A neural network based technique for short-term forecasting of anomalous load periods

The paper illustrates a part of the research activity conducted by the authors in the field of electric short term load forecasting (STLF) based on artificial neural network (ANN) architectures. Previous experiences with basic ANN architectures have shown that, even though these architectures provide results comparable with those obtained by human operators for most normal days, they evidence some accuracy deficiencies when applied to "anomalous" load conditions occurring during holidays and long weekends. For these periods a specific procedure based upon a combined (unsupervised/supervised) approach has been proposed. The unsupervised stage provides a preventive classification of the historical load data by means of a Kohonen's self-organizing map (SOM). The supervised stage, performing the proper forecasting activity, is obtained by using a multi-layer perceptron with a backpropagation learning algorithm similar to the ones mentioned above. The unconventional use of information deriving from the classification stage permits the proposed procedure to obtain a relevant enhancement of the forecast accuracy for anomalous load situations.

[1]  Xiao-Hu Yu,et al.  Can backpropagation error surface not have local minima , 1992, IEEE Trans. Neural Networks.

[2]  M. Sforna,et al.  A neural network operator oriented short-term and online load forecasting environment , 1995 .

[3]  Dejan J. Sobajic,et al.  Current Status of Artificial Neural Network Applications to Power Systems in the United States (電力・エネルギ-分野におけるニュ-ラルネットワ-ク応用 ) , 1991 .

[4]  Duane DeSieno,et al.  Adding a conscience to competitive learning , 1988, IEEE 1988 International Conference on Neural Networks.

[5]  J. Schmidt,et al.  Comparison of the forecasting accuracy of neural networks with other established techniques , 1991, Proceedings of the First International Forum on Applications of Neural Networks to Power Systems.

[6]  Robert J. Marks,et al.  Electric load forecasting using an artificial neural network , 1991 .

[7]  Brian D. Ripley,et al.  Pattern Recognition and Neural Networks , 1996 .

[8]  Yuan-Yih Hsu,et al.  Design of artificial neural networks for short-term load forecasting. I. Self-organising feature maps for day type identification , 1991 .

[9]  James L. McClelland,et al.  Parallel distributed processing: explorations in the microstructure of cognition, vol. 1: foundations , 1986 .

[10]  Dagmar Niebur,et al.  Artificial Neural Networks for Power Systems - A Literature Survey , 1993 .

[11]  Moon-Hee Park,et al.  Short-term Load Forecasting Using Artificial Neural Network , 1992 .

[12]  Yoh-Han Pao,et al.  Unsupervised/supervised learning concept for 24-hour load forecasting , 1993 .