Javascript must be enabled to continue!
Can we identify dominant hydrological mechanisms in ungauged catchments?
View through CrossRef
Hydrological modelling of ungauged catchments, which lack observed streamflow data, is an important practical goal in hydrology. A major challenge is to identify a model structure that reflects the hydrological processes relevant to the catchment of interest. Paraphrasing a well-known adage, “all models are wrong, but some model-mechanisms (process representations) might be useful.”We extend a method previously introduced for mechanism identification in gauged basins, by formulating the Bayesian inference equations in the space of (regionalized) flow indices principal components and by accounting for posterior parameter uncertainty. We use a flexible hydrological model to generate candidate mechanisms and model structures. Then, we use statistical hypothesis testing to identify the "dominant" (more a posteriori probable) hydrological mechanism. We assume that the error in the regionalization of flow indices principal components dominates the error of the hydrological model structure.The method is illustrated in 92 catchments from northern Spain. We treat 16 out of the 92 catchments as ungauged. We use 624 model-structures from FUSE (flexible hydrological model framework). The case study includes real data and synthetic experiments.The findings show that routing is among the most identifiable processes, whereas percolation and unsaturated zone processes are the least identifiable. The probability of making an identification (correct or wrong), remains stable at ~25%, both in the real and in the synthetic experiments. In the synthetic experiments, where the “true” mechanism is known, we can evaluate the reliability, i.e., the probability of identifying the true mechanism when the method makes an identification. Reliability varies between 60%-95% depending on the magnitude of the combined regionalization and hydrological error. The study contributes perspectives on hydrological mechanism identification under data-scarce conditions.Prieto et al. (2022) An Exploration of Bayesian Identification of Dominant Hydrological Mechanisms in Ungauged Catchments, WRR, 58(3), doi:10.1029/2021WR030705.
Title: Can we identify dominant hydrological mechanisms in ungauged catchments?
Description:
Hydrological modelling of ungauged catchments, which lack observed streamflow data, is an important practical goal in hydrology.
A major challenge is to identify a model structure that reflects the hydrological processes relevant to the catchment of interest.
Paraphrasing a well-known adage, “all models are wrong, but some model-mechanisms (process representations) might be useful.
”We extend a method previously introduced for mechanism identification in gauged basins, by formulating the Bayesian inference equations in the space of (regionalized) flow indices principal components and by accounting for posterior parameter uncertainty.
We use a flexible hydrological model to generate candidate mechanisms and model structures.
Then, we use statistical hypothesis testing to identify the "dominant" (more a posteriori probable) hydrological mechanism.
We assume that the error in the regionalization of flow indices principal components dominates the error of the hydrological model structure.
The method is illustrated in 92 catchments from northern Spain.
We treat 16 out of the 92 catchments as ungauged.
We use 624 model-structures from FUSE (flexible hydrological model framework).
The case study includes real data and synthetic experiments.
The findings show that routing is among the most identifiable processes, whereas percolation and unsaturated zone processes are the least identifiable.
The probability of making an identification (correct or wrong), remains stable at ~25%, both in the real and in the synthetic experiments.
In the synthetic experiments, where the “true” mechanism is known, we can evaluate the reliability, i.
e.
, the probability of identifying the true mechanism when the method makes an identification.
Reliability varies between 60%-95% depending on the magnitude of the combined regionalization and hydrological error.
The study contributes perspectives on hydrological mechanism identification under data-scarce conditions.
Prieto et al.
(2022) An Exploration of Bayesian Identification of Dominant Hydrological Mechanisms in Ungauged Catchments, WRR, 58(3), doi:10.
1029/2021WR030705.
Related Results
Towards identification of dominant hydrological mechanisms in ungauged catchments
Towards identification of dominant hydrological mechanisms in ungauged catchments
Modelling hydrological processes in ungauged catchments is a major challenge in environmental sciences and engineering. An ungauged catchment is a catchment that lacks streamflow d...
Model adequacy tests for improving predictions in ungauged basins
Model adequacy tests for improving predictions in ungauged basins
<p>Flow prediction in ungauged catchments is a major unresolved challenge in scientific and engineering hydrology. Meeting this challenge is made difficult by the unc...
Catchment classification by runoff behaviour with self-organizing maps (SOM)
Catchment classification by runoff behaviour with self-organizing maps (SOM)
Abstract. Catchments show a wide range of response behaviour, even if they are adjacent. For many purposes it is necessary to characterise and classify them, e.g. for regionalisati...
Impact of the number of donor catchments and the efficiency threshold on regionalization performance of hydrological models
Impact of the number of donor catchments and the efficiency threshold on regionalization performance of hydrological models
<p>Over recent decades, hydrologists have proposed a variety of methods to predict discharge in ungauged catchments, and significant progress has been made in the fie...
Physiographic controls on fractions of new water in 12 nested catchments
Physiographic controls on fractions of new water in 12 nested catchments
In the context of global change, the characterization and quantification of the “changing pulse of rivers” is a pressing challenge. Over the past decades, rapid...
A non-stationary model for reconstruction of historical annual runoff on tropical catchments under increasing urbanization (Yaoundé, Cameroon)
A non-stationary model for reconstruction of historical annual runoff on tropical catchments under increasing urbanization (Yaoundé, Cameroon)
Abstract. Inter-tropical regions are nowadays faced to major land-use changes in data-sparse context leading to difficulties to assess hydrological signatures and their evolution. ...
Bridging Physics and Machine Learning: A Signature-enhanced Hybrid Framework for Streamflow Prediction in Complex Catchments
Bridging Physics and Machine Learning: A Signature-enhanced Hybrid Framework for Streamflow Prediction in Complex Catchments
Accurate streamflow forecasting in both managed and natural catchments is critical for sustainable water resource management in the UK. Simulating hydrological processes such as fl...
Is Artificial Intelligence the Ultimate Solution for Hydrological Modelling?
Is Artificial Intelligence the Ultimate Solution for Hydrological Modelling?
Artificial intelligence plays an increasingly significant in many areas of our lives. Its applications in hydrology are becoming more common, and many authors have reported excelle...

