JCMPSISSN:2582-6085

Hybrid Chaotic GWO and DA: Optimal Sizing and Positioning of D-STATCOM

Abstract

In this work, derivation of power quality technique for distribution system via nonlinear functions is determined. Therefore the requirement for power quality improvement can be accurately enumerated. As the technique is adjustable, it requires a novel optimization technique to estimate optimal position and D-STATCOM compensation. Therefore, this work adopts a hybrid optimization model on the basis of chaotic local search techniques. The adopted hybrid chaotic GWO, as well as DA, is exploited to determine optimal sizing and positioning of STATCOM by resolving the power quality technique. In order to address both the sizing as well as localizing issue, the solution is reactive power-encoded with two bound constraints. The hybrid method integrated with two excellent approaches can enhance the inadequacy of each approach by exploiting the chaotic local search as an enhancement, and improve the exploration and exploitation of the approach concurrently therefore the sizing as well as the position of D-STATCOM can be calculated accurately. The adopted Hybrid chaotic Grey Wolf Optimization (GWO) and Dragonfly Algorithm (DA) technique evaluates its performance with the existing techniques regarding the cost analysis, Total loss, as well as ascertains the efficiency of the adopted power quality model.

References

  • Saeed Rezaeian-MarjaniSadjad GalvaniMohammad Farhadi-Kangarlu,"Optimal allocation of D-STATCOM in distribution networks including correlated renewable energy sources", International Journal of Electrical Power & Energy Systems, 30 May 2020.
  • Sasidharan Sreedharan Tibin Joseph Vipin Das P, "Power system loading margin enhancement by optimal STATCOM integration – A case study", Computers & Electrical Engineering, 26 December 2019.
  • Wesam RohoumaRobert S. Balog Miroslav M. Begovic," D-STATCOM for harmonic mitigation in low voltage distribution network with high penetration of nonlinear loads", Renewable Energy, 1 June 2019.
  • S. M. Abd-ElazimE. S. Ali,"Optimal location of STATCOM in multimachine power system for increasing loadability by Cuckoo Search algorithm", International Journal of Electrical Power & Energy Systems, September 2016.
  • K. Karthikeyan, P. K. Dhal," Transient Stability Enhancement by Optimal Location and Tuning of STATCOM Using PSO", Procedia Technology, 2015.
  • Atma Ram Gupta and Ashwani Kumar, "Optimal placement of D-STATCOM using sensitivity approaches in mesh distribution system with time variant load models under load growth", Ain Shams Engineering Journal, June 2016.
  • An Luo, Lu Fang, Xianyong Xu, Shuangjian Peng, Chuanping Wu and Houhui Fang, "New control strategy for DSTATCOM without current sensors and its engineering application", International Journal of Electrical Power & Energy Systems, vol. 33, no. 2, pp.322-331, February 2011.
  • Safari A, Ahmadian A and Golkar MAA, "Controller design of STATCOM for power system stability improvement using honey bee mating optimization", J Appl Res Technol, vo.11, no.1, pp.144–55, 2013.
  • Chakrabarti A, Kothari DP, Mukhopadhyay AK, De Abhinandan, “An introduction to reactive power control and voltage stability in power transmission”, PHI Learning Private Limited; 2000.
  • Murty VVSN, Kumar Ashwani. Optimal placement of DG in radial distribution systems based on new voltage stability index under load growth. Int J Electr Power Energy Syst, vol.69, no.2, pp.46–56, 2015.
  • G. Chen, M. Gao, Z. Zhang and S. Li, "Hybridization of Chaotic Grey Wolf Optimizer and Dragonfly Algorithm for Short-Term Hydrothermal Scheduling," IEEE Access, vol. 8, pp. 142996-143020, 2020
  • V. Tejaswini, D. Susitra. "Optimal Location and Compensation Using D-STATCOM: A Hybrid Hunting Algorithm", Journal of Control, Automation and Electrical Systems, 2021.
  • Yongsheng Xu, "Hybrid GWO and CS Algorithm for UPQC Positioning in the Power Distribution Network", Journal of Computational Mechanics, Power System and Control, vol.3, no. 3, July 2020.