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Keywords = real-time dynamic active-reactive optimal power flow (RT-DAR-OPF)

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17 pages, 1727 KiB  
Article
Real-Time Active-Reactive Optimal Power Flow with Flexible Operation of Battery Storage Systems
by Erfan Mohagheghi, Mansour Alramlawi, Aouss Gabash, Frede Blaabjerg and Pu Li
Energies 2020, 13(7), 1697; https://doi.org/10.3390/en13071697 - 3 Apr 2020
Cited by 16 | Viewed by 3643
Abstract
In this paper, a multi-phase multi-time-scale real-time dynamic active-reactive optimal power flow (RT-DAR-OPF) framework is developed to optimally deal with spontaneous changes in wind power in distribution networks (DNs) with battery storage systems (BSSs). The most challenging issue hereby is that a large-scale [...] Read more.
In this paper, a multi-phase multi-time-scale real-time dynamic active-reactive optimal power flow (RT-DAR-OPF) framework is developed to optimally deal with spontaneous changes in wind power in distribution networks (DNs) with battery storage systems (BSSs). The most challenging issue hereby is that a large-scale ‘dynamic’ (i.e., with differential/difference equations rather than only algebraic equations) mixed-integer nonlinear programming (MINLP) problem has to be solved in real time. Moreover, considering the active-reactive power capabilities of BSSs with flexible operation strategies, as well as minimizing the expended life costs of BSSs further increases the complexity of the problem. To solve this problem, in the first phase, we implement simultaneous optimization of a huge number of mixed-integer decision variables to compute optimal operations of BSSs on a day-to-day basis. In the second phase, based on the forecasted wind power values for short prediction horizons, wind power scenarios are generated to describe uncertain wind power with non-Gaussian distribution. Then, MINLP AR-OPF problems corresponding to the scenarios are solved and reconciled in advance of each prediction horizon. In the third phase, based on the measured actual values of wind power, one of the solutions is selected, modified, and realized to the network for very short intervals. The applicability of the proposed RT-DAR-OPF is demonstrated using a medium-voltage DN. Full article
(This article belongs to the Special Issue Optimal Design and Operation of Sustainable Energy Systems)
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