The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems

Yıl: 2019 Cilt: 19 Sayı: 1 Sayfa Aralığı: 37 - 47 Metin Dili: İngilizce DOI: 10.26650/electrica.2019.18008 İndeks Tarihi: 04-12-2019

The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems

Öz:
This paper presents an adaptive chaotic symbiotic organisms search algorithm (A-CSOS) for finding the solution of optimal reactive power dispatch(ORPD) problem which is one of the main issues of power system planning and operations. The most important advantage of symbiotic organismssearch algorithm (SOS) is that is not need any particular algorithm parameters. However, the SOS algorithm has some features to be enhanced, likefalling into local minima and sluggish convergence. A-CSOS algorithm with adding new and improved features like adaptivity and chaos to conventionalSOS algorithm is proposed to solve ORPD problem. The ORPD problem is mainly focused on minimization of transmission loss (Ploss) and total voltagedeviation (TVD). To determine the optimal set points of control variables including generator bus voltages, tap positions of transformers, and reactivepower outputs of shunt VAR compensators is very crucial for minimization to Ploss and TVD. The proposed algorithm is implemented on IEEE 30-bustest power systems for ascertaining the performance of A-CSOS algorithm on ORPD problem. The results showed that the proposed approach is up to10.39% better than many of which the latest algorithms in literature and encourage the researchers to implement A-CSOS algorithm to ORPD problem.
Anahtar Kelime:

Konular: Mühendislik, Elektrik ve Elektronik
Belge Türü: Makale Makale Türü: Araştırma Makalesi Erişim Türü: Erişime Açık
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APA YALÇIN E, TAPLAMACIOGLU M, Çam E (2019). The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. , 37 - 47. 10.26650/electrica.2019.18008
Chicago YALÇIN Enes,TAPLAMACIOGLU M. Cengiz,Çam Ertuğrul The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. (2019): 37 - 47. 10.26650/electrica.2019.18008
MLA YALÇIN Enes,TAPLAMACIOGLU M. Cengiz,Çam Ertuğrul The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. , 2019, ss.37 - 47. 10.26650/electrica.2019.18008
AMA YALÇIN E,TAPLAMACIOGLU M,Çam E The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. . 2019; 37 - 47. 10.26650/electrica.2019.18008
Vancouver YALÇIN E,TAPLAMACIOGLU M,Çam E The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. . 2019; 37 - 47. 10.26650/electrica.2019.18008
IEEE YALÇIN E,TAPLAMACIOGLU M,Çam E "The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems." , ss.37 - 47, 2019. 10.26650/electrica.2019.18008
ISNAD YALÇIN, Enes vd. "The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems". (2019), 37-47. https://doi.org/10.26650/electrica.2019.18008
APA YALÇIN E, TAPLAMACIOGLU M, Çam E (2019). The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. Electrica, 19(1), 37 - 47. 10.26650/electrica.2019.18008
Chicago YALÇIN Enes,TAPLAMACIOGLU M. Cengiz,Çam Ertuğrul The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. Electrica 19, no.1 (2019): 37 - 47. 10.26650/electrica.2019.18008
MLA YALÇIN Enes,TAPLAMACIOGLU M. Cengiz,Çam Ertuğrul The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. Electrica, vol.19, no.1, 2019, ss.37 - 47. 10.26650/electrica.2019.18008
AMA YALÇIN E,TAPLAMACIOGLU M,Çam E The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. Electrica. 2019; 19(1): 37 - 47. 10.26650/electrica.2019.18008
Vancouver YALÇIN E,TAPLAMACIOGLU M,Çam E The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems. Electrica. 2019; 19(1): 37 - 47. 10.26650/electrica.2019.18008
IEEE YALÇIN E,TAPLAMACIOGLU M,Çam E "The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems." Electrica, 19, ss.37 - 47, 2019. 10.26650/electrica.2019.18008
ISNAD YALÇIN, Enes vd. "The Adaptive Chaotic Symbiotic Organisms Search Algorithm Proposal for Optimal Reactive Power Dispatch Problem in Power Systems". Electrica 19/1 (2019), 37-47. https://doi.org/10.26650/electrica.2019.18008