Abstract With the increasing development of grid-connected microgrids predominantly powered by renewable energy sources, their negative impact on the distribution grid cannot be ignored. Whilst this burden is borne by… Click to show full abstract
Abstract With the increasing development of grid-connected microgrids predominantly powered by renewable energy sources, their negative impact on the distribution grid cannot be ignored. Whilst this burden is borne by the distribution system operator (DSO), microgrid-users can contribute in grid congestion management to maintain a stable grid connection by providing flexibility on the DSO’s request. This paper uses Jacobi-alternating direction method of multipliers to optimize power exchange between a microgrid and the grid to assist in congestion management. The algorithm decomposes the optimization problem into sub-problems solved locally and in parallel using fitted Q-iteration. The local optimization plans the operation of heat pumps and batteries to provide the required flexibility. The performance of the proposed framework is evaluated using real-world data from thirty residential prosumers. Simulation results show that solving the sub-problems with fitted Q-iteration leads to feasible control policies within acceptable computation times while providing the required flexibility for grid congestion management.
               
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