Matched-field source localization using sparsely-coded neural network and data-model mixed training

Shou-Fu Cai, Wen Xu
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引用次数: 1

Abstract

Source localization is a basic problem in underwater acoustics. Many solving approaches have been developed, and the matched-field processing (MFP) is one of the mostly-studied. However, MFP is sensitive to the mismatch problem and performs well only when the knowledge of ocean environment is accurate. Machine learning learns directly from the observation and can be designed to learn a generic model suitable for different scenarios. In this paper, source localization is viewed as a machine learning problem and a matched-field source localization model is learned by training a sparsely-coded feed-forward neural network with mixed environment models and data. Sparsely-coded network can prevent the model from over-learning. Results on SWellEx-96 experiment show that the learned model achieves good positioning performance in source range estimation for varying sound-speed profiles (SSP). Compared with Bartlett matched-field processing, machine learning model is more robust and thus has potential advantages in underwater source localization.
基于稀疏编码神经网络和数据模型混合训练的匹配场源定位
声源定位是水声学中的一个基本问题。许多求解方法已经发展起来,其中匹配场处理(MFP)是研究最多的一种。然而,MFP对不匹配问题很敏感,只有在海洋环境知识准确的情况下才能表现良好。机器学习直接从观察中学习,可以设计成学习适用于不同场景的通用模型。本文将源定位视为一个机器学习问题,通过训练具有混合环境模型和数据的稀疏编码前馈神经网络来学习匹配场源定位模型。稀疏编码网络可以防止模型过度学习。实验结果表明,该模型在变声速剖面(SSP)声源距离估计中具有良好的定位性能。与Bartlett匹配场处理相比,机器学习模型具有更强的鲁棒性,在水下源定位方面具有潜在的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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