Outline

Ingegneria Sismica

Ingegneria Sismica

Research on Real-time Dynamic Estimation Methods for Short-circuit Capacity in Distribution Networks Based on Non-perturbation Technology

Author(s): Siyang He1, Shuai Wang2, Changhong Liu1, Jufeng Jin1, Yonglong Gu1, Linpeng Yao3
1Guizhou Power Grid Co., Ltd. Power Grid Planning and Research Center, Duyun Power Supply Bureau, Guiyang, Guizhou, 550003, China
2Guizhou Power Grid Co., Ltd. Power Grid Planning and Research Center, Tongren Power Supply Bureau, Guiyang, Guizhou, 550003, China
3Shanghai Jiao Tong University, Shanghai, 200240, China
He, Siyang. et al “Research on Real-time Dynamic Estimation Methods for Short-circuit Capacity in Distribution Networks Based on Non-perturbation Technology.” Ingegneria Sismica Volume 43 Issue 1: 1-16, doi:10.65102/is2026489.

Abstract

Real-time estimation of short-circuit capacity under operational conditions holds significant practical value for assessing the stability level of distribution grids under various disturbance conditions. This paper employs the two-point method to solve circuit equations and evaluate load-saving operational states. Based on non-disturbance technology—weighted adaptive recursive least squares—the short-circuit capacity provided by connected power sources is calculated. Through simulation analysis and verification, taking a 110 kV substation in the Su North region as the research object, it can be observed that the nighttime operating mode is relatively small, while the daytime operating mode is relatively large. The non-disturbance method proposed in this paper for measuring short-circuit capacity shows that if the ratio of load capacity to actual short-circuit capacity exceeds 15%, the error will reach 10%. Therefore, this method can be further extended to address grid safety issues and holds significant research value.

Keywords
least squares method; simulation analysis; non-disturbance technology; short-circuit capacity

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