Potsdam Institute for Climate Impact Research (PIK)
Interdisciplinary Center for Dynamics of Complex Systems (University of Potsdam)
Cardiovascular Physics Group (Humboldt-Universität zu Berlin)
PIK Logo
TOCSY - Toolboxes for Complex Systems
PIK/ Antique/ Blue
Home Home
 ACE
 Adaptive Filtering
 Approx. RQA
 CoinCalc
 Commandline RPs
 COPRA
 Coupling Analysis
 CRP Toolbox
 DSProlog
 Coupling Direction
 IOTA
 K2
 Makeinstall
 NEST
 PECUZAL
 PETROPY
 pyUnicorn
 RECFLOW
 RECGRAM
 RECLAC
 RP
 rqaci
 RSA
 System Identification
 TIGRAMITE
 SOWAS

PECUZAL

(for MATLAB® | Julia | Python)

PECUZAL Python

We introduce the PECUZAL automatic embedding of time series method for Python. It is solely based on the paper [kraemer2021]_ (Open Source), where the functionality is explained in detail. Here we give an introduction to its easy usage in three examples. Enjoy Embedding!

Getting started

Install from PyPI by simply typing

pip install pecuzal-embedding

in your console.

NOTE

This implementation is not profiled well. We recommend to use the implementation in the Julia language or in Matlab, in order to get fast results, especially in the multivariate case. Moreover, it is well documented and embedded in the DynamicalSystems.jl ecosystem. For instance, the compuations made in the Univariate example and the Multivariate example in this documentation took approximately `800s` (approx. 13 mins) and `4700s` (approx. 1 hour and 10 mins!), respectively, even when using the `econ` option in the function call, for an accelerated computation. In the Julia implementation the exact same computation took `4s` and `25s`, respectively! (running on a 2.8GHz Quad-Core i7, 16GB 1600 MHz DDR3)

Documentation

There is a documentation available including some basic usage examples.

Citing and reference

If you enjoy this tool and find it valuable for your research please cite

or as BiBTeX-entry:

@article{Kraemer2021,
    doi = {10.1088/1367-2630/abe336},
    url = {https://doi.org/10.1088/1367-2630/abe336},
    year = 2021,
    month = {mar},
    publisher = {{IOP} Publishing},
    volume = {23},
    number = {3},
    pages = {033017},
    author = {K H Kraemer and G Datseris and J Kurths and I Z Kiss and J L Ocampo-Espindola and N Marwan},
    title = {A unified and automated approach to attractor reconstruction},
    journal = {New Journal of Physics},
    abstract = {We present a fully automated method for the optimal state space reconstruction from univariate and multivariate time series. The proposed methodology generalizes the time delay embedding procedure by unifying two promising ideas in a symbiotic fashion. Using non-uniform delays allows the successful reconstruction of systems inheriting different time scales. In contrast to the established methods, the minimization of an appropriate cost function determines the embedding dimension without using a threshold parameter. Moreover, the method is capable of detecting stochastic time series and, thus, can handle noise contaminated input without adjusting parameters. The superiority of the proposed method is shown on some paradigmatic models and experimental data from chaotic chemical oscillators.}
}

Licence

This is program is free software and runs under MIT Licence.

Download

github.com/hkraemer/PECUZAL_python

Authors

  • Hauke Kraemer


© 2004-2026 SOME RIGHTS RESERVED
University of Potsdam, Interdisciplinary Center for Dynamics of Complex Systems, Germany
Potsdam Institute for Climate Impact Research, Complexity Science, Germany

This work is licensed under a Creative Commons Attribution-NonCommercial-NoDerivs 2.0 Germany License.
Imprint, Data policy, Disclaimer, Accessibility statement

Please respect the copyrights! The content is protected by the Creative Commons License. If you use the provided programmes, text or figures, you have to refer to the given publications and this web site (tocsy.pik-potsdam.de) as well.

@MEMBER OF PROJECT HONEY POT
Spam Harvester Protection Network
provided by Unspam