• DocumentCode
    165242
  • Title

    Reinforcement learning for optimal energy management of a solar microgrid

  • Author

    Leo, R. ; Milton, R.S. ; Sibi, S.

  • Author_Institution
    SSN Coll. of Eng., Chennai, India
  • fYear
    2014
  • fDate
    26-27 Sept. 2014
  • Firstpage
    183
  • Lastpage
    188
  • Abstract
    In an optimization based control approach for solar microgrid energy management, consumer as an agent continuously interacts with the environment and learns to take optimal actions autonomously to reduce the power consumption from grid. Learning is built in directly into the consumer´s behaviour so that he can decide and act in his own interest for optimal scheduling. The consumer evolves by interacting with the influencing variables of the environment. We consider a grid-connected solar microgrid system which contains a local consumer, a renewable generator (solar photovoltaic system) and a storage facility (battery). A model-free Reinforcement Learning algorithm, namely three-step-ahead Q-learning, is used to optimize the battery scheduling in dynamic environment of load and available solar power. Solar power and the load feed the reinforcement learning algorithm. By increasing the utility of battery and the solar power generator, an optimal performance of solar microgrid is achieved. Simulation results using real numerical data are presented for a reliability test of the system. The uncertainties in the solar power and the load are taken into account in the proposed control framework.
  • Keywords
    battery storage plants; distributed power generation; energy management systems; learning (artificial intelligence); photovoltaic power systems; power consumption; power engineering computing; power generation scheduling; power grids; solar power stations; battery; battery scheduling; consumer behaviour; grid-connected solar microgrid system; load dynamic environment; load feed; local consumer; model-free reinforcement learning algorithm; optimal energy management; optimization based control approach; power consumption; real numerical data; renewable generator; solar microgrid energy management; solar photovoltaic system; solar power generator; storage facility; system reliability test; three-step-ahead Q-learning; Batteries; Energy management; Heuristic algorithms; Learning (artificial intelligence); Microgrids; Optimal scheduling; Photovoltaic systems; Battery scheduling; Optimization; Q-learning; Reinforcement learning; Solar microgrid;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Global Humanitarian Technology Conference - South Asia Satellite (GHTC-SAS), 2014 IEEE
  • Conference_Location
    Trivandrum
  • Print_ISBN
    978-1-4799-4098-1
  • Type

    conf

  • DOI
    10.1109/GHTC-SAS.2014.6967580
  • Filename
    6967580