Using machine learning techniques in inverse problems of acoustical oceanography

反演(地质) 计算机科学 反问题 信号(编程语言) 小波 模式识别(心理学) 算法 隐马尔可夫模型 反变换采样 信号处理 反向 人工智能 地质学 数学 地震学 数学分析 几何学 电信 雷达 表面波 构造学 程序设计语言
作者
Costas Smaragdakis,Viktoria Taroudaki,Michael Taroudakis
出处
期刊:Studies in Applied Mathematics [Wiley]
卷期号:153 (2)
标识
DOI:10.1111/sapm.12704
摘要

Abstract The goal of the work presented here is to study a novel approach for inverting acoustic signals recorded in the marine environment for the estimation of environmental parameters of the water column and/or the seabed. The proposed approach is based on signal feature extraction using a discrete wavelet packet transform, applied to the measured signal, and hidden Markov models that exploit the sequential patterns of the signals. The signal feature is thereafter used in the framework of a mixture density network, which, after training with sets of simulated signals calculated within a predefined search space, provides conditional posterior distributions of the recoverable parameters. The technique is tested with two test cases corresponding to different types of inverse problems. The first case corresponds to a simple problem of geoacoustic inversion, while the second is referred to a, rather unusual, still interesting problem of recovering the shape of a seamount using long‐range acoustic data. Both test cases are based on simulated experiments. The inversion results obtained using the proposed scheme are compared with inversion results using statistical features of the acoustic signal, which is another inversion approach well documented in the literature and is also based on the wavelet packet transform of the measured signal.

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