Abstract

Abstract. The development of methods for estimating the parameters of hydrologic models considering uncertainties has been of high interest in hydrologic research over the last years. In particular methods which understand the estimation of hydrologic model parameters as a geometric search of a set of robust performing parameter vectors by application of the concept of data depth found growing research interest. Bárdossy and Singh (2008) presented a first Robust Parameter Estimation Method (ROPE) and applied it for the calibration of a conceptual rainfall-runoff model with daily time step. The basic idea of this algorithm is to identify a set of model parameter vectors with high model performance called good parameters and subsequently generate a set of parameter vectors with high data depth with respect to the first set. Both steps are repeated iteratively until a stopping criterion is met. The results estimated in this case study show the high potential of the principle of data depth to be used for the estimation of hydrologic model parameters. In this paper we present some further developments that address the most important shortcomings of the original ROPE approach. We developed a stratified depth based sampling approach that improves the sampling from non-elliptic and multi-modal distributions. It provides a higher efficiency for the sampling of deep points in parameter spaces with higher dimensionality. Another modification addresses the problem of a too strong shrinking of the estimated set of robust parameter vectors that might lead to overfitting for model calibration with a small amount of calibration data. This contradicts the principle of robustness. Therefore, we suggest to split the available calibration data into two sets and use one set to control the overfitting. All modifications were implemented into a further developed ROPE approach that is called Advanced Robust Parameter Estimation (AROPE). However, in this approach the estimation of the good parameters is still based on an ineffective Monte Carlo approach. Therefore we developed another approach called ROPE with Particle Swarm Optimisation (ROPE-PSO) that substitutes the Monte Carlo approach with a more effective and efficient approach based on Particle Swarm Optimisation. Two case studies demonstrate the improvements of the developed algorithms when compared with the first ROPE approach and two other classical optimisation approaches calibrating a process oriented hydrologic model with hourly time step. The focus of both case studies is on modelling flood events in a small catchment characterised by extreme process dynamics. The calibration problem was repeated with higher dimensionality considering the uncertainty in the soil hydraulic parameters and another conceptual parameter of the soil module. We discuss the estimated results and propose further possibilities in order to apply ROPE as a well-founded parameter estimation and uncertainty analysis tool.

Highlights

  • Hydrologic models are designed to approximate the general physical mechanism which govern the rainfall-runoff process within a specific catchment

  • The results estimated in this case study show the high potential of the principle of data depth to be used for the estimation of hydrologic model parameters

  • Algorithm 1 Robust Parameter Estimation Method (ROPE) 1: Select d model parameters, to be considered for calibration and identify prior boundaries [xlb,xub] for all selected parameters 2: n random parameter vectors forming the set Xn are generated in the d-dimensional rectangle bounded by the defined boundaries. 3: repeat 4: The hydrologic model is run for each parameter vector in Xn and the corresponding model performances are calculated 5: The subset Xn∗ of the best performing parameters is identified

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Summary

Introduction

Hydrologic models are designed to approximate the general physical mechanism which govern the rainfall-runoff process within a specific catchment. ROPE is a non-Bayesian approach that addresses the parameter and uncertainty estimation problem using the concept of data depth. Recent studies of computational geometry and multivariate statistics (e.g. Liu et al, 2006; Bremner et al, 2008) showed that members that are in a geometrical central position with respect to a given point set or distribution, are more robust in order to represent the whole set These points can be estimated applying the concept of data depth, which has recently attracted a lot of research interest in multivariate statistics and robust modelling Thereafter a set of parameter vectors with high data depth with respect to the set of good parameter vectors is generated under the assumption that these parameter vectors are more likely to represent a robust solution than the complete set of good parameter vectors They called this approach robust parameter estimation method. A comprehensive study of different data depth measures in robust parameter estimation is provided in Krauße and Cullmann (2011b)

The ROPE algorithm
A-ROPE
Particle Swarm Optimisation
Robust parameter estimation applying Particle Swarm Optimisation
InterflIonwterflow
Case study I
Case study II
Findings
Discussion and conclusions
Full Text
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