Tollefsen Dag, Gerstoft Peter, Hodgkiss William S
Norwegian Defence Research Establishment (FFI), Box 115, 3191 Horten, Norway.
Scripps Institution of Oceanography, University of California San Diego, La Jolla, California 92093, USA.
J Acoust Soc Am. 2017 Mar;141(3):1501. doi: 10.1121/1.4976214.
This paper considers concurrent matched-field processing of data from multiple, spatially-separated acoustic arrays with application to towed-source data received on two bottom-moored horizontal line arrays from the SWellEx-96 shallow water experiment. Matched-field processors are derived for multiple arrays and multiple-snapshot data using maximum-likelihood estimates for unknown complex-valued source strengths and unknown error variances. Starting from a coherent processor where phase and amplitude is known between all arrays, likelihood expressions are derived for various assumptions on relative source spectral information (amplitude and phase at different frequencies) between arrays and from snapshot to snapshot. Processing the two arrays with a coherent-array processor (with inter-array amplitude and phase known) or with an incoherent-array processor (no inter-array spectral information) both yield improvements in localization over processing the arrays individually. The best results with this data set were obtained with a processor that exploits relative amplitude information but not relative phase between arrays. The localization performance improvement is retained when the multiple-array processors are applied to short arrays that individually yield poor performance.
本文考虑对来自多个空间分离的声学阵列的数据进行并发匹配场处理,并将其应用于从SWellEx - 96浅水实验中两个底部系泊的水平线阵接收的拖曳源数据。利用未知复值源强度和未知误差方差的最大似然估计,推导了多阵列和多快照数据的匹配场处理器。从所有阵列之间相位和幅度已知的相干处理器开始,针对阵列之间以及快照之间相对源谱信息(不同频率下的幅度和相位)的各种假设,推导似然表达式。使用相干阵列处理器(阵列间幅度和相位已知)或非相干阵列处理器(无阵列间谱信息)处理这两个阵列,与单独处理阵列相比,在定位方面都有改进。对于该数据集,使用利用阵列间相对幅度信息但不利用相对相位的处理器可获得最佳结果。当将多阵列处理器应用于单独性能较差的短阵列时,定位性能的提升得以保留。