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Modular Python tool for parsing, analyzing, and visualizing Global Navigation Satellite Systems (GNSS) data and state estimates

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gnss_lib_py

gnss_lib_py is a modular Python tool for parsing, analyzing, and visualizing Global Navigation Satellite Systems (GNSS) data and state estimates. It also provides an intuitive and modular framework allowing users to quickly prototype, implement, and visualize GNSS algorithms. gnss_lib_py is modular in the sense that multiple types of algorithms can be easily exchanged for each other and extendable in facilitating user-specific extensions of existing implementations.

satellite skyplot

gnss_lib_py contains parsers for common file types used for storing GNSS measurements, benchmark algorithms for processing measurements into state estimates and visualization tools for measurements and state estimates. The modularity of gnss_lib_py is made possibly by the unifying NavData class, which contains methods to add, remove and modify numeric and string data consistently. We provide standard row names for NavData elements on the reference page. These names ensure cross compatability between different datasets and algorithms.

Documentation

Full documentation is available on our readthedocs website.

Code Organization

gnss_lib_py is organized as:

   ├── data/                          # Location for data files
      └── unit_test/                  # Data files for unit testing
   ├── dev/                           # Code users do not wish to commit
   ├── docs/                          # Documentation files
   ├── gnss_lib_py/                   # gnss_lib_py source files
        ├── algorithms/               # Navigation algorithms
        ├── parsers/                  # Data parsers
        ├── utils/                    # GNSS and common utilities
        └── __init__.py
   ├── notebooks/                     # Interactive Jupyter notebooks
        ├── tutorials/                # Notebooks with tutorial code
   ├── results/                       # Location for result images/files
   ├── tests/                         # Tests for source files
      ├── algorithms/                 # Tests for files in algorithms
      ├── parsers/                    # Tests for files in parsers
      ├── utils/                      # Tests for files in utils
      └── test_gnss_lib_py.py         # High level checks for repository
   ├── CONTRIBUTORS.md                # List of contributors
   ├── build_docs.sh                  # Bash script to build docs
   ├── poetry.lock                    # Poetry specific Lock file
   ├── pyproject.toml                 # List of package dependencies
   └── requirements.txt               # List of packages for pip install

In the directory organization above:

  • The algorithms directory contains localization algorithms that work by passing in a NavData class. Currently, the following algorithms are implemented in the algorithms:

    • Weighted Least Squares
    • Calculating pseudorange residuals
  • The data parsers in the parsers directory allow for loading GNSS data into gnss_lib_py's unifying NavData class. Currently, the following datasets and types are supported:

  • The utils directory contains utilities used to handle GNSS measurements, time conversions, visualizations, satellite simulation, file operations, etc.

Installation

gnss_lib_py is available through pip installation with:

pip install gnss-lib-py

For directions on how to install an editable or developer installation of gnss_lib_py on Linux, MacOS, and Windows, please see the install instructions.

Tutorials

We have a range of tutorials on how to easily use this project. They can all be found in the tutorials section.

Reference

References on the package contents, explanation of the benefits of our custom NavData class, and function-level documentation can all be found in the reference section.

Contributing

If you have a bug report or would like to contribute to our repository, please follow the guide on the contributing page.

Troubleshooting

Answers to common questions can be found in the troubleshooting section.

Attribution

This project is a product of the Stanford NAV Lab and currently maintained by Ashwin Kanhere and Derek Knowles. If using this project in your own work please cite the following:


   @inproceedings{knowlesmodular2022,
      title = {A Modular and Extendable GNSS Python Library},
      author={Knowles, Derek and Kanhere, Ashwin V and Bhamidipati, Sriramya and Gao, Grace},
      booktitle={Proceedings of the 35th International Technical Meeting of the Satellite Division of The Institute of Navigation (ION GNSS+ 2022)},
      institution = {Stanford University},
      year = {2022 [Online]},
      url = {https://github.com/Stanford-NavLab/gnss_lib_py},
   }

Additionally, we would like to thank all contributors to this project.

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