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首页> 外文期刊>Open Journal of Fluid Dynamics >Comparative Analysis of Velocity Decomposition Methods for Internal Combustion Engines
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Comparative Analysis of Velocity Decomposition Methods for Internal Combustion Engines

机译:内燃机速度分解方法的比较分析

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Different signal processing technique performances are compared to each other with regard to separating the mean and fluctuating velocity components of a simulated one-dimensional unsteady velocity signal comparable to signals observed in internal combustion engines. A simulation signal with known mean and fluctuating components was generated using experimental data and generic turbulence spectral information. The simulation signal was generated based on observations on the measured velocity data obtained using LDV in a motored Briggs-and-Stratton engine at about 600 RPM. Experimental data was used as a guide to shape the simulated signal mean velocity variation; fluctuating velocity variations with specified spectrum and standard deviation was used to mimic the turbulence. Cyclic variations were added both to the mean and the fluctuating velocity signals to simulate prescribed cyclic variations. The simulated signal was introduced as input to the following algorithms: ensemble averaging; high-pass filtering; Proper-Orthogonal Decomposition (POD); Wavelet Decomposition (WD) and Wavelet Decomposition/Principal Component Analysis (WD/PCA). The results were analyzed to determine the best method in correctly separating the mean and the fluctuating velocity information, indicating that the WD/PCA performs better compared to other techniques.
机译:在分离模拟的一维非定常速度信号的平均值和波动速度分量方面,可以将不同的信号处理技术性能相互比较,与在内燃机中观察到的信号相比。使用实验数据和通用湍流谱信息生成具有已知平均值和波动分量的模拟信号。仿真信号是基于对使用LDV在约600 RPM的电动Briggs-Straton发动机中获得的测得速度数据的观察结果而生成的。实验数据被用来指导模拟信号的平均速度变化。使用具有指定频谱和标准偏差的波动速度变化来模拟湍流。将周期变化添加到平均值和波动速度信号中,以模拟规定的周期变化。将模拟信号作为以下算法的输入:集合平均;高通滤波正交分解(POD);小波分解(WD)和小波分解/主成分分析(WD / PCA)。对结果进行了分析,以确定正确分离平均值和波动速度信息的最佳方法,这表明WD / PCA与其他技术相比表现更好。

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