Skip to content

rhyshawkins/AkiEstimate

Repository files navigation

AkiEstimate

Estimate dispersion from Ambient Noise Cross-Correlations using Aki's spectral formulation

Introduction

This software estimates interstation dispersion for Love and Rayleigh surface waves using Aki's spectral formulation. The method is detailed in the publication:

Hawkins R. and Sambridge M., An adjoint technique for estimation of interstation phase and group dispersion from ambient noise cross-correlations, BSSA, 2019

This software is scientific software and is intended to demonstrate the functionality outlined in the manuscript reference above.

Authors

Rhys Hawkins (r.p.hawkins@uu.nl)

License

This code is released under a GPL v3 License.

A portion of the public domain LAPACK codes obtained from netlib.org are included in this repository as a convenience under the forwardmodel/dggev subdirectory as is licensed by the authors under a modified BSD license (see http://www.netlib.org/lapack/LICENSE.txt).

Prequisites

For compilation

For processing and plotting

  • Python 2.7/3
  • Matplotlib
  • Numpy

Compilation

You may need to edit the Makefiles in Reference, InitialPhase/optimizer and Phase/optimizer to adjust compiler used.

The top level Makefile compiles all the necessary components so assuming the prerequisites are available as listed above, compilation should be a matter of issuing a `make' command from the top level directory.

Individual components can be built in-order using the following commands if changes are required by your build environment

make -C forwardmodel/dggev
make -C forwardmodel/spec1d
make -C Reference
make -C InitialPhase/optimizer
make -C Phase/optimizer

Running

In the tutorial directory, there are a series of numbered bash scripts for running an example processing of an ambient noise cross-correlation, namely

  • 00_create_reference.sh
  • 01_create_initial_target_phase.sh
  • 02_fit_initial_target_phase.sh
  • 03_fit_bessel.sh

There are corresponding scripts for running using only Rayleigh wave observations.

  • 01_create_initial_target_phase_rayleigh.sh
  • 02_fit_initial_target_phase_rayleigh.sh
  • 03_fit_bessel_rayleigh.sh

Within these scripts, you may need to modify the python interpreter used in the 01_create_*.sh scripts to suit.

Additionally, there is a latex document, tutorial.tex which describes in detail the inputs and parameters that are used to control the processing of ambient noise cross correlations with this method.

About

Estimate dispersion from Ambient Noise Cross-Correlations using Aki's spectral formulation

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published