Department of Mathematical Sciences, New Jersey Institute of Technology, Newark, New Jersey 07102, USA.
J Acoust Soc Am. 2012 Nov;132(5):3041-52. doi: 10.1121/1.4756954.
Locating and tracking a source in an ocean environment and estimating environmental parameters of a sound propagation medium are critical tasks in ocean acoustics. Many approaches for both are based on full field calculations which are computationally intensive and sensitive to assumptions on the structure of the environment. Alternative methods that use only select features of the acoustic field for localization and environmental parameter estimation have been proposed. The focus of this paper is the development of a method that extracts arrival times and amplitudes of distinct paths from measured acoustic time-series using sequential Bayesian filtering, namely, particle filtering. These quantities, along with complete posterior probability density functions, also extracted by filtering, are employed in source localization and bathymetry estimation. Aspects of the filtering methodology are presented and studied in terms of their impact on the uncertainty in the arrival time estimates. Using the posterior probability densities of arrival times, source localization and water depth estimation are performed for the Haro Strait Primer experiment; the results are compared to those of conventional methods. The comparison demonstrates a significant advantage in the proposed approach.
在海洋环境中定位和跟踪声源并估计声传播介质的环境参数是海洋声学中的关键任务。许多针对这两个任务的方法都是基于全场计算的,这种计算方法计算量很大,并且对环境结构的假设很敏感。已经提出了一些仅使用声场的特定特征来进行定位和环境参数估计的替代方法。本文的重点是开发一种使用顺序贝叶斯滤波(即粒子滤波)从测量的声学时间序列中提取不同路径的到达时间和幅度的方法。这些数量以及通过滤波提取的完整后验概率密度函数,都被用于声源定位和水深估计。本文从到达时间估计不确定性的角度介绍和研究了滤波方法的各个方面。使用到达时间的后验概率密度,对哈罗海峡初级实验进行了声源定位和水深估计;并将结果与传统方法进行了比较。该比较表明,所提出的方法具有显著优势。