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Towards a data-effective calibration of a fully distributed catchment water quality model
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  • Salman Ghaffar,
  • Xiangqian Zhou,
  • Seifeddine Jomaa,
  • Xiaoqiang Yang,
  • Günter Meon,
  • Michael Rode
Salman Ghaffar
Helmholtz Centre for Environmental Research

Corresponding Author:[email protected]

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Xiangqian Zhou
Helmholtz Center for Environmental Research
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Seifeddine Jomaa
Helmholtz Centre for Environmental Research - UFZ
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Xiaoqiang Yang
Hohai University
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Günter Meon
Technische Universität Braunschweig
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Michael Rode
Helmholtz Centre for Environmental Research-UFZ
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Abstract

Distributed hydrological water quality models are increasingly being used to manage natural resources at the catchment scale but there are no calibration guidelines for selecting the most useful gauging stations. In this study, we investigated the influence of calibration schemes on the spatiotemporal performance of a fully distributed process-based hydrological water quality model (mHM-Nitrate) for discharge and nitrate simulations at Bode catchment in central Germany. We used a single- and two multi-site calibration schemes where the two multi-site schemes varied in number of gauging stations but each subcatchment represented different dominant land uses of the catchment. To extract a set of behavioral parameters for each calibration scheme, we chose a sequential multi-criteria method with 300.000 iterations.
For discharge (Q), model performance was similar among the three schemes (NSE varied from 0.88 to 0.92). However, for nitrate concentration, the multi-site schemes performed better than the single site scheme. This improvement may be attributed to that multi-site schemes incorporated a broader range of data, including low Q and NO3- values, thus provided a better representation of within-catchment diversity. Conversely, adding more gauging stations in the multi-site approaches did not lead to further improvements in catchment representation but showed wider 95% uncertainty boundaries. Thus, adding observations that contained similar information on catchment characteristics did not seem to improve model performance and increased uncertainty. These results highlight the importance of strategically selecting gauging stations that reflect the full range of catchment heterogeneity rather than seeking to maximize station number, to optimize parameter calibration.
15 Nov 2023Submitted to ESS Open Archive
22 Nov 2023Published in ESS Open Archive