Dynamic Stability Enhancement Using Fuzzy PID Control Technology for Power System

  • Khaled Eltag
  • Muhammad Shamrooz AslamxEmail author
  • Rizwan Ullah
Regular Papers Intelligent Control and Applications


This article presents Fuzzy Particle Swarm Optimization of PID controller PSO-FPIDC used as a Conventional Power System Stabilizer CPSS to improve the dynamic stability performance of generating unit during low frequency oscillations. Speed deviation Δw and acceleration Δẇ of synchronous generator are taken as input to the PSO-FPIDC controller connected to Single Machine Infinite Busbar SMIB system. This controller examined under different perturbation scenarios. The dynamic performance of the PSO-FPIDC is compared with the Fuzzy Teacher Learner Based Optimization PID TLBO-FPIDC, PSO-PID, TLBO-PID and optimal parameters of convectional Power System Stabilizer CPSS. The results show that the performance of PSO-FPIDC has small overshoot/undershoot and damp out lower frequency oscillations very quickly as compared to other controllers.


Dynamic stability fuzzy PID control power system stabilizer PSO single machine infinite bus TLBO 


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Copyright information

© Institute of Control, Robotics and Systems and The Korean Institute of Electrical Engineers and Springer-Verlag GmbH Germany, part of Springer Nature 2019

Authors and Affiliations

  • Khaled Eltag
    • 1
  • Muhammad Shamrooz Aslamx
    • 1
    Email author
  • Rizwan Ullah
    • 1
  1. 1.School of AutomationNanjing University of Science and TechnologyNanjingP. R. China

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