Abstract

A Simplified Grey Wolf Optimizer (SGWO) is suggested for resolving optimization tasks. The simplification in the original Grey Wolf Optimizer (GWO) method is introduced by ignoring the worst category wolves while giving priority to the better wolves during the search process. The advantage of the presented SGWO over GWO is a better solution taking less execution time and is demonstrated by taking unimodal, multimodal, and fixed dimension test functions. The results are also contrasted to the Gravitational Search Algorithm, the Particle Swarm Optimization, and the Sine Cosine Algorithm and this shows the superiority of the proposed SGWO technique. Practical application in a Distributed Power Generation System (DPGS) with energy storage is then considered by designing an Adaptive Fuzzy PID (AFPID) controller using the suggested SGWO method for frequency control. The DPGS contains renewable generation such as photovoltaic, wind, and storage elements such as battery and flywheel, in addition to plug-in electric vehicles. It is demonstrated that the SGWO method is superior to the GWO method in the optimal controller design task. It is also seen that SGWO based AFPID controller is highly efficacious in regulating the frequency compared to the standard PID controller. A sensitivity study is also performed to examine the impact of the unpredictability in the parameters of the investigated system on system performance. Finally, the novelty of the paper is demonstrated by comparing with the existing publications in an extensively used two-area test system.

Highlights

  • The Grey Wolf Optimizer (GWO) is a new optimization method applied to diversified objectives in different optimization tasks

  • 5 Conclusion A Simplified Grey Wolf Optimization (SGWO) algorithm is adopted in this study for the adaptive fuzzy PID controller design for frequency control of a Distributed Power Generation System (DPGS)

  • The proposed Simplified GWO (SGWO) technique is first tested for various unimodal, multi-modal, and fixed dimension functions and values are compared with the original GWO as well as Particle Swarm Optimization (PSO), Gravitational Search Algorithm (GSA), and SCA

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Summary

Introduction

The Grey Wolf Optimizer (GWO) is a new optimization method applied to diversified objectives in different optimization tasks. In the proposed Simplified GWO (SGWO), the least fit wolves, i.e., the delta wolves, are eliminated and more importance is attached to the α wolves to find updated positions This reduces the complexity and improves the execution time and improves the solution quality. The probabilistic characteristics of wind and solar sources and random demand create power imbalance and produce frequency oscillation To overcome these challenges, an intelligent and flexible secondary controller is needed one which can operate in any situations with reduced settling time and oscillation. A Simplified GWO (SGWO) approach is proposed to adjust the AFPID parameters of a DPGS for frequency regulation. 4. Frequency variations, control signals, and power responses of individual regulated sources of the DPGS are examined with established PID and AFPI D controllers.

Wind turbine generator
Photovoltaic cell
Diesel engine generator
Power system modelling
Application of SGWO for frequency control problems
Fluctuation in load and wind power having fixed solar generation
Case 3
Case 4
Case 5
Case 6
Conclusion
Findings
Nomenclature DPGS: Distributed Power Generation System PV
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