Sensitivity analysis for comparison, validation and physical legitimacy of neural network-based hydrological models

Author:

Dawson C. W.1,Mount N. J.2,Abrahart R. J.2,Louis J.3

Affiliation:

1. Department of Computer Science, Loughborough University, Loughborough, LE11 3TU, UK

2. School of Geography, University of Nottingham, Nottingham, NG7 2RD, UK

3. School of Computing and Mathematics, Charles Stuart University, Locked Bag 588, Wagga Wagga, NSW 2678, Australia

Abstract

This paper addresses the difficult question of how to perform meaningful comparisons between neural network-based hydrological models and alternative modelling approaches. Standard, goodness-of-fit metric approaches are limited since they only assess numerical performance and not physical legitimacy of the means by which output is achieved. Consequently, the potential for general application or catchment transfer of such models is seldom understood. This paper presents a partial derivative, relative sensitivity analysis method as a consistent means by which the physical legitimacy of models can be evaluated. It is used to compare the behaviour and physical rationality of a generalised linear model and two neural network models for predicting median flood magnitude in rural catchments. The different models perform similarly in terms of goodness-of-fit statistics, but behave quite distinctly when the relative sensitivities of their inputs are evaluated. The neural solutions are seen to offer an encouraging degree of physical legitimacy in their behaviour, over that of a generalised linear modelling counterpart, particularly when overfitting is constrained. This indicates that neural models offer preferable solutions for transfer into ungauged catchments. Thus, the importance of understanding both model performance and physical legitimacy when comparing neural models with alternative modelling approaches is demonstrated.

Publisher

IWA Publishing

Subject

Atmospheric Science,Geotechnical Engineering and Engineering Geology,Civil and Structural Engineering,Water Science and Technology

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