The aim of this work is to develop tools for optimal power flow management control in a micro grid (MG). The latter consists of a wind turbine, energy storage system, two gas turbines (GTs), and the main grid. Unlike the traditional approach, which is limited to the distribution of active power, this paper models an electrical system to coordinate and optimize the flow of both active and reactive power using discrete controls. The proposed optimal power distribution strategy has two objectives. First, it aims at forecasting over a time horizon of 24 hours the optimal distribution of the active and reactive power required for each power source connected to the MG. The proposed management incorporates the forecasts of consumption, weather, and tariffs. Second, it aims at reducing the CO 2 emissions rate by optimizing both the operating point of the two GTs and the usage of the storage unit. The proposed optimization problem for the energy management system is solved using the Bellman algorithm through dynamic programming. Its effectiveness is illustrated with various simulations carried out in the Matlab environment. The supremacy of the proposed management algorithm is highlighted by comparing its performance with conventional (restricted) management.
KEYWORDSBellman algorithm, distributed generation, dynamic programming, energy management system, hybrid system, optimal power flow DGs generally integrate certain renewable energy production systems. However, regarding the intermittent nature of these non-polluting sources, the introduction of an energy storage system is compulsory. Indeed, this will smooth the power produced and thus avoid grid stability problems. Moreover, this storage system is generally supported by other auxiliary sources to cope with the sharp fluctuations in electricity demand on one hand and renewable production on the other. In this context, the micro grid (MG) considered in this paper consists of:--