Abstract

The seemingly complex nature of river flow and the significant variability it exhibits in both time and space, have largely led to the development and application of the stochastic process concept for its modelling, forecasting, and other ancillary purposes. Towards this end, in this study, attempt was made at stochastic modelling of the daily streamflow process of the Benue River. In this regard, Autoregressive Moving Average (ARMA) models and its derivative, the Periodic Autoregressive (PAR) model were developed and used for forecasting. Comparative forecast performances of the different models indicate that despite the shortcomings associated with univariate time series, reliable forecasts can be obtained for lead times, 1 to 5 day-ahead. The forecast results also showed that the traditional ARMA model could not robustly simulate high flow regimes unlike the periodic AR (PAR). Thus, for proper understanding of the dynamics of the river flow and its management, especially, flood defense, in the light of this study, the traditional ARMA models may not be suitable since they do not allow for real-time appraisal. To account for seasonal variations, PAR models should be used in forecasting the streamflow processes of the Benue River. However, since almost all mechanisms involved in the river flow processes present some degree of nonlinearity thus, how appropriate the stochastic process might be for every flow series may be called to question.

Highlights

  • Time series modelling for either data generation or forecasting of hydrologic variables is an important step in planning and operational analysis of water resource systems

  • Comparative forecast performances of the different models indicate that despite the shortcomings associated with univariate time series, reliable forecasts can be obtained for lead times, 1 to 5 day-ahead

  • Data-driven models based on univariate time series were used for forecasting in this study, namely: traditional Autoregressive Moving Average (ARMA)-type and the periodic AR (PAR) models

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Summary

Introduction

Time series modelling for either data generation or forecasting of hydrologic variables is an important step in planning and operational analysis of water resource systems. Providing good forecast functions for time dependent data has become a common problem. It is acute in environmental and ecologic studies in which the ability to predict is closely allied to the successful allocation of the resources needed to control the environment. The use of stochastic time-series models for hydrologic forecasting has evolved greatly. Despite some notable applications and case studies [1], relatively few studies have reported on the use of flow simulation or stochastic modelling in general in solving engineering problems [2]. More attention needs to be given to the uses of synthetic data, such as using the data with optimizing techniques to obtain optimal operating policies for storage or a set of storages

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