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Python toolkit for standard magnetotelluric data processing.

Project description

MTpy-v2: A Python Toolbox for working with Magnetotelluric (MT) Data

PyPi version Latest conda|conda-forge version codecov License: MIT Documentation Status Binder

Version 2.0.7

Description

mtpy provides tools for working with magnetotelluric (MT) data. MTpy-v2 is an updated version of mtpy. Many things have changed under the hood and usage is different from mtpy v1. The main difference is that there is a central data type that can hold transfer functions and then read/write to your modeling program, plot, and analyze your data. No longer will you need a directory of EDI files and then read them in everytime you want to do something. You only need to build a project once and save it to an MTH5 file and you are ready to go. All metadata uses mt-metadata.

Installation

Using Pip

> pip install mtpy-v2

Using conda

> conda install -c conda-forge mtpy-v2

Functionality

  • Read/write transfer function files (EDI, EMTFXML, J-file, Z-file, AVG-file) using mt-metadata
  • Read/write MTH5 files for full surveys/project in a single file
  • Utility functions for GIS

Plotting

  • Single transfer function
    • apparent resistivity and phase
    • induction vectors
    • phase tensors
    • strike
    • depth of investigation
  • Survey of transfer functions
    • station map
    • phase tensor and induction vector map and pseudosection
    • apparent resistivity and phase maps and pseudosections
    • depth of investigation map

Processing

  • Read/write files for time series processing

Modeling

  • Read/Write files for modeling programs
    • ModEM
    • Occam 1D and 2D
    • Mare2DEM (?)
    • Pek 1D and 2D

What's been Updated in version 2

The main updates in mtpy-v2 are:

  • Remove dependence on EDI files, can be any type of transfer function file
    • Supports (or will support) to/from:
      • EDI (most common format)
      • ZMM (Egberts EMTF output)
      • JFILE (BIRRP output)
      • EMTFXML (Kelbert's format)
      • AVG (Zonge output)
  • Uses mt-metadata to read and write transfer function files where the transfer function data are stored in an xarray
  • The workflow is more centralized by introducing MTCollection and MTData objects which are the databases to hold a collection of transfer functions and manipulate them
    • Includes plotting methods, to/from data file types for modeling, rotations, interpolations, static shifts, etc.
    • Can store a collection as an MTH5 using mth5

Quick Example

Typically MT data are collected as surveys and each station produces a single transfer function. These are provided in various formats like EDI, EMTF XML, etc.

One benefit of mtpy-v2 is reading all these in only needs to be done once and places them in a single MTH5 file.

from pathlib import Path
from mtpy import MTCollection

transfer_function_path = Path("/home/survey_00/transfer_functions")

# write directly to an MTH5 file and close when finished loading TFs
with MTCollection() as mc:
    mc.open_collection(transfer_function_path.joinpath("tf_collection.h5"))
    mc.add_tf(
        mc.make_file_list(
            transfer_function_path,
            file_types=["edi", "xml", "j", "zmm", "zss", "avg"],
        )
    )
 

Now when you want to access your data again, you just need to open a single file.

mc = MTCollection()
mc.open_collection(r"/home/survey_00/transfer_functions/tf_collection.h5")

# plot station locations
station_locations = mc.plot_stations()

How to Cite

If you use this software in a scientific publication, we'd very much appreciate if you could cite the following papers:

  • Kirkby, A.L., Zhang, F., Peacock, J., Hassan, R., Duan, J., 2019. The MTPy software package for magnetotelluric data analysis and visualisation. Journal of Open Source Software, 4(37), 1358. https://doi.org/10.21105/joss.01358

  • Krieger, L., and Peacock, J., 2014. MTpy: A Python toolbox for magnetotellurics. Computers and Geosciences, 72, p167-175. https://doi.org/10.1016/j.cageo.2014.07.013

Contacts

| Jared Peacock | peacock.jared@gmail.com

| Alison Kirkby | alkirkby@gmail.com

System Requirements

  • Python 3.8+

License

MTpy is licensed under the MIT license

The license agreement is contained in the repository and should be kept together with the code.

History

2.0.0 (2022-10-20)

  • major changes under the hood.
    • Now using mt_metadata to read/write transfer function files
    • Now using mth5 to store the transfer functions
    • Introduced MT, MTCollection, and MTData such that operations are more centralized. Now most methods can be called from MT and MTData
    • Removing older modules and group specific modules
    • Added GitActions for testing
    • Updating tests (still lots of work to do)
    • Updated documentation to upload to ReadTheDocs

2.0.5 (2023-11-09)

  • bug fixes
  • now install simpeg for inversions, 1D implemented so far

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