Filling Time series: Package to fill missing values in geophysical time series in Python
Project description
Filling Time Series (v.1.0.0)
Filling missing values in geophysical time series
Contact
- Rolando Jesus Duarte Mejias (rolando.duartemejias@ucr.ac.cr)
- Erick Rivera Fernandez (erick.rivera@ucr.ac.cr)
About Filling Time Series
Filling Time Series is a Python package to help the users to work with geophysical time series by filling missing values in their data. Filling Time Series was developed at the Centro de Investigaciones GeofÃsicas (CIGEFI), Universidad de Costa Rica (UCR).
Last updates
- Stable version.
Documentation
The documentation is available on https://github.com/cigefi-ucr/FillingTimeSeriesGUI
Features
- Autoregression-based method
- Principal-components-based method
- Full method (Autoregression - Principal components)
Dependencies
- Scikit-learn For principal-components-based method
- Statsmodels For autoregression-based method
- Matplotlib Plotting data
- Pandas Data handler
- Numpy Mathematical operations in arrays
Installation
- Using pip:
pip install FillingTimeSeries
- Graphical interface: Visit https://github.com/cigefi-ucr/FillingTimeSeriesGUI
Bug report
Bug reports can be submitted to the issue tracker at:
https://github.com/cigefi-ucr/FillingTimeSeries/issues
References
- Alfaro, E., & Soley, J. (2009). Descripcion de dos metodos de rellenado de datos ausentes en series de tiempo metereologicos. Revista de matematica: Teoria y Aplicaciones, 16, 60 - 75.
- Urena, P., Alfaro, E., & Soley, J. (2016). Propuestas metodologicas para el rellenado de datos ausentes en series de tiempo geofisicas. Guia Practica de uso. Universidad de Costa Rica.
License
MIT License
Free Software
Project details
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
Built Distribution
Close
Hashes for FillingTimeSeries-1.0.0-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 1f270087b30fd02b6db799207a2de182adcd49a4a10c21402a021427fe909023 |
|
MD5 | b3b3ac4a3cfec5180d6f4bb41eaf9d34 |
|
BLAKE2b-256 | 52af1330f3d7ef50482d519f1d8bcd7be74414597e680fb59a8d8f21dbb0595e |