A data-driven approach for modelling Karst spring discharge using transfer function noise models

被引:0
作者
Max Gustav Rudolph
Raoul Alexander Collenteur
Alireza Kavousi
Markus Giese
Thomas Wöhling
Steffen Birk
Andreas Hartmann
Thomas Reimann
机构
[1] Technische Universität Dresden,Institute of Groundwater Management
[2] Eawag,Department Water Resources and Drinking Water
[3] University of Gothenburg,Department of Earth Sciences
[4] Technische Universität Dresden,Chair of Hydrology, Institute of Hydrology and Meteorology
[5] University of Graz,Institute of Earth Sciences, NAWI Graz Geocenter
来源
Environmental Earth Sciences | 2023年 / 82卷
关键词
Modelling; Karst; Uncertainty quantification; Transfer functions; Spring discharge;
D O I
暂无
中图分类号
学科分类号
摘要
Karst aquifers are important sources of fresh water on a global scale. The hydrological modelling of karst spring discharge, however, still poses a challenge. In this study we apply a transfer function noise (TFN) model in combination with a bucket-type recharge model to simulate karst spring discharge. The application of the noise model for the residual series has the advantage that it is more consistent with assumptions for optimization such as homoscedasticity and independence. In an earlier hydrological modeling study, named Karst Modeling Challenge (KMC; Jeannin et al., J Hydrol 600:126–508, 2021), several modelling approaches were compared for the Milandre Karst System in Switzerland. This serves as a benchmark and we apply the TFN model to KMC data, subsequently comparing the results to other models. Using different data-model-combinations, the most promising data-model-combination is identified in a three-step least-squares calibration. To quantify uncertainty, the Bayesian approach of Markov-chain Monte Carlo (MCMC) sampling is subsequently used with uniform priors for the previously identified best data-model combination. The MCMC maximum likelihood solution is used to simulate spring discharge for a previously unseen testing period, indicating a superior performance compared to all other models in the KMC. It is found that the model gives a physically feasible representation of the system, which is supported by field measurements. While the TFN model simulated rising limbs and flood recession especially well, medium and baseflow conditions were not represented as accurately. The TFN approach poses a well-performing data-driven alternative to other approaches that should be considered in future studies.
引用
收藏
相关论文
共 87 条
  • [1] Bakalowicz M(2005)Karst groundwater: a challenge for new resources Hydrogeol J 13 148-160
  • [2] Birk S(2010)Early recession behaviour of spring hydrographs J Hydrol 387 24-32
  • [3] Hergarten S(2019)Pastas: open source software for the analysis of groundwater time series Groundwater 57 877-885
  • [4] Collenteur R(2020)Pastas: open-source software for the analysis of hydrogeological time series (v0.16.0) Zenodo 25 2931-2949
  • [5] Bakker M(2021)Estimation of groundwater recharge from groundwater levels using nonlinear transfer function noise models and comparison to lysimeter data Hydrol Earth Syst Sci 71 1049-1060
  • [6] Caljé R(2014)Linear system techniques applied to the Fuenmayor karst spring, Huesca (Spain) Environ Earth Sci 274 80-94
  • [7] Collenteur R(2003)Composite transfer functions for karst aquifers J Hydrol 25 126-134
  • [8] Bakker M(1989)Regional scale transport in a karst aquifer: 2. linear systems and time moment analysis Water Resour Res 125 306-312
  • [9] Caljé R(2013)emcee: The MCMC hammer Publ Astron Soc Pac 5 65-80
  • [10] Collenteur R(2010)Ensemble samplers with affine invariance Commun Appl Math Comput Sci 13 87-113