Abstract

Abstract. For streamflow forecasting, rainfall–runoff models are often augmented with updating procedures that correct forecasts based on the latest available streamflow observations of streamflow. A popular approach for updating forecasts is autoregressive (AR) models, which exploit the "memory" in hydrological model simulation errors. AR models may be applied to raw errors directly or to normalised errors. In this study, we demonstrate that AR models applied in either way can sometimes cause over-correction of forecasts. In using an AR model applied to raw errors, the over-correction usually occurs when streamflow is rapidly receding. In applying an AR model to normalised errors, the over-correction usually occurs when streamflow is rapidly rising. In addition, when parameters of a hydrological model and an AR model are estimated jointly, the AR model applied to normalised errors sometimes degrades the stand-alone performance of the base hydrological model. This is not desirable for forecasting applications, as forecasts should rely as much as possible on the base hydrological model, with updating only used to correct minor errors. To overcome the adverse effects of the conventional AR models, a restricted AR model applied to normalised errors is introduced. We show that the new model reduces over-correction and improves the performance of the base hydrological model considerably.

Highlights

  • Rainfall–runoff models are widely used to generate streamflow forecasts, which provide essential information for flood warning and water resource management

  • By over-correction, we mean that the AR model updates the hydrological model simulations too much

  • We have shown that over-corrections can lead to inaccurate deterministic forecasts, and we discuss the consequences for the probabilistic predictions given by each of the error models

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Summary

Introduction

Rainfall–runoff models are widely used to generate streamflow forecasts, which provide essential information for flood warning and water resource management. For streamflow forecasting, rainfall–runoff models are often augmented by updating procedures that correct streamflow forecasts based on the latest available observations of streamflow and their departures from model simulations. The most popular updating approach uses autoregressive (AR) models, which exploit the “memory” – more precisely the autocorrelation structure – of errors in hydrological simulations (Morawietz et al, 2011). AR updating uses a linear function of the known errors at previous time steps to anticipate errors in a forecast period. Forecasts are updated according to these anticipated errors. AR updating has been shown to provide equivalent performance to more sophisticated non-linear and non-parametric updating procedures (Xiong and O’Connor, 2002)

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