Abstract

Abstract. The development of stream temperature regression models at regional scales has regained some popularity over the past years. These models are used to predict stream temperature in ungauged catchments to assess the impact of human activities or climate change on riverine fauna over large spatial areas. A comprehensive literature review presented in this study shows that the temperature metrics predicted by the majority of models correspond to yearly aggregates, such as the popular annual maximum weekly mean temperature (MWMT). As a consequence, current models are often unable to predict the annual cycle of stream temperature, nor can the majority of them forecast the inter-annual variation of stream temperature. This study presents a new statistical model to estimate the monthly mean stream temperature of ungauged rivers over multiple years in an Alpine country (Switzerland). Contrary to similar models developed to date, which are mostly based on standard regression approaches, this one attempts to incorporate physical aspects into its structure. It is based on the analytical solution to a simplified version of the energy-balance equation over an entire stream network. Some terms of this solution cannot be readily evaluated at the regional scale due to the lack of appropriate data, and are therefore approximated using classical statistical techniques. This physics-inspired approach presents some advantages: (1) the main model structure is directly obtained from first principles, (2) the spatial extent over which the predictor variables are averaged naturally arises during model development, and (3) most of the regression coefficients can be interpreted from a physical point of view – their values can therefore be constrained to remain within plausible bounds. The evaluation of the model over a new freely available data set shows that the monthly mean stream temperature curve can be reproduced with a root-mean-square error (RMSE) of ±1.3 °C, which is similar in precision to the predictions obtained with a multi-linear regression model. We illustrate through a simple example how the physical aspects contained in the model structure can be used to gain more insight into the stream temperature dynamics at regional scales.

Highlights

  • Among the parameters affecting the ecological processes in streams, temperature occupies a predominant role

  • As a response to the lack of stream temperature data, some studies have recently attempted to develop regionalized models. This effort was certainly encouraged by the incentive of the International Association of Hydrological Sciences (IAHS), which set the focus of the last decade on hydrological prediction in ungauged basins (Sivapalan et al, 2003; Hrachowitz et al, 2013)

  • In order to assess its performances, the physics-inspired statistical model described by Eq (22) is compared with a more classical regression model which we developed based on a combination of some of the standard statistical approaches reviewed in Sect

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Summary

Introduction

Among the parameters affecting the ecological processes in streams, temperature occupies a predominant role. Gallice et al.: Stream temperature prediction in ungauged basins ture modelling has regained some interest over the past 10– 15 years This fostered the development of many stochastic and deterministic models Deterministic models, on the other hand, rely on a physically based formulation of the stream energy conservation to compute water temperature (Caissie, 2006). Both model types have usually been applied to a single stream reach or a limited number of catchments The validity of these models for studying climate change impacts or water management techniques has not been assessed yet

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