模拟北极环境中卷积神经网络源距离估计的鲁棒性分析

Rui Chen, H. Schmidt
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引用次数: 0

摘要

本研究提出了一种卷积神经网络(CNN)方法用于北极传播环境下的水下源距离估计,并将其性能与传统匹配场处理(MFP)进行了比较。在垂直线阵列上模拟源的协方差矩阵被用作输入数据,并通过分类和回归方法检查估计。网络架构设计为直观和轻量级;正则化是为了防止过度拟合。训练数据包括近地表单极源的声输出,该单极源位于距离接收阵列3-50公里之间的离散距离增量上;测试数据是通过将源放置在训练间隔内的随机范围来生成的。测试了CNN模型对声速剖面(SSP)变异性的鲁棒性。结果表明,与MFP方法相比,当SSP建模准确时,CNN方法对SSP失配的容忍度更高,但代价是距离分辨率较差。通过检查CNN模型过滤器激活和中间层输出,我们深入了解了它们如何生成预测并实现其鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robustness Analysis of a Convolutional Neural Network Approach to Source-Range Estimation in a Simulated Arctic Environment
This study presents a convolutional neural network (CNN) approach to underwater source-range estimation in an Arctic propagation environment and compares its performance to conventional matched field processing (MFP). The covariance matrices of simulated sources upon a vertical line array are used as input data and estimates through both classification and regression approaches are examined. The network architecture is designed to be intuitive and lightweight; regularization is implemented to prevent over-fitting. The training data consist of acoustic outputs from a near-surface monopole source placed at discrete range increments between 3-50 km away from the receiving array; the test data are generated by placing the source at random ranges within the training interval. Robustness of the CNN models to sound speed profile (SSP) variability is tested. Results show that the CNN approaches are more tolerant of SSP mismatch compared to MFP at the expense of worse range resolution when the SSP is modelled accurately. By examining the CNN models filter activations and intermediate layer outputs, we present insights into how they generate predictions and achieve their robustness.
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