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Title: A hierarchical self-organizing map model in short-termload forecasting.
Authors: Carpinteiro, Otávio Augusto Salgado
Reis, Agnaldo José da Rocha
Keywords: Short-term load forecasting
Self-organizing map
Neural network
Issue Date: 2004
Citation: CARPINTEIRO, O. A. S.; REIS, A. J. da R. A hierarchical self-organizing map model in short-termload forecasting. In: Congresso Brasileiro de Automática, 15., 2004. Gramado. Anais... XV Congresso Brasileiro de Automática, 2004. p.1-6. Disponível em: <>. Acesso em: 23 jul. 2012.
Abstract: This paper proposes a novel neural model to the problem of short-term load forecasting. The neural model is made up of two self-organizing map nets|one on top of the other. It has been successfully applied to domains in which the context information given by former events plays a primary role. The model was trained and assessed on load data extracted from a Brazilian electric utility. It was required to predict once every hour the electric load during the next 24 hours. The paper presents the results, and evaluates them
Appears in Collections:DECAT - Trabalhos apresentados em eventos

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