2019
DOI: 10.11591/ijeei.v7i4.1418
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Self-adaptive fuzzy-PID controller for AGC study in deregulated Power System

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Cited by 4 publications
(2 citation statements)
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“…Besides this, a three-area system with TH-hydro (HY) units reported in Mohanty et al 12 and Sahu et al 13 and two-area multi-source power system considered in Sahu et al 14 are used to verify the dominance of F-PID controller. The fuzzy-PID controller optimally designed and implemented to deal with LFC issues in deregulated environment is reported in Nayak et al 15 and Sahoo et al 16 A fuzzy-two degree of freedom-PID controller is introduced for LFC study considering conventional power system 17 and…”
Section: Introductionmentioning
confidence: 99%
“…Besides this, a three-area system with TH-hydro (HY) units reported in Mohanty et al 12 and Sahu et al 13 and two-area multi-source power system considered in Sahu et al 14 are used to verify the dominance of F-PID controller. The fuzzy-PID controller optimally designed and implemented to deal with LFC issues in deregulated environment is reported in Nayak et al 15 and Sahoo et al 16 A fuzzy-two degree of freedom-PID controller is introduced for LFC study considering conventional power system 17 and…”
Section: Introductionmentioning
confidence: 99%
“…One promising avenue for enhancing power system stability involves the integration of fuzzy logic and proportional-integral-derivative (PI) controllers in a cascade configuration. [1] This approach leverages the strengths of both fuzzy logic, which can handle complex and uncertain systems, and PI controllers, known for their simplicity and effectiveness. The combination of Fuzzy-PI cascade controllers offers a robust and adaptive solution to address the dynamic and nonlinear nature of power systems.…”
Section: Introductionmentioning
confidence: 99%