DocumentCode :
3444980
Title :
A neural network control strategy for Multi-energy common dc bus hybrid power supply
Author :
Jifang, A. Li ; Tianhao, B. Tang ; Jingang, C. Han
Author_Institution :
Shanghai Maritime Univ., Shanghai, China
fYear :
2010
fDate :
14-16 June 2010
Firstpage :
1827
Lastpage :
1831
Abstract :
Solar energy, wind energy, ocean energy and geothermal energy are the reproducible energy source. The renewable energy, which is used to generate electricity, not only is clean and pollution-free, but also has a large reserve. Therefore, it becomes an important energy in the world. Multi-energy hybrid power supply system based on solar energy, wind energy, ocean energy and geothermal energy is a tendency. But in most cases, a multi-energy hybrid power supply system is bothered by the uncertainty of wind resources and non-continuity of solar power without high-powered control strategy. To provide a sustained, stable and continuous power to customers, a structure of multi-energy hybrid power supply system is established and a neural network model is developed in this paper. A control strategy for multi-energy hybrid power supply systems is proposed by analyzing the characteristics of solar energy, wind energy, ocean energy and geothermal energy. In order to accelerate the convergence and to prevent oscillation, Levenberg-Marquaret algorithm is used and the momentum factor α is introduced in the training. Simulation shows that this strategy can make the voltage sustained, stable and continuous in the maximum use of renewable energy, which can be satisfied to customers´ electricity need.
Keywords :
DC power transmission; electricity supply industry; geothermal power stations; hybrid power systems; neurocontrollers; renewable energy sources; solar power stations; wind power plants; Levenberg-Marquaret algorithm; geothermal energy; multienergy common dc bus hybrid power supply; neural network control strategy; ocean energy; renewable energy source; reproducible energy source; solar energy; solar power; wind energy; wind resources; Control systems; Geothermal energy; Geothermal power generation; Neural networks; Oceans; Power generation; Power supplies; Renewable energy resources; Solar energy; Wind energy; Common DC Bus; Hybrid Power Supply; Multi-energy; Neural Networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Power Electronics Electrical Drives Automation and Motion (SPEEDAM), 2010 International Symposium on
Conference_Location :
Pisa
Print_ISBN :
978-1-4244-4986-6
Electronic_ISBN :
978-1-4244-7919-1
Type :
conf
DOI :
10.1109/SPEEDAM.2010.5542240
Filename :
5542240
Link To Document :
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