Recurrent Neural Network Model
Details
Neural networks deviate from other models by their ability to map inputs to the outputs and build complex relationships among variables without specifying them explicitly. In this work we provide an extensive literature survey of the related problems and study several approaches, including conventional predictive methods. As a result of our analysis we propose two new methods, the multi context recurrent networks and the hybrid networks, i.e., the auto regressive multi context recurrent neural networks. We consider them in context of the forecasting system design and development. We developed a system of adaptive and dynamic networks for predicting the daily peak load of electric energy. The system maps the exogenous and endogenous inputs to the endogenous outputs. It can be used for characterizing the seasonal and daily loads of electric power as well as unseasonably hot or cold days, holidays and other exceptional situations. We use an adaptive mechanism to train the network, deal with old data, and reduce the growth in energy load.
Autorentext
Tarik Rashid received the B.Sc. degree from Mosul University in 1990 and his Pg.D. degree from Griffith College Dublin(GCD), in 2001.He received his Ph.D. degree from University College Dublin (UCD) in 2006.He was a senior member of Parallel Computational Research Group (PRCG) at UCD in 2007.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09783659352041
- Sprache Englisch
- Genre Psychologie
- Größe H9mm x B220mm x T150mm
- Jahr 2013
- EAN 9783659352041
- Format Kartonierter Einband (Kt)
- ISBN 978-3-659-35204-1
- Titel Recurrent Neural Network Model
- Autor Tarik Rashid
- Gewicht 245g
- Herausgeber LAP Lambert Academic Publishing
- Anzahl Seiten 172