Hydroeval
An evaluator for streamflow time series in Python
Install / Use
/learn @ThibHlln/HydroevalREADME
An evaluator for streamflow time series in Python
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hydroeval is an open-source evaluator of goodness of fit between
simulated and observed streamflow time series in Python. It is licensed
under GNU GPL-3.0. The package provides a bundle of the most commonly
used objective functions in hydrological science. The package is designed
to calculate all objective functions in a vectorised manner (using
numpy <https://github.com/numpy/numpy>_, and therefore C code
in the background) which makes for very efficient computation of the
objective functions.
If you are using hydroeval, please consider citing the software as
follows (click on the link to get the DOI of a specific version):
.. pull-quote::
Hallouin, T. (XXXX). HydroEval: Streamflow Simulations Evaluator (Version X.X.X). Zenodo. <https://doi.org/10.5281/zenodo.2591217>_
.. rubric:: Brief overview of the API
.. code-block:: python
import hydroeval as he
simulations = [5.3, 4.2, 5.7, 2.3] evaluations = [4.7, 4.3, 5.5, 2.7]
nse = he.evaluator(he.nse, simulations, evaluations)
kge, r, alpha, beta = he.evaluator(he.kge, simulations, evaluations)
.. rubric:: Objective functions available
The objective functions currently available in hydroeval to evaluate the fit
between observed and simulated streamflow time series are as follows:
Nash-Sutcliffe Efficiency <https://doi.org/10.1016/0022-1694(70)90255-6>_ (nse)Original Kling-Gupta Efficiency <https://doi.org/10.1016/j.jhydrol.2009.08.003>_ (kge) and its three components (r, α, β)Modified Kling-Gupta Efficiency <https://doi.org/10.1016/j.jhydrol.2012.01.011>_ (kgeprime) and its three components (r, γ, β)Non-Parametric Kling-Gupta Efficiency <https://doi.org/10.1080/02626667.2018.1552002>_ (kgenp) and its three components (r, α, β)- Root Mean Square Error (
rmse) - Mean Absolute Relative Error (
mare) - Percent Bias (
pbias)
Moreover, some objective functions can be calculated in a bounded version following
Mathevet et al. (2006) <https://iahs.info/uploads/dms/13614.21--211-219-41-MATHEVET.pdf>_:
- Bounded Nash-Sutcliffe Efficiency (
nse_c2m) - Bounded Original Kling-Gupta Efficiency (
kge_c2m) - Bounded Modified Kling-Gupta Efficiency (
kgeprime_c2m) - Bounded Non-Parametric Kling-Gupta Efficiency (
kgenp_c2m)
Finally, the evaluator can take an optional argument transform.
This argument allows to apply a transformation on both the observed and the
simulated streamflow time series prior the calculation of the objective function.
The possible transformations are as follows:
- Inverted flows (using
transform='inv') - Square Root-transformed flows (using
transform='sqrt') - Natural Logarithm-transformed flows (using
transform='log')
.. rubric:: Acknowledgement
Early versions of this tool were developed with the financial support of Ireland's Environmental Protection Agency (Grant Number 2014-W-LS-5).
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