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:: Volume 5, Issue 2 (1-2017) ::
ieijqp 2017, 5(2): 73-82 Back to browse issues page
Placement, sizing and optimal scheduling subtransmission using vanadium flow battery storage in order to increase the efficiency of the distribution network
Majid Hosseina * 1, Seyed mohammad taghi Bathaee2
1- khaje nasir universitu
2- khaje nasir university
Abstract:   (5773 Views)

There are many advantages to utilize storages in electric power system. Peak shaving, load leveling, load frequency control, integration of renewable, energy trading and spinning reserve are the most important of them. Batteries, especially redox flow batteries, are one of the appropriate storages for utilization in distribution network. This paper presents a novel, heuristic and practical method for optimal scheduling in distribution network with flow battery storage. This innovative method to enhance the efficiency posts that are needed to install storage is very convenient. Peak shaving and load leveling is considered as the main objective in this paper. Several indices are presented in this paper for determine the place of storages and also scheduling for optimal use of energy in them. Simulations of this paper are based on real information of distribution network substation that located in Semnan, Iran.

Keywords: energy storage, flow battery, peak shaving, load leveling
Full-Text [PDF 1585 kb]   (2119 Downloads)    
Type of Study: Research | Subject: Special
Received: 2016/02/14 | Accepted: 2016/10/1 | Published: 2017/01/30
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hosseina M, bathaee S M T. Placement, sizing and optimal scheduling subtransmission using vanadium flow battery storage in order to increase the efficiency of the distribution network. ieijqp 2017; 5 (2) :73-82
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Volume 5, Issue 2 (1-2017) Back to browse issues page
نشریه علمی- پژوهشی کیفیت و بهره وری صنعت برق ایران Iranian Electric Industry Journal of Quality and Productivity
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