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基于偶极子波束形成的叶片噪声快速定位方法

Fast Localization Method for Blade Noise Based on Dipole Beamforming

  • 摘要: 偶极子波束形成方法在旋转叶片噪声定位中存在成像结果与设备运行机理关联性不强的问题,而特征频率是机械设备运行机理在声学上的直接体现。本研究提出一种以特征频率作为成像频率的优化算法,进行了系统的仿真与实验。以轴流风机叶片为主要研究对象,对比了该方法与单极子模态组合波束形成的成像性能与计算效率,并进一步应用于无人机桨叶气动噪声定位。结果表明该方法能识别噪声指向性,且计算时间仅为单极子方法的1/4。以成像主瓣与叶片径向或尾缘走向的夹角为判断依据,结合指向性分析可得,轴流风机叶片旋转还产生分离流噪声,无人机桨叶则主要产生尾缘噪声与载荷噪声。研究结论表明,基于偶极子波束形成的叶片噪声快速定位方法具有较强的工程适用性,研究成果可为工业机械噪声控制与低空飞行器声学优化提供技术支撑。

     

    Abstract: Dipole beamforming methods exhibit weak correlation between imaging results and equipment operational mechanisms in rotating blade noise localization, whereas characteristic frequencies directly map equipment operational mechanisms to acoustic signals. This study proposes an optimization algorithm using characteristic frequencies as imaging frequencies, conducting systematic simulations and experiments. Using axial fan blades as the primary subject, it compares the imaging performance and computational efficiency of the proposed method with those of monopole mode combination beamforming, and further applies it to locating aerodynamic noise from unmanned aerial vehicle (UAV) propellers. Results demonstrate that this method can identify noise directivity while reducing computation time to one-quarter of that required by the monopole method. By analyzing the angle between the imaging main lobe and the blade's radial or trailing edge direction, combined with directivity analysis, it is determined that axial fan blades generate separation flow noise, while drone propellers primarily produce trailing edge noise and load noise. The results indicate that the dipole beam-based rapid blade noise localization method exhibits strong engineering applicability. These findings provide technical support for industrial machinery noise control and acoustic optimization of low-altitude aircraft.

     

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