2021
DOI: 10.1109/access.2021.3053479
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Optimal Operation of Automated Distribution Networks Based-MRFO Algorithm

Abstract: Nowadays, distribution utilities expend large investments on Distributed System Automation (DSA) based on smart secondary substations at load, capacitor, and distributed generator points with installed automatic sectionalizing switches on their branches. This paper addresses the optimal control and operation of distribution systems that minimize the wasted energy and introducing quantitative and qualitative power services to meet consumers' satisfaction. Simultaneous allocations of Distributed Generators (DGs)… Show more

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Cited by 41 publications
(29 citation statements)
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References 41 publications
(87 reference statements)
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“…Planners and operators of distribution system aim at providing quantitative as well as qualitative power service and reducing the wasted energy in the electrical networks. This in turn not only enhances distribution systems (DSs) performance but also directly enhances the performance of transmission and generation systems as well as providing luxury and consumers' satisfaction [1]. Automating the DSs with DGs installation is considered one of the best followed solutions which can be implemented by optimal allocation and control of distribution system reconfigurations (DSRs), capacitor banks (CBs), distributed generators (DGs) and automatic voltage regulators (AVRs) in separate or combined manner [2,3].…”
Section: Introductionmentioning
confidence: 99%
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“…Planners and operators of distribution system aim at providing quantitative as well as qualitative power service and reducing the wasted energy in the electrical networks. This in turn not only enhances distribution systems (DSs) performance but also directly enhances the performance of transmission and generation systems as well as providing luxury and consumers' satisfaction [1]. Automating the DSs with DGs installation is considered one of the best followed solutions which can be implemented by optimal allocation and control of distribution system reconfigurations (DSRs), capacitor banks (CBs), distributed generators (DGs) and automatic voltage regulators (AVRs) in separate or combined manner [2,3].…”
Section: Introductionmentioning
confidence: 99%
“…One such endeavor is simultaneous control of DSRs and allocation of DGs. As such, recent studies to the implementation of an effective integration strategy has been presented; for example; manta ray foraging optimization [1]; harmony search algorithm (HSA) with an objective of minimizing real power loss and improving voltage profile [29]; combined GA and branch exchange [30]; artificial bee colony optimizer based on maximization of system loadability [31]; improved spotted hyena algorithm [32], improved elitist-jaya algorithm (IEJAYA) [5], FWA [33], firefly (FF) algorithm [34], sinecosine algorithm [35], Harris Hawks Optimizer (HHO) [36], invasive weed optimizer [37], salp swarm algorithm [38] and an improved beetle swarm optimization algorithm [39]. In [40], multi-objective particle swarm optimization (MOPSO) and non-dominated sorting genetic algorithm (NSGA-II) have been applied effectively for DGs allocation in distribution systems.…”
Section: Introductionmentioning
confidence: 99%
“…As a result, the suggested JFSA is used to optimize the distribution of DGs and CBs when considering the maximum loading condition and the original configuration. The CBs are thought of in distinct sizes that are produced in 300 kVAr steps, while the highest rated capacity of any DG is 3 MW [49]. For the first system, the obtained DGs and CBs allocations based on the proposed JFSA are tabulated in Table 1 in comparison to manta ray foraging algorithm (MRFA) [47], [50], EGA [51], TSA [52], Improved TSA [52], WCA [35] and BFOA [59].…”
Section: B Comparative Applications For Optimal Allocation Of Dgs and Cbsmentioning
confidence: 99%
“…In [21], the allocation of renewable energy resources considering network reconfiguration was carried out optimally by using the equilibrium optimization algorithm. In [22], an optimal approach for of automated operation of distribution systems was carried out by using a manta ray optimizer. In [23], a coordinated approach between various enhancement devices for power system operation was employed involving the existence of renewable energies, fixed capacitor banks, and voltage regulators.…”
Section: Introductionmentioning
confidence: 99%