A Physics-Informed Neural Network for Sound Propagation in the Atmospheric Boundary Layer

Abstract

We describe what we believe is the first effort to develop a physics-informed neural network (PINN) to predict sound propagation through the atmospheric boundary layer. PINN is a recent innovation in the application of deep learning to simulate physics. The motivation is to combine the strengths of data-driven models and physics models, thereby producing a regularized surrogate model using less data than a purely data-driven model. In a PINN, the data-driven loss function is augmented with penalty terms for deviations from the underlying physics, e.g., a governing equation or a boundary condition. Training data are obtained from Crank-Nicholson solutions of the parabolic equation with homogeneous ground impedance and Monin-Obukhov similarity theory for the effective sound speed in the moving atmosphere. Training data are random samples from an ensemble of solutions for combinations of parameters governing the impedance and the effective sound speed. PINN output is processed to produce realizations of transmission loss that look much like the Crank-Nicholson solutions. We describe the framework for implementing PINN for outdoor sound, and we outline practical matters related to network architecture, the size of the training set, the physics-informed loss function, and challenge of managing the spatial complexity of the complex pressure.

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Document Details

Document Type
Technical Report
Publication Date
Jun 01, 2021
Accession Number
AD1137725

Entities

People

  • Chris L. Pettit
  • D. Keith Wilson

Organizations

  • Engineer Research and Development Center
  • United States Naval Academy

Tags

Communities of Interest

  • Advanced Electronics
  • Energy and Power Technologies

DTIC Thesaurus Topics

  • Acoustic Propagation
  • Acoustics
  • Algorithms
  • Army Corps Of Engineers
  • Atmospheric Motion
  • Boundary Layer
  • Computational Science
  • Deep Learning
  • Differential Equations
  • Dimensionality Reduction
  • Engineering
  • Engineers
  • Helmholtz Equations
  • Machine Learning
  • Multiobjective Optimization
  • Neural Networks
  • Two Dimensional

Fields of Study

  • Physics

Readers

  • Aerospace Engineering
  • Finite Element Method (FEM) for solving Partial Differential Equations (PDEs)
  • Neural Network Machine Learning.

Technology Areas

  • AI & ML
  • AI & ML - Bayesian Inference
  • AI & ML - Neural Networks