figshare
Browse
thsj_a_1552002_sm1756.txt (1.61 kB)

Evaluating model performance: towards a non-parametric variant of the Kling-Gupta efficiency

Download (1.61 kB)
dataset
posted on 2018-11-23, 11:55 authored by Sandra Pool, Marc Vis, Jan Seibert

Goodness-of-fit measures are important for an objective evaluation of runoff model performance. The Kling-Gupta efficiency (RKG), which has been introduced as an improvement of the widely used Nash-Sutcliffe efficiency, considers different types of model errors, namely the error in the mean, the variability, and the dynamics. The calculation of RKG is implicitly based on the assumptions of data linearity, data normality, and the absence of outliers. In this study, we propose a modification of RKG as an efficiency measure comprising non-parametric components, i.e. the Spearman rank correlation and the normalized flow–duration curve. The performances of model simulations for 100 catchments using the new measure were compared to those obtained using RKG based on a number of statistical metrics and hydrological signatures. The new measure resulted overall in better or comparable model performances, and thus it was concluded that efficiency measures with non-parametric components provide a suitable alternative to commonly used measures.

Funding

This work was supported by the University of Zurich. Hydro-meteorological data and catchment shapefiles were made available by Newman et al. (2015). SRTM elevation data were provided by Jarvis et al. (2008).

History