Effective Transmission Congestion Management via Optimal DG Capacity Using Hybrid Swarm Optimization for Contemporary Power System Operations

Managing transmission congestion had been a major problem with growing competition in the power networks. Accordingly, competitiveness emerges through the network's reconfiguration and the proliferation of secondary facilities. Congestion of transmission lines is a critical issue, and their reg...

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Veröffentlicht in:IEEE access 2022, Vol.10, p.71091-71106
Hauptverfasser: Prashant, Sarwar, Md, Siddiqui, Anwar Shahzad, Ghoneim, Sherif S. M., Mahmoud, Karar, Darwish, Mohamed M. F.
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container_start_page 71091
container_title IEEE access
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creator Prashant
Sarwar, Md
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Ghoneim, Sherif S. M.
Mahmoud, Karar
Darwish, Mohamed M. F.
description Managing transmission congestion had been a major problem with growing competition in the power networks. Accordingly, competitiveness emerges through the network's reconfiguration and the proliferation of secondary facilities. Congestion of transmission lines is a critical issue, and their regulation poses a technical challenge as the power system is deregulated. Therefore, the present research illustrates a multi-objective strategy for reaching the optimal capabilities of distributed generators (DG) like wind power plants and geothermal power-producing plants to alleviate congestion throughout the transmission network. Goals such as congestion management during power delivery, power loss reduction, power flow improvement with the enhancement of voltage profile, and investment expenditure minimization are considered to boost the network's technological and economic reliability. The congestion management is achieved using the locational marginal price (LMP) and calculation of transmission congestion cost (TCC) for the optimal location of DG. After identification of congested lines, DG is optimally sized by particle swarm optimization (PSO) and a newly proposed technique that combines the features of modified IL-SHADE and PSO called hybrid swarm optimization (HSO) which employs linear population size reduction technique which improves its performance greatly by reducing the population size by elimination of least fit individuals at every generation giving far better results than those obtained with PSO. In addition, optimal rescheduling of generations from generators has been done to fulfill the load demand resulting in alleviation of congested lines thereby enhancing the performance of the network under investigation. Furthermore, the performance of the proposed methodology of HSO and PSO has been tested successfully on standard benchmark IEEE-30 & IEEE-57 bus configurations in a MATLAB environment with the application of MATPOWER power system package.
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subjects Congestion
Costs
Deregulation
Distributed generation
Distributed generator
Electric power systems
Electrical engineering
Generators
Geothermal energy
Hybrid power systems
hybrid swarm optimization
Load flow
locational marginal price
Loss reduction
Network reliability
Optimization
Particle swarm optimization
Power flow
Power plants
Production
Reconfiguration
Size reduction
Transmission lines
Wind power
title Effective Transmission Congestion Management via Optimal DG Capacity Using Hybrid Swarm Optimization for Contemporary Power System Operations
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