Modeling of shallow water sea ambient noise using artificial neural network

M. A. A. Rehmani, E. Raza, H. I. Hussain
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Abstract

In underwater signal processing the most important factor in quantifying the signatures of the radiating object is to decipher the signals which are prevalent in the ambient noise. Ambient noise is a complex and important phenomenon which greatly affects the listening capacity of instruments such as sonar in underwater environment. The ambient noise in sea is the overall combination of wind speed, wave speed, wave height, barometric pressure, dew point, temperature, marine life, shipping traffic and seismic activities. The work presented in this paper focuses only on three of the above mentioned parameters, namely, the wind speed, the barometric pressure and the temperature; which affect and play an important role in the overall spectrum of ambient noise in shallow water. In order to analyze the same data gathered in Ormara harbor over the past ten years was studied. Variation of the ambient noise in shallow water is investigated with respect to the above mentioned parameters. Finally a model for the ambient noise is proposed which is trained using an artificial neural network. High prediction accuracies of around 96% are obtained in different ISO standard octave bands.
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浅水海洋环境噪声的人工神经网络建模
在水下信号处理中,对辐射目标特征进行量化的最重要因素是对存在于环境噪声中的信号进行解码。环境噪声是一种复杂而重要的现象,它极大地影响着声纳等仪器在水下环境中的聆听能力。海洋环境噪声是风速、波速、波高、气压、露点、温度、海洋生物、船舶交通、地震活动等综合因素的综合。本文所做的工作只集中在上述三个参数上,即风速、气压和温度;它们在浅水环境噪声的整体频谱中起着重要的作用。为了分析过去十年在奥尔马拉港收集的相同数据,我们进行了研究。研究了浅水环境噪声对上述参数的影响。最后提出了一种基于人工神经网络的环境噪声模型。在不同的ISO标准倍频带下,预测精度达到96%左右。
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