Energies (Dec 2023)

Improvement of Fuzzy Newton Power Flow Convergence

  • Ligang Zhao,
  • Hua Zheng,
  • Hongyue Zhen,
  • Li Xie,
  • Yuan Xu,
  • Xianchao Huang

DOI
https://doi.org/10.3390/en16248044
Journal volume & issue
Vol. 16, no. 24
p. 8044

Abstract

Read online

In order to address the convergence issue in fuzzy power flow calculations, this paper proposes an analytical approach based on the Levenberg–Marquardt method, aiming to improve the convergence of the fuzzy Newton power flow method. Firstly, a detailed analysis is conducted on the convergence theorem and convergence behavior of the fuzzy Newton method, revealing its poor convergence when the initial values are not properly selected. The Levenberg–Marquardt method is then selected as a means to enhance the convergence of the fuzzy Newton power flow calculations, specifically to tackle the problem of initial value deviation. Since the Jacobian matrix has a significant impact on the convergence region of the power flow, this paper reconstructs the Jacobian matrix based on the Levenberg–Marquardt method, effectively enlarging the convergence region. Through validation experiments on the IEEE 118 standard nodes and simulation comparative analysis, the results confirm the method’s effectiveness in resolving the problem of initial value deviation and notably enlarging the convergence region, thereby improving the convergence of power flow calculations.

Keywords