Optimal Power Flow in Highly Renewable Power System Based on Attention Neural Networks
Li, Chen, Kies, Alexander, Zhou, Kai, Schlott, Markus, Sayed, Omar El, Bilousova, Mariia, Stoecker, Horst
–arXiv.org Artificial Intelligence
In industrial settings, many software determine the optimal power production from each generators tools consistently employ DCOPF for simulating, analyzing, within the power grid in order to meet the demand and forecasting Locational Marginal Price (LMP) [3] of electricity consumption, meanwhile satisfying physical However, with the increasing penetration of renewable and engineering constraints. As a crucial aspect in energy energy sources (RES), such as wind and solar power generators, management, OPF has been defined since 1962 and has solving the OPF problem becomes more significant many variants in the process of development according to and frequent. The uncertain nature of large-scale integration different formulations and constraints it contains [1]. of variable RES makes it technically challenging to keep One of the variants that use exact alternating current the power system flexible [4, 5]. Flexibility maintenance in formulation is known as ACOPF. In addition to determining power systems requires providing supply-demand balance, the active and reactive power output from generators, maintaining continuity in unexpected situations, and coping other control variables in the power grid such as voltage with uncertainty on supply-demand sides [6], which is one magnitude and voltage angle are also determined subject to of the main objects in OPF problem. Solar power is determined their constraints. Due to the sinusoidal nature of alternating by solar irradiation and wind power is determined current, the optimization problem becomes nonlinear and by the wind speed, i.e., the meteorological condition, which non-convex. Consequently, ACOPF has been demonstrated changes in very short time intervals especially for wind.
arXiv.org Artificial Intelligence
Nov-23-2023
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