Dynamically orthogonal narrow-angle parabolic equations for stochastic underwater sound propagation. Part I: Theory and schemes

Author:

Ali Wael H.12ORCID,Lermusiaux Pierre F. J.12ORCID

Affiliation:

1. Department of Mechanical Engineering, Massachusetts Institute of Technology 1 , Cambridge, Massachusetts 02139, USA

2. Center for Computational Science and Engineering, Massachusetts Institute of Technology 2 , Cambridge, Massachusetts 02139, USA

Abstract

Robust informative acoustic predictions require precise knowledge of ocean physics, bathymetry, seabed, and acoustic parameters. However, in realistic applications, this information is uncertain due to sparse and heterogeneous measurements and complex ocean physics. Efficient techniques are thus needed to quantify these uncertainties and predict the stochastic acoustic wave fields. In this work, we derive and implement new stochastic differential equations that predict the acoustic pressure fields and their probability distributions. We start from the stochastic acoustic parabolic equation (PE) and employ the instantaneously-optimal Dynamically Orthogonal (DO) equations theory. We derive stochastic DO-PEs that dynamically reduce and march the dominant multi-dimensional uncertainties respecting the nonlinear governing equations and non-Gaussian statistics. We develop the dynamical reduced-order DO-PEs theory for the Narrow-Angle parabolic equation and implement numerical schemes for discretizing and integrating the stochastic acoustic fields.

Funder

Office of Naval Research

Publisher

Acoustical Society of America (ASA)

Subject

Acoustics and Ultrasonics,Arts and Humanities (miscellaneous)

Reference149 articles.

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2. Alexanderian, A. (2015). “ A brief note on the Karhunen-Loève expansion,” arXiv:1509.07526.

3. Ali, W. H. (2019). “ Dynamically orthogonal equations for stochastic underwater sound propagation,” Master's thesis, Massachusetts Institute of Technology, Cambridge, MA.

4. Ali, W. H. (2023). “ Stochastic dynamically orthogonal modeling and Bayesian learning for underwater acoustic propagation,” Ph.D. thesis, Massachusetts Institute of Technology, Cambridge, MA.

5. Stochastic oceanographic-acoustic prediction and Bayesian inversion for wide area ocean floor mapping,2019

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