4.6 Article

Transmission Congestion Management Using Generator Sensitivity Factors for Active and Reactive Power Rescheduling Using Particle Swarm Optimization Algorithm

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 122882-122900

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3224060

Keywords

Generators; Reactive power; Load flow; Costs; Thyristors; Matlab; Stability criteria; Particle swarm optimization; Telecommunication traffic; Congestion management; generator rescheduling; particle swarm optimization; sensitivity factors; voltage stability

Funding

  1. Cape Peninsula University of Technology, Bellville Campus, Cape Town, South Africa
  2. National Research Foundation (NRF) [138177, TTK210329591306]
  3. Eskom Tertiary Education Support Programme (TESP)
  4. Eskom Power Plant Engineering Institute (EPPEI)

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This research aims to lower the cost of active and reactive power of generators by reducing the deviation of rescheduled power from scheduled values. The innovative aspect of this study is the inclusion of reactive power rescheduling and voltage stability. The research formulates a multi-objective function, sensitivity factors, and uses a particle swarm optimization algorithm to address transmission congestion. The developed method is validated on various test systems and demonstrates effectiveness in reducing power cost and improving voltage stability.
Independent System Operators have difficulty in fulfilling all contractual power transactions in a competitive energy market due to transmission network congestion. As a result, applications of generator rescheduling become one of the antidotes in alleviating this difficulty in the consequence of ever-increasing numerous power transactions. The goal of this research is to lower the cost of active and reactive power of the generators by reducing the deviation of rescheduled active and reactive power from scheduled values. The inclusion of reactive power rescheduling and voltage stability in this paper is innovative, as compare to other existing methodologies solely examine active power rescheduling. This paper made the following contributions: formulated a multi-objective function for congestion control in an electric transmission network. Furthermore, formulated the generator sensitivity factors to identify overloaded lines and which generators will be involved in congestion management. Developed a particle swarm optimization (PSO) algorithm to solve the multi-objective function of the transmission congestion management system. In addition, the developed PSO method for CM approach was validated on three IEEE standard test system networks (14, 30, and 118). The simulation results prove that reduces active and reactive power, lowering the cost of generator rescheduling, and demonstrating the usefulness of developed PSO method for transmission network congestion. Furthermore, voltage stability and voltage profile improvements demonstrate the performance effectiveness of the PSO algorithm used in this work.

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