Cancelling tow ship noise using an adaptive model-based approach

J. Candy, E. Sullivan
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引用次数: 13

Abstract

Ship noise is a major contributor to towed array measurement uncertainties that can lead to large estimation errors. Many approaches ignore this problem, since they rely on inherent narrowband processing to remove these effects. The overall signal-to-noise ratio (SNR) available is therefore decreased making the signal extraction problem more difficult. In this paper we discuss the development of an adaptive model-based processor (AMBP) for signal enhancement from a set of noisy hydrophone measurements contaminated with tow ship noise. These results provide a solution to the adaptive joint cancellation/signal enhancement problem. Here we concentrate on the underlying theoretical development demonstrating the relationship between the canceller and model-based signal enhancer.
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基于自适应模型的拖船噪声消除方法
船舶噪声是拖曳阵测量不确定性的主要因素,会导致较大的估计误差。许多方法忽略了这个问题,因为它们依赖于固有的窄带处理来消除这些影响。因此,可用的总体信噪比(SNR)降低,使信号提取问题更加困难。本文讨论了一种基于自适应模型的处理器(AMBP)的开发,用于从一组受拖船噪声污染的噪声水听器测量中增强信号。这些结果为自适应联合抵消/信号增强问题提供了一种解决方案。在这里,我们专注于潜在的理论发展,展示了消除器和基于模型的信号增强器之间的关系。
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