一种基于声学信号的弓网燃弧检测新方法

A New Method for Pantograph-Catenary Arc Detection Based on Acoustic Signals

  • 摘要:
    目的 为了提高城市轨道交通对于燃弧的检测精度及准度,弥补现有电学、光学等燃弧检测方法的不足之处,有必要研究新的弓网燃弧检测方法。
    方法 采用梅尔倒谱系数方法提取声音特征,包括声学信号的预处理、频谱功率谱的分析计算、梅尔滤波、离散余弦变换等;对于不同声学信号,将梅尔倒谱系数作为特征向量组,并以此作为音频特征,区分弓网燃弧、环境噪声、气动噪声、电流噪声等多种弓网伴随声音。选用K-means聚类分析算法对音频的分类结果进行特征识别及区分;引入高斯混合模型-隐马尔可夫模型对燃弧声音特征进行建模识别,并将其与我国山西某地铁线路实测数据进行对比,以验证所提模型的准确性。
    结果及结论 所提高斯混合模型-隐马尔可夫模型对燃弧音频有较好的识别效果,能够作为一种基于声学信号的弓网燃弧检测新方法,可以弥补传统燃弧检测方法的不足。

     

    Abstract:
    Objective To enhance the accuracy and precision of arc detection in urban rail transit and address the limitations of existing arc detection methods such as electrical and optical approaches, it is necessary to develop new pantograph-catenary arc detection approaches.
    Method The Mel Frequency Cepstral Coefficient (MFCC) method is adopted to extract sound features, including the preprocessing of acoustic signals, analysis and calculation of spectral power spectrum, Mel filtering, and discrete cosine transform. For different acoustic signals, MFCCs are used as feature vector sets and audio features to distinguish various pantograph-catenary accompanying sounds, such as pantograph-catenary arcing, ambient noise, aerodynamic noise, and current noise. The K-means clustering algorithm is employed for feature recognition and differentiation of audio classification results. A Gaussian Mixture Model-Hidden Markov Model (GMM-HMM) is introduced for modelling and identification of arcing sound features, and its accuracy is verified by comparison with the measured data from a metro line in Shanxi Province, China.
    Result & Conclusion  The proposed GMM-HMM exhibits excellent recognition performance for arcing audio. It can serve as a novel acoustic signal-based detection method for pantograph-catenary arcing, thereby making up for the limitations of conventional arcing detection methods.

     

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