using reinforcement learning to make smart energy storage source in microgrid
نویسندگان
چکیده
the use of renewable energy in power generation and sudden changes in load and fault in power transmission lines may cause a voltage drop in the system and challenge the reliability of the system. one way to compensate the changing nature of renewable energies in the short term without the need to disconnect loads or turn on other plants, is the use of renewable energy storage. the use of energy storage improved electrical stability, power quality and improve the peak power load. in this paper, we have used the reinforcement learning to present an optimal method for charge and discharge the consumer battery. in this way the uncertainty of production due to the random nature of wind energy is improved. simulation results indicate not only the use of renewable energy and battery is successfully enhanced but also the cost of annual payments and peak consumption times is reduced.
منابع مشابه
Using Reinforcement Learning to Make Smart Energy Storage Source in Microgrid
The use of renewable energy in power generation and sudden changes in load and fault in power transmission lines may cause a voltage drop in the system and challenge the reliability of the system. One way to compensate the changing nature of renewable energies in the short term without the need to disconnect loads or turn on other plants, is the use of renewable energy storage. The use of ener...
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عنوان ژورنال:
international journal of smart electrical engineeringناشر: islamic azad university,central tehran branch
ISSN 2251-9246
دوره 04
شماره 01 2015
میزبانی شده توسط پلتفرم ابری doprax.com
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