THE MULTI-OBJECTIVE OPTIMIZATION OPERATION OF MICROSOURCES IN MICROGRID BASED ON AN IMPROVED PARTICLE SWARM ALGORITHM

As an important part of s mart grid, microgrid(M G) is a new form of s mart grid in the future. Microgrid( MG ) technology can effectively integrate the advantages of new energy and renewable energy generation and provide a novel way for large-scale applicat ions of new energy and renewable energy connecting to grid. This paper deals with the problem o f economic operation of microsources in the microgrid, such as micro -turbine(MT), fuel cell(FC), diesel generator(DG), photovoltaic cell(PV), wind turbine(WT), and battery storage. The proposed problem is formulated as a nonlinear constrained optimization problem. The paper takes into consideration the operation cost as well as the emission reduction of NO x , SO 2 , and CO2. So a mathematical optimal model is built to optimize operation of microgrid(M G) system, based on the characteristics of various microsources, the restraint of microgrid system and the predicting output of the next 24hours’ wind turbine and photovoltaic cell and load demand. An improved particle swarm algorith m is emp loyed to minimu m the co mprehensive benefit cost of microgrid operation including economic and environmental benefits which realizes the mu lti-objective optimization operation. Besides, this paper focuses on the effect of electricity price between microgrid and the main grid on system operation costs. The results demonstrate the efficiency of the proposed approach to satisfy the load and to reduce the operation cost and the emissions.