monitor their safety status in real time. The fiber early warning system becomes a good choice for its high sensitivity, corrosion resistance and concealment. The system provides early warning of the detection of fiber vibration signals. In this paper, an improved Mel frequency cepstrum coefficient (MFCC) method is proposed for the cepstrum characteristics recognition of different typical optical fiber vibration signals. Firstly, we pre-process the intrusion signals and obtain its power spectral density (PSD) to quantify the difference of frequency spectrum in respective intrusions. Secondly, the adaptive filter bank is designed according to the distribution of signal power spectrum to improve the conventional MFCC method. Through the analysis of the characteristic parameters, the MFCC coefficients are obtained. Finally, the Mean-crossing rates (MCR) of MFCC are calculated and the appropriate thresholds are selected to classify the typical vibration signals. Compared with the traditional MFCC, this improved MFCC method realizes adaptive division of frequency band according to the distribution of signal power spectrum. Experiments show that the algorithm can identify the manual signal, the mechanical signal and the vehicle signal in the research of the vibration signal recognition of the optical fiber pre-warning system (OFPS).
基于改进Mel倒谱系数的光纤入侵信号识别
油气资源管道、边界线等场所需要对其安全状况进行实时监控。光纤预警系统以其灵敏度高、耐腐蚀、隐蔽性好等优点成为较好的选择。该系统可对检测到的光纤振动信号进行预警。本文提出了一种改进的Mel频率倒频谱系数(MFCC)方法,用于不同典型光纤振动信号的倒频谱特征识别。首先对入侵信号进行预处理,得到入侵信号的功率谱密度(PSD),量化各入侵信号的频谱差异;其次,根据信号功率谱分布设计自适应滤波器组,对传统的MFCC方法进行改进;通过对特征参数的分析,得到了MFCC系数。最后,计算MFCC的平均交叉率(MCR),并选择合适的阈值对典型振动信号进行分类。与传统的MFCC方法相比,改进的MFCC方法实现了根据信号功率谱分布的自适应频段划分。实验表明,在光纤预警系统(OFPS)振动信号识别研究中,该算法可以识别出手动信号、机械信号和车辆信号。
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