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Blind source separation and identification of internal combustion engine noise based on independent component and wavelet analysis

机译:基于独立分量和小波分析的盲源分离与内燃机噪声识别

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The independent component analysis and wavelet transform technology are used to separate and identify the internal combustion engine noise signal. According to the basic principle of independent component analysis, FastICA based on negative entropy great with the good stability and convergence speed algorithm is applied to separate the noise signals of six cylinder diesel engine. And the noise signals are decomposed into a series of independent components. The fast Fourier transform and wavelet transform technology are applied on each independent component analysis. Combining with the time-frequency analysis results and the internal combustion engine noise signal spectrum and the structure of the separation of the independent component and getting the corresponding relationship of different internal combustion engine noise sources. The results show that: the independent components correspond to the diesel engine combustion noise sources, the piston knock noise, and fuel injection pump noise and so on.
机译:独立分量分析和小波变换技术用于分离和识别内燃机噪声信号。根据独立分量分析的基本原理,将基于负熵的FastICA具有很好的稳定性和收敛速度算法,用于分离六缸柴油机的噪声信号。并且,噪声信号被分解为一系列独立的分量。快速傅里叶变换和小波变换技术被应用于每个独立的分量分析。结合时频分析结果与内燃机噪声信号频谱及结构的独立成分分离,得到不同内燃机噪声源的对应关系。结果表明:独立分量分别对应于柴油机燃烧噪声源,活塞爆震噪声和喷油泵噪声等。

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