Reinforcement Learning in Energy Trading Game Among Smart Microgrids

Author(s):  
Huiwei Wang ◽  
Huaqing Li ◽  
Bo Zhou
Energies ◽  
2021 ◽  
Vol 14 (17) ◽  
pp. 5515
Author(s):  
Seongwoo Lee ◽  
Joonho Seon ◽  
Chanuk Kyeong ◽  
Soohyun Kim ◽  
Youngghyu Sun ◽  
...  

Inefficiencies in energy trading systems of microgrids are mainly caused by uncertainty in non-stationary operating environments. The problem of uncertainty can be mitigated by analyzing patterns of primary operation parameters and their corresponding actions. In this paper, a novel energy trading system based on a double deep Q-networks (DDQN) algorithm and a double Kelly strategy is proposed for improving profits while reducing dependence on the main grid in the microgrid systems. The DDQN algorithm is proposed in order to select optimized action for improving energy transactions. Additionally, the double Kelly strategy is employed to control the microgrid’s energy trading quantity for producing long-term profits. From the simulation results, it is confirmed that the proposed strategies can achieve a significant improvement in the total profits and independence from the main grid via optimized energy transactions.


Author(s):  
Dawei Qiu ◽  
Jianhong Wang ◽  
Junkai Wang ◽  
Goran Strbac

With increasing prosumers employed with distributed energy resources (DER), advanced energy management has become increasingly important. To this end, integrating demand-side DER into electricity market is a trend for future smart grids. The double-side auction (DA) market is viewed as a promising peer-to-peer (P2P) energy trading mechanism that enables interactions among prosumers in a distributed manner. To achieve the maximum profit in a dynamic electricity market, prosumers act as price makers to simultaneously optimize their operations and trading strategies. However, the traditional DA market is difficult to be explicitly modelled due to its complex clearing algorithm and the stochastic bidding behaviors of the participants. For this reason, in this paper we model this task as a multi-agent reinforcement learning (MARL) problem and propose an algorithm called DA-MADDPG that is modified based on MADDPG by abstracting the other agents’ observations and actions through the DA market public information for each agent’s critic. The experiments show that 1) prosumers obtain more economic benefits in P2P energy trading w.r.t. the conventional electricity market independently trading with the utility company; and 2) DA-MADDPG performs better than the traditional Zero Intelligence (ZI) strategy and the other MARL algorithms, e.g., IQL, IDDPG, IPPO and MADDPG.


2019 ◽  
Vol 6 (6) ◽  
pp. 10728-10737 ◽  
Author(s):  
Xiaozhen Lu ◽  
Xingyu Xiao ◽  
Liang Xiao ◽  
Canhuang Dai ◽  
Mugen Peng ◽  
...  

Author(s):  
Huiwei Wang ◽  
Tingwen Huang ◽  
Xiaofeng Liao ◽  
Haitham Abu-Rub ◽  
Guo Chen

Energies ◽  
2021 ◽  
Vol 14 (22) ◽  
pp. 7481
Author(s):  
Mohammad Sadeghi ◽  
Shahram Mollahasani ◽  
Melike Erol-Kantarci

Microgrids are empowered by the advances in renewable energy generation, which enable the microgrids to generate the required energy for supplying their loads and trade the surplus energy to other microgrids or the macrogrid. Microgrids need to optimize the scheduling of their demands and energy levels while trading their surplus with others to minimize the overall cost. This can be affected by various factors such as variations in demand, energy generation, and competition among microgrids due to their dynamic nature. Thus, reaching optimal scheduling is challenging due to the uncertainty caused by the generation/consumption of renewable energy and the complexity of interconnected microgrids and their interplay. Previous works mainly rely on modeling-based approaches and the availability of precise information on microgrid dynamics. This paper addresses the energy trading problem among microgrids by minimizing the cost while uncertainty exists in microgrid generation and demand. To this end, a Bayesian coalitional reinforcement learning-based model is introduced to minimize the energy trading cost among microgrids by forming stable coalitions. The results show that the proposed model can minimize the cost up to 23% with respect to the coalitional game theory model.


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