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首页> 外文期刊>Oceanic Engineering, IEEE Journal of >Bayesian Inversion of Multimode Interface-Wave Dispersion From Ambient Noise
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Bayesian Inversion of Multimode Interface-Wave Dispersion From Ambient Noise

机译:环境噪声对多模界面波色散的贝叶斯反演

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This paper applies nonlinear Bayesian inversion to estimate seabed shear-wave speed profiles and their uncertainties using interface-wave dispersion curves extracted from ocean ambient noise, and compares the resolution of seabed structure for fundamental mode and multimode data. Ambient noise recordings were collected for 2.15 h at hydrophones of an entrenched ocean bottom cable in the North Sea. Scholte-wave dispersion curves for the fundamental mode and several higher order modes within the frequency range 0.25–3.9 Hz are extracted from cross correlations of noise recordings at sensor pairs via the slowness-frequency transform. The Bayesian information criterion is used to determine the preferred model parameterizations in terms of the number of sediment layers supported by the data for inversions based on the fundamental mode alone and on the first three modes. Adaptive hybrid optimization and Metropolis–Hastings sampling are applied to estimate the optimum a posteriori shear-wave speed models and to compute marginal posterior probability distributions and profiles. The results show quantitatively that multimode inversion provides higher resolution of shallow shear-wave speed structure with smaller uncertainties at all depths than inversion of the fundamental mode alone.
机译:本文采用非线性贝叶斯反演方法,利用海洋环境噪声提取的界面波频散曲线,估算海床横波速度分布及其不确定性,并比较了海底结构对基本模态和多模态数据的分辨率。在北海根深蒂固的海底电缆的水听器处收集了2.15小时的环境噪声记录。通过慢速-频率变换,从传感器对处的噪声记录的互相关关系中,提取出在0.25-3.9 Hz频率范围内基本模式和几种高阶模式的舒波散射曲线。贝叶斯信息准则用于确定反演数据支持的沉积物层数的优选模型参数化,该反演数据仅基于基本模式和基于前三个模式。自适应混合优化和Metropolis-Hastings采样可用于估计最佳后验剪切波速度模型,并计算边际后验概率分布和轮廓。结果定量地表明,与仅对基本模式的反演相比,多模式反演在所有深度都提供了更高的分辨率,在较小的不确定性范围内具有更高的分辨率。

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