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Acoustics Source Identification of Diesel Engines Based on Variational Mode Decomposition, Fast Independent Component Analysis, and Hilbert Transformation

机译:基于变分模式分解,快速独立分量分析和HILBERT转换的柴油机声学源识别

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Diesel engines are widely used in railway systems, particularly in freight trains. Despite their high efficiency in energy conversion, they usually generate high levels of acoustics pollution during operation. In order to mitigate this problem, a series of active/passive acoustics control methods are used to reduce noise. Most of these methods are only effective if the prior knowledge of sources is given. In other words, it is essential to recognize the acoustics source. Variational mode decomposition (VMD) is a signal processing method that enhances the signal corrupted by background noise. However, the decomposed results of VMD depend on their mode parameter and penalty parameter. Therefore, an evaluation method based on system modal parameters (natural frequency and damping ratio) is proposed to select the mode parameter, and the penalty parameter can be selected from the power spectra of signals. In order to increase the accuracy of decomposition for diesel engines and find out the sources of acoustics, a method combining VMD, fast independent component analysis, and Hilbert transformation (VMD-FastICA-HT) is proposed for the separation and identification of different sources for diesel engines. The optimization results indicate that when the penalty parameter value is 1.5 to 16 times the maximum signal amplitude, better decomposition results can be achieved. Therefore, the separated independent acoustics are more accurate in source identification. Furthermore, both simulation data and in situ operational data of diesel engines for vehicles are used to validate the effectiveness of the proposed method.
机译:柴油发动机广泛用于铁路系统,特别是在货运列车中。尽管能量转换效率高,但它们通常在运行期间产生高水平的声学污染。为了缓解此问题,使用一系列主动/被动声学控制方法来减少噪声。大多数这些方法仅在给出了源的先前知识时才有效。换句话说,识别声学源至关重要。变分模式分解(VMD)是一种信号处理方法,其增强了背景噪声损坏的信号。但是,VMD的分解结果取决于其模式参数和惩罚参数。因此,提出了一种基于系统模态参数(自然频率和阻尼比)的评估方法来选择模式参数,并且可以从信号的功率谱中选择惩罚参数。为了提高柴油发动机分解的准确性并找出声学来源,提出了一种组合VMD,快速独立分量分析和HILBERT转换(VMD-Fastica-HT)的方法,用于分离和识别不同来源柴油发动机。优化结果表明,当惩罚参数值为最大信号幅度的1.5到16倍时,可以实现更好的分解结果。因此,分离的独立声学在源识别中更准确。此外,用于车辆的柴油发动机的模拟数据和原位运行数据用于验证所提出的方法的有效性。

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