Super-resolution localization and orientation estimation of multiple dipole sound sources: From a maximum likelihood framework to wind tunnel validation
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引用次数: 0
Abstract
This paper investigates the identification of multiple dipole sound sources using sound pressures measured from a microphone array. The problem is addressed in the maximum likelihood (ML) framework, where the locations, orientations, and powers of multiple dipole sound sources are unknown parameters to be estimated. By the consistency property of ML, the estimated parameters converge to their actual values, which implies an asymptotically perfect spatial resolution, if a sufficiently high signal-to-noise ratio can be achieved. In order to reduce the dimension of the optimization problem of ML, the contribution of each dipole source to the measured pressures is assumed to be a latent variable and the ML problem is equivalently solved via the expectation–maximization (EM) algorithm, which iteratively and sequentially updates each source contribution and the associated sound source parameters. The number of sound sources can also be determined by the model selection approaches which add a penalty of model dimension to the ML objective function. The proposed method is assessed via a laboratory experiment where the sound field is produced by dipole speakers and a wind tunnel experiment where airframe aerodynamic noise is generated at a high Reynolds number. Experimental results show that the proposed method outperforms existing approaches in the sense of higher spatial resolution, more accurate localization, and the capacity to identify the orientations of multiple dipole sound sources.
本文研究了利用麦克风阵列测得的声压识别多个偶极声源的问题。该问题是在最大似然法(ML)框架下解决的,多个偶极声源的位置、方向和功率都是需要估计的未知参数。根据最大似然法的一致性特性,如果能达到足够高的信噪比,估计参数会收敛到其实际值,这意味着空间分辨率近似完美。为了降低 ML 优化问题的维度,每个偶极声源对测量压力的贡献被假定为一个潜变量,ML 问题可等效地通过期望最大化(EM)算法来解决,该算法会迭代并依次更新每个声源贡献和相关声源参数。声源的数量也可以通过模型选择方法来确定,这种方法在 ML 目标函数中增加了模型维度的惩罚。通过偶极子扬声器产生声场的实验室实验和在高雷诺数下产生机身空气动力噪声的风洞实验,对所提出的方法进行了评估。实验结果表明,所提出的方法在更高的空间分辨率、更精确的定位以及识别多个偶极声源方向的能力方面优于现有方法。
期刊介绍:
The Journal of Sound and Vibration (JSV) is an independent journal devoted to the prompt publication of original papers, both theoretical and experimental, that provide new information on any aspect of sound or vibration. There is an emphasis on fundamental work that has potential for practical application.
JSV was founded and operates on the premise that the subject of sound and vibration requires a journal that publishes papers of a high technical standard across the various subdisciplines, thus facilitating awareness of techniques and discoveries in one area that may be applicable in others.