Hybridizing gaining–sharing knowledge and differential evolution for large-scale power system economic dispatch problems

Author:

Liu Qinghua1,Xiong Guojiang12ORCID,Fu Xiaofan1,Mohamed Ali Wagdy34ORCID,Zhang Jing1,Al-Betar Mohammed Azmi5,Chen Hao6,Chen Jun7,Xu Sheng8

Affiliation:

1. Guizhou Key Laboratory of Intelligent Technology in Power System, College of Electrical Engineering, Guizhou University , Guiyang 550025 , China

2. Institute of Engineering Investigation & Design Co., Ltd., Guizhou University , Guiyang 550025 , China

3. Operations Research Department, Faculty of Graduate Studies for Statistical Research, Cairo University , Giza 12613 , Egypt

4. Department of Mathematics and Actuarial Science, School of Sciences & Engineering, The American University in Cairo , New Cairo 11835 , Egypt

5. Artificial Intelligence Research Center (AIRC), College of Engineering and Information Technology, Ajman University , Ajman 346 , UAE

6. Fujian Provincial Key Laboratory of Intelligent Identification and Control of Complex Dynamic System , Quanzhou 362216 , China

7. Department of Electrical and Computer Engineering, Oakland University , Rochester, MI 48309 , USA

8. Guizhou Electric Power Grid Dispatching and Control Center , Guiyang 550002 , China

Abstract

AbstractEconomic dispatch (ED) of thermal power units is significant for optimal generation operation efficiency of power systems. It is a typical nonconvex and nonlinear optimization problem with many local extrema when considering the valve-point effects, especially for large-scale systems. Considering that differential evolution (DE) is efficient in locating global optimal region, while gain-sharing knowledge-based algorithm (GSK) is effective in refining local solutions, this study presents a new hybrid method, namely GSK-DE, to integrate the advantages of both algorithms for solving large-scale ED problems. We design a dual-population evolution framework in which the population is randomly divided into two equal subpopulations in each iteration. One subpopulation performs GSK, while the other executes DE. Then, the updated individuals of these two subpopulations are combined to generate a new population. In such a manner, the exploration and the exploitation are harmonized well to improve the searching efficiency. The proposed GSK-DE is applied to six ED cases, including 15, 38, 40, 110, 120, and 330 units. Simulation results demonstrate that GSK-DE gives full play to the superiorities of GSK and DE effectively. It possesses a quicker global convergence rate to obtain higher quality dispatch schemes with greater robustness. Moreover, the effect of population size is also examined.

Funder

Natural Science Foundation of Guizhou Province

National Natural Science Foundation of China

Guizhou University

Publisher

Oxford University Press (OUP)

Subject

Computational Mathematics,Computer Graphics and Computer-Aided Design,Human-Computer Interaction,Engineering (miscellaneous),Modeling and Simulation,Computational Mechanics

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