首页> 外文期刊>IEEE Journal of Oceanic Engineering >Seabed Characterization Using Acoustic Communication Signals on an Autonomous Underwater Vehicle With a Thin-Line Towed Array
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Seabed Characterization Using Acoustic Communication Signals on an Autonomous Underwater Vehicle With a Thin-Line Towed Array

机译:带有细线拖曳阵列的自主水下航行器上使用声通信信号进行海床表征

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摘要

Sediment classification was demonstrated using the self-noise of an autonomous underwater vehicle (AUV) received on a short towed array. The adopted approach was to separate the direct path and the surface- and bottom-reflected signals. Electrical interference from the source was used to verify source receiver separation. The amplitude ratio of the bottom reflected to the direct path signal levels, after compensating for the differences in absorption, spreading losses, and beam patterns, yields the bottom-reflection loss, at the applicable grazing angle. The latter is calculated from the travel time difference between the direct path and bottom-reflected signals. The method is self-calibrating, requiring absolute calibration of neither sound source nor receivers. The definitive isolation of the reflected and direct path signals and the self-calibrating property make this approach robust. The reflection loss may be compared to known seabed models to estimate sediment type.
机译:使用在短拖曳阵列上接收到的自动水下航行器(AUV)的自噪声,证明了沉积物的分类。所采用的方法是将直接路径与表面和底部反射的信号分开。来自源的电干扰被用来验证源接收器的分离。在补偿了吸收,扩展损耗和光束方向图的差异之后,反射的底部与直接路径信号电平的振幅比在适用的掠射角下产生了底部反射损耗。后者是根据直接路径与底部反射信号之间的传播时间差计算得出的。该方法是自校准的,不需要对声源和接收器都进行绝对校准。反射和直接路径信号的确定隔离以及自校准特性使该方法变得可靠。可以将反射损失与已知的海床模型进行比较,以估算沉积物类型。

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