This paper describes a neural network system for power electric load forecasting of telecommunication station. Getting an accuracy useful for contractual purpose a separately daily forecast of both main load and its oscillation is proposed. For the mean daily forecast we used a three layers multilayer perceptron (MLP), while to the oscillation forecasting we realized a system composed by a MLP and a self organizing map (SOM): the typology information obtained by the SOM unsupervised algorithm has been utilized as binary code in MLP input. The proposed system with hourly power load data of a big telecommunication operator has been tested. The total forecast has been obtained combining the two components. The forecasting accuracy for a whole year test data is around 2%. Some problem exists in the forecasted load of summer time.

Caciotta, M., Giarnetti, S., Leccese, F. (2009). Hybrid Neural Network System for Electric Load Forecasting of Telecommunication Station. In Proceedings of XIX IMEKO World Congress - Fundamental and Applied Metrology (pp.657-661). LISBOA : UNIVERSIDADE TECNICA DE LISBOA.

Hybrid Neural Network System for Electric Load Forecasting of Telecommunication Station

CACIOTTA, Maurizio;GIARNETTI, SABINO;LECCESE, Fabio
2009-01-01

Abstract

This paper describes a neural network system for power electric load forecasting of telecommunication station. Getting an accuracy useful for contractual purpose a separately daily forecast of both main load and its oscillation is proposed. For the mean daily forecast we used a three layers multilayer perceptron (MLP), while to the oscillation forecasting we realized a system composed by a MLP and a self organizing map (SOM): the typology information obtained by the SOM unsupervised algorithm has been utilized as binary code in MLP input. The proposed system with hourly power load data of a big telecommunication operator has been tested. The total forecast has been obtained combining the two components. The forecasting accuracy for a whole year test data is around 2%. Some problem exists in the forecasted load of summer time.
2009
9789638841001
Caciotta, M., Giarnetti, S., Leccese, F. (2009). Hybrid Neural Network System for Electric Load Forecasting of Telecommunication Station. In Proceedings of XIX IMEKO World Congress - Fundamental and Applied Metrology (pp.657-661). LISBOA : UNIVERSIDADE TECNICA DE LISBOA.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11590/177820
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