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A New Open Source Implementation of Lagrangian Filtering: A Method to Identify Internal Waves in High‐Resolution Simulations

Callum J. Shakespeare, A. H. Gibson, Andrew McC. Hogg, Scott Bachman, Shane R. Keating, Nick Velzeboer

2021Journal of Advances in Modeling Earth Systems29 citationsDOIOpen Access PDF

Abstract

Abstract Identifying internal waves in complex flow fields is a long‐standing problem in fluid dynamics, oceanography and atmospheric science, owing to the overlap of internal waves temporal and spatial scales with other flow regimes. Lagrangian filtering—that is, temporal filtering in a frame of reference moving with the flow—is one proposed methodology for performing this separation. Here we (a) describe an improved implementation of the Lagrangian filtering methodology and (b) introduce a new freely available, parallelized Python package that applies the method. We show that the package can be used to directly filter output from a variety of common ocean models including MITgcm, Regional Ocean Modeling System and MOM5 for both regional and global domains at high resolution. The Lagrangian filtering is shown to be a useful tool to both identify (and thereby quantify) internal waves, and to remove internal waves to isolate the non‐wave flow field.

Topics & Concepts

Internal wavePython (programming language)LagrangianComputer scienceFlow (mathematics)Filter (signal processing)High resolutionPhysical oceanographyGeologyAlgorithmRemote sensingMeteorologyPhysicsMechanicsMathematicsComputer visionApplied mathematicsOperating systemOceanographic and Atmospheric ProcessesClimate variability and modelsMeteorological Phenomena and Simulations
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