Optimization of a photovoltaic-battery system using deep reinforcement learning and load forecasting

被引:10
作者
Real, Antonio Corte [1 ]
Luz, G. Pontes [2 ]
Sousa, J. M. C. [1 ]
Brito, M. C. [2 ]
Vieira, S. M. [1 ]
机构
[1] Univ Lisbon, IDMEC, Inst Super Tecn, P-1049001 Lisbon, Portugal
[2] Univ Lisbon, Fac Ciencias, Inst Dom Luiz, Campo Grande, P-1749016 Lisbon, Portugal
关键词
Energy management system; Deep reinforcement learning; Demand-side management; Load forecasting; Deep learning; Energy storage systems; ENERGY MANAGEMENT-SYSTEM; DEMAND RESPONSE; TECHNOLOGIES;
D O I
10.1016/j.egyai.2024.100347
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Home Energy Management Systems (HEMS) are increasingly relevant for demand -side management at the residential level by collecting data (energy, weather, electricity prices) and controlling home appliances or storage systems. This control can be performed with classical models that find optimal solutions, with high realtime computational cost, or data -driven approaches, like Reinforcement Learning, that find good and flexible solutions, but depend on the availability of load and generation data and demand high computational resources for training. In this work, a novel HEMS is proposed for the optimization of an electric battery operation in a real, online and data-driven environment that integrates state-of-the-art load forecasting combining CNN and LSTM neural networks to increase the robustness of decisions. Several Reinforcement Learning agents are trained with different algorithms (Double DQN, Dueling DQN, Rainbow and Proximal Policy Optimization) in order to minimize the cost of electricity purchase and to maximize photovoltaic self-consumption for a PVBattery residential system. Results show that the best Reinforcement Learning agent achieves a 35% reduction in total cost when compared with an optimization-based agent.
引用
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页数:16
相关论文
共 50 条
  • [1] Abadi M., 2016, arXiv, DOI [10.48550/arXiv.1603.04467., DOI 10.48550/ARXIV.1603.04467]
  • [2] Reinforcement Learning: Theory and Applications in HEMS
    Al-Ani, Omar
    Das, Sanjoy
    [J]. ENERGIES, 2022, 15 (17)
  • [3] Albadi AH, 2007, IEEE POWER ENG SOC, P1665
  • [4] Amarasinghe K, 2017, PROC IEEE INT SYMP, P1483, DOI 10.1109/ISIE.2017.8001465
  • [5] Barbour E, 2018, Optimal scheduling of battery energy storage systems
  • [6] Projecting battery adoption in the prosumer era
    Barbour, Edward
    Gonzalez, Marta C.
    [J]. APPLIED ENERGY, 2018, 215 : 356 - 370
  • [7] Brockman G, 2016, Arxiv, DOI [arXiv:1606.01540, DOI 10.48550/ARXIV.1606.01540]
  • [8] Chollet F., 2015, Keras
  • [9] Commission for Energy Regulation (CER), 2012, Cer smart metering projectelectricity customer behaviour trial, 2009-2010
  • [10] CORTES C, 1995, MACH LEARN, V20, P273, DOI 10.1023/A:1022627411411