2022
DOI: 10.1016/j.apenergy.2021.118090
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Stochastic optimal power flow in islanded DC microgrids with correlated load and solar PV uncertainties

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Cited by 13 publications
(7 citation statements)
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“…In this paper, DC power flow model (Yugeswar et al, 2022) is applied to analyze the power system. In addition, the node power balance model and the branch power flow model are shown in Eqs.…”
Section: Electricity Networkmentioning
confidence: 99%
“…In this paper, DC power flow model (Yugeswar et al, 2022) is applied to analyze the power system. In addition, the node power balance model and the branch power flow model are shown in Eqs.…”
Section: Electricity Networkmentioning
confidence: 99%
“…China is actively addressing the goals of peaking carbon emissions and achieving carbon neutrality [1]. To achieve this, it is crucial to develop an electricity system that adapts to the increasing share of new energy sources, which is also an intrinsic requirement for ensuring the national energy security.…”
Section: Introductionmentioning
confidence: 99%
“…In general, many scholars have been successfully applied various stochastic approaches to address the power system issues including adaptive constraint differential evolution (ACDE) algorithm 2 , an improved version of the coyote optimization algorithm (COA) 3 , teaching-learning-based optimizer (TLBO) 4 , adaptive multiple teams perturbation-guiding Jaya (AMTPG-Jaya) 5 , backtracking search algorithm (BSA) 6 , crisscross search based grey wolf optimizer (CS-GWO) 7 , ant colony optimization (ACO) 8 , effective whale optimization algorithm (EWOA) 9 , moth swarm algorithm (MSA) 10 , adaptive group search optimization (AGSO) 11 , improved colliding bodies optimization (ICBO) 12 , differential search algorithm (DSA) 13 , invasive weed optimization (IWO) 14 , interior search algorithm (ISA) 15 , robust optimization approach (Rao) 16 , Salp swarm algorithm (SSA) 17 . Stud krill herd algorithm (SKH) 18 , symbiotic organisms search algorithm (SOS) 19 , tree-seed algorithm (TSA) 20 , Hunter-prey optimization (HPO) 21 , particle swarm optimization (PSO) 22 , fuzzy-based improved comprehensive-learning particle swarm optimization (FBICLPSO) algorithm 23 , hybrid Grey wolf optimizer and particle swarm optimization (GWO-PSO) 24 , hybrid of the firefly and PSO algorithms (HFAPSO) 25 , combined genetic algorithm and particle swarm algorithm (GA-PSO) 26 , multi objective genetic algorithm (MOGA) 27 , artificial bee colony algorithm based on a non-dominated sorting genetic approach (ABC-NSGA-II) 28 , fitness-distance balance based-TLABC (teaching-learning-based artificial bee colony) (FDB-TLABC) 29 , non-dominated sorting culture differential evolution algorithm (NSCDE) 30 , differential evolution algorithm based on state transition of specific individuals (DE-TSA) 31 , multi-objective covariance matrix adaptation evolution strategy (CMA-ES) 32 , manta ray foraging optimization (MRFO) 33 , 34 , dragonfly algorithm (DA) 35 , flower pollination algorithm (FPA) 36 , etc.…”
Section: Introductionmentioning
confidence: 99%