Research Area:  Metaheuristic Computing
This work deals with the use of a special class of optimization algorithms called nature-inspired optimization algorithms (NIOA) to improve power system control actions. This work discusses also the optimization issue of the control task in power system. As an example of nature-inspired (NI) algorithm, various swarm intelligence (SI) and bio-inspired (BI) algorithms that mimic the social, living, and hunting behavior of many kinds of animal, insects, and creatures in nature such as wolves, elephants, whale, fishes, spider, bees, ants, bats, and birds were used as an optimization tool. The main aim was to enhance frequency and voltage regulation loops to cope with system fluctuations during disturbances. The purpose was to optimize the Power System Stabilizer (PSS) parameters and the PID controller gains for enhancing both load frequency control (LFC) and automatic voltage regulator (AVR) systems. To satisfy the objective of this work, a series of simulations on single-area power system with standard LFC and AVR loops was performed. To show the contribution of each applied method, a comparative study in view of peak overshoot, peak undershoot, and settling time was carried out.
Keywords:  
Nature-inspired algorithms
Optimization
Computational intelligence
Power system stability and control
Load frequency control (LFC)
Automatic voltage regulator
Power System Stabilizer (PSS)
PID controller
Author(s) Name:   Nour E. L. Yakine Kouba & Mohamed Boudour
Journal name:  Natural Computing for Unsupervised Learning
Conferrence name:  
Publisher name:  Springer
DOI:  10.1007/978-3-319-98566-4_2
Volume Information:  
Paper Link:   https://link.springer.com/chapter/10.1007/978-3-319-98566-4_2