Joint Coordination Control of Hybrid Energy Storage System in New Distribution Network
DOI:
https://doi.org/10.13052/spee1048-5236.4522Keywords:
New type of distribution network, hybrid energy storage system, Multi-Objective Optimization, coordinated controlAbstract
The current mixed energy storage (ES) system in the distribution network (DN) has become the main power system for new energy construction, but how to achieve joint optimization control of the mixed energy system in the DN is still the focus of current research. To achieve joint coordinated control of hybrid ES systems in new DNs, this study introduces a coordinated control model for ES systems based on multi-objective optimization (MOO) algorithms. The new model uses MOO algorithms to coordinate and optimize the ES system in the DN, thereby achieving accurate coordinated control of the ES system. The results show that using MOO algorithms, the network loss of the hybrid ES system is reduced by 1.258 MW, and the load disturbance was reduced by 0.24. At the same time, after using the new method, the operating cost of the hybrid ES system is reduced by about 40,000 yuan/year, and the grid losses of nodes are reduced by about 8.65%. The joint coordinated control method of the new ES system can improve the ES optimization effect of the system and reduce ES losses in the power grid. This study has good guiding significance for improving the ES efficiency of new DNs.
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