Abstract

Abstract. Process-oriented rainfall-runoff models are designed to approximate the complex hydrologic processes within a specific catchment and in particular to simulate the discharge at the catchment outlet. Most of these models exhibit a high degree of complexity and require the determination of various parameters by calibration. Recently, automatic calibration methods became popular in order to identify parameter vectors with high corresponding model performance. The model performance is often assessed by a purpose-oriented objective function. Practical experience suggests that in many situations one single objective function cannot adequately describe the model's ability to represent any aspect of the catchment's behaviour. This is regardless of whether the objective is aggregated of several criteria that measure different (possibly opposite) aspects of the system behaviour. One strategy to circumvent this problem is to define multiple objective functions and to apply a multi-objective optimisation algorithm to identify the set of Pareto optimal or non-dominated solutions. Nonetheless, there is a major disadvantage of automatic calibration procedures that understand the problem of model calibration just as the solution of an optimisation problem: due to the complex-shaped response surface, the estimated solution of the optimisation problem can result in different near-optimum parameter vectors that can lead to a very different performance on the validation data. Bárdossy and Singh (2008) studied this problem for single-objective calibration problems using the example of hydrological models and proposed a geometrical sampling approach called Robust Parameter Estimation (ROPE). This approach applies the concept of data depth in order to overcome the shortcomings of automatic calibration procedures and find a set of robust parameter vectors. Recent studies confirmed the effectivity of this method. However, all ROPE approaches published so far just identify robust model parameter vectors with respect to one single objective. The consideration of multiple objectives is just possible by aggregation. In this paper, we present an approach that combines the principles of multi-objective optimisation and depth-based sampling, entitled Multi-Objective Robust Parameter Estimation (MOROPE). It applies a multi-objective optimisation algorithm in order to identify non-dominated robust model parameter vectors. Subsequently, it samples parameter vectors with high data depth using a further developed sampling algorithm presented in Krauße and Cullmann (2012a). We study the effectivity of the proposed method using synthetical test functions and for the calibration of a distributed hydrologic model with focus on flood events in a small, pre-alpine, and fast responding catchment in Switzerland.

Highlights

  • Hydrologic models are simplified, conceptual representations of a part of the hydrologic cycle

  • We present an approach that combines the principles of multi-objective optimisation and depth-based sampling, entitled Multi-Objective Robust Parameter Estimation (MOROPE)

  • We propose to synthesize the strengths of multi-objective optimisation and robust parameter estimation with data depth functions in a new algorithm, entitled multi-objective robust parameter estimation (MO-ROPE)

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Summary

Introduction

Hydrologic models are simplified, conceptual representations of a part of the hydrologic cycle. Beven, 1989; van der Linden and Woo, 2003; Boyle et al, 2006; Wagener and Wheater, 2006) Another essential prerequisite for the estimation of robust model parameters is the selection of appropriate calibration data. The underlying principle to achieve this goal is the application of data depth metrics in order to sample robust parameter vectors with respect to a set of identified parameter vectors with good model performance. In order to quantify the uncertainty of the parameterisation with respect to the given objectives, the method estimates a set of robust model parameter vectors applying a two-step approach. We introduce a multi-objective parameter estimation technique that applies evolutionary multi-objective optimisation algorithms and the concept of data depth in order to estimate a robust set of parameter vectors for a given multi-objective calibration problem. A real world case study shows the success of the developed methodology calibrating a distributed hydrologic model in a small catchment with high process dynamics focussing on flood events

Effective and efficient approximation of the Pareto set
Robust parameter estimation
Synthesizing multi-objective optimisation and robust parameter estimation
Case studies
Uncertainty in synthetic test cases
30 A DA HA
Uncertainty in the synthetic application of a hydrologic model
Case study area and the hydrologic model
Calibrating WaSiM for flood events using two objectives
Discussion and conclusions
Full Text
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