Journal
INTERNATIONAL JOURNAL OF FORECASTING
Volume 30, Issue 3, Pages 464-476Publisher
ELSEVIER SCIENCE BV
DOI: 10.1016/j.ijforecast.2013.12.009
Keywords
Reservoir inflow forecasting; Seasonal models; Bayesian updating; Climate predictors
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This work focuses on developing a forecasting model for the water inflow at an hydroelectric plant's reservoir for operations planning. The planning horizon is 5 years in monthly steps. Due to the complex behavior of the monthly inflow time series we use a Bayesian dynamic linear model that incorporates seasonal and autoregressive components. We also use climate variables like monthly precipitation, El Nino and other indices as predictor variables when relevant. The Brazilian power system has 140 hydroelectric plants. Based on geographical considerations, these plants are collated by basin and classified into 15 groups that correspond to the major river basins, in order to reduce the dimension of the problem. The model is then tested for these 15 groups. Each group will have a different forecasting model that can best describe its unique seasonality and characteristics. The results show that the forecasting approach taken in this paper produces substantially better predictions than the current model adopted in Brazil (see Maceira & Damazio, 2006), leading to superior operations planning. (C) 2014 International Institute of Forecasters. Published by Elsevier B.V. All rights reserved.
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