Title :
Energy demand analysis in smart grids
Author :
Wolfgang Schellong;Sarah Gerngross
Author_Institution :
University of Technology, Germany
Abstract :
The architecture of the future energy supply can be characterized by a combination of conventional centralized power plants with an increasing number of distributed energy resources, mainly including renewable energy systems. To manage smart grids operations a detailed knowledge of the power demand is necessary. The paper describes the energy data analysis and the basics of the mathematical modeling of the energy demand. A detailed analysis of the structure of load profiles is conducted on the basis of the load data of the power transmission network in Germany. Regression methods and artificial neural networks are used as forecast methods. The paper shows the integration of the forecast tools into energy management systems.
Keywords :
"Neurons","Mathematical model","Load modeling","Predictive models","Linear regression","Three-dimensional displays","Biological neural networks"
Conference_Titel :
Energy and Sustainability Conference (IESC), 2015 International
DOI :
10.1109/IESC.2015.7384385