4.2 Article

A Case for Using Distributed Energy Storage for Load Balancing and Power Loss Minimization in Distribution Networks

期刊

ELECTRIC POWER COMPONENTS AND SYSTEMS
卷 48, 期 9-10, 页码 1063-1076

出版社

TAYLOR & FRANCIS INC
DOI: 10.1080/15325008.2020.1825556

关键词

battery energy storage system; controllable load; demand side management; distributed generation; distribution system analysis and control; fault modeling; integration of renewable energy sources to grid systems; power system optimization; SmartBuilds; parallel building co-simulation

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We introduce an algorithm to solve the problem of load balancing and loss minimization in distribution networks impacted by temporary service restoration activities. The novelty of the proposed algorithm lies in employing utility directed usage of customer distributed battery energy storage systems, which are assumed to be present and available in the network. With increasing penetration of distributed renewable energy sources, such as photovoltaics and wind turbines, it is projected that batteries will also increasingly be adopted to address some of the new challenges with renewables, such as the so-called duck curve challenge. The deployment of the proposed solution is achieved through demand response signals. To verify its benefits, we develop a co-simulation framework which can be used to develop and study distribution level optimization techniques that exploit the interaction between a smart electric grid, smart buildings and distributed energy storage to achieve energy and cost savings and better energy management practices beyond what one can achieve through techniques applied at the building or network levels only. The proposed algorithm is implemented and verified within the co-simulation framework tool, SmartBuilds. Simulations show that energy storage systems can be used for temporary relief of distribution networks impacted by line failures.

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