Environmental Hydroacoustics Laboratory, Université Libre de Bruxelles, Avenue Franklin Roosevelt 50, CP 194/05, 1050 Brussels, Belgium.
J Acoust Soc Am. 2012 Apr;131(4):2668-81. doi: 10.1121/1.3689552.
Geoacoustic characterization of wide areas through inversion requires easily deployable configurations including free-drifting platforms, underwater gliders and autonomous vehicles, typically performing repeated transmissions during their course. In this paper, the inverse problem is formulated as sequential Bayesian filtering to take advantage of repeated transmission measurements. Nonlinear Kalman filters implement a random-walk model for geometry and environment and an acoustic propagation code in the measurement model. Data from MREA/BP07 sea trials are tested consisting of multitone and frequency-modulated signals (bands: 0.25-0.8 and 0.8-1.6 kHz) received on a shallow vertical array of four hydrophones 5-m spaced drifting over 0.7-1.6 km range. Space- and time-coherent processing are applied to the respective signal types. Kalman filter outputs are compared to a sequence of global optimizations performed independently on each received signal. For both signal types, the sequential approach is more accurate but also more efficient. Due to frequency diversity, the processing of modulated signals produces a more stable tracking. Although an extended Kalman filter provides comparable estimates of the tracked parameters, the ensemble Kalman filter is necessary to properly assess uncertainty. In spite of mild range dependence and simplified bottom model, all tracked geoacoustic parameters are consistent with high-resolution seismic profiling, core logging P-wave velocity, and previous inversion results with fixed geometries.
通过反演对广阔区域进行大地声学特征描述需要易于部署的配置,包括自由漂流平台、水下滑翔机和自动驾驶车辆,它们通常在航程中进行多次重复传输。在本文中,该反问题被表述为顺序贝叶斯滤波,以利用重复传输测量。非线性卡尔曼滤波器在测量模型中为几何形状和环境实施随机游走模型,并实施声学传播代码。测试使用 MREA/BP07 海上试验的数据,这些数据包括多音和调频信号(频段:0.25-0.8 和 0.8-1.6 kHz),在浅海时,四个水听器的垂直阵接收,间距为 5 米,漂流范围为 0.7-1.6 公里。对各个信号类型应用空间和时间相干处理。将卡尔曼滤波器的输出与独立应用于每个接收信号的一系列全局优化进行比较。对于这两种信号类型,顺序方法更准确,但也更高效。由于频率多样性,调制信号的处理产生更稳定的跟踪。尽管扩展卡尔曼滤波器可以提供可跟踪参数的可比估计,但需要集合卡尔曼滤波器来正确评估不确定性。尽管存在轻微的距离依赖性和简化的底部模型,但所有跟踪的大地声学参数都与高分辨率地震剖面、岩心测井 P 波速度以及具有固定几何形状的先前反演结果一致。