深海移动水下声道的特征提取和分类

Chenyu Pan, Songzuo Liu, Xin Qing, Gang Qiao
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引用次数: 0

摘要

可靠声学路径(RAP)是深海声音传播的关键信道之一,它受界面影响小,传输损耗低,可实现远距离通信。然而,基于 RAP 的深海声学通信可能面临信道模型不匹配的问题。为了分析时空变异信道的动态特性,进行了深海移动水下声学信道测量实验。本研究提出了一种基于多维特性的深度学习方法来对深海信道进行分类。具体来说,声射线汇聚区导致 RAP 信道中复杂的多径结构和严重的延迟扩散。利用模糊均值(FCM)算法进行多径聚类,提取准确的信道特征,然后引入马尔可夫链(MC)跟踪多径聚类的演化特征。最后,将信道时变脉冲响应(TVIR)和多维统计特性的耦合特征作为卷积神经网络(CNN)的输入,得到信道分类的量化评价指标,从而建立水下移动平台的信道特征数据集。该数据集可有效帮助识别深海移动信道,促进移动平台自适应水下声学通信系统的发展。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature extraction and classification of deep-sea mobile underwater acoustic channels
The reliable acoustic path (RAP) is one of the crucial channels for deep-sea sound propagation, which is affected weakly by the interface and has lower transmission loss, enabling long-distance communication. However, RAP-based deep-sea acoustic communication may face channel model mismatch issues. In order to analyze the dynamic characteristics of spatial-temporalvariability channels, deep-sea mobile underwater acoustic channel measurement experiments were conducted. This work proposes a deep learning method based on multi-dimensional properties to classify deep-sea channels. Specifically, the sound ray convergence zone leads to a complex multipath structure and severe delay spread in the RAP channel. The fuzzy c-means (FCM) algorithm is used for multipath clustering to extract accurate channel features, and then the Markov chain (MC) is introduced to track the evolution characteristics of multipath clusters. Finally, the coupling features of channel time-variant impulse response (TVIR) and multi-dimensionalstatistical properties are used as the input of convolutional neural networks (CNNs) to obtain the quantitative evaluation index as the channel classification to build a channel feature dataset for underwater mobile platforms. This dataset can effectively assist in identifying deep-sea mobile channels and promote the development of adaptive underwater acoustic communication systems on mobile platforms.
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