基于混合粒子群算法的金属氧化物避雷器泄漏监测研究

Kai Zhang, Yongyan Xu
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摘要

金属氧化物避雷器(MOA)的漏电监测是在提取避雷器漏电流的阻性成分的过程中完成的,即通过分析电流的阻性成分的运行情况来实现对避雷器的漏电监测。相关研究和文献表明,在使用金属氧化物避雷器的过程中,由于金属氧化物的老化,电流的电阻成分发生了变化。因此,问题似乎是避雷器的泄漏。鉴于此,针对以往智能算法难以准确监测MOA泄漏的问题,本文将经典粒子群优化算法与非线性分类方法相结合,提出了一种基于混合粒子群优化的在线监测算法。即在构造了MOA的目标函数后,求解出能有效反映MOA运行的特征参数C和α。然后提取漏电流函数方程中的电流电阻分量,监测金属氧化物避雷器的漏损。研究结果表明,在本研究中,混合粒子群算法求解的特征参数C和α分别为502.19和24.9786,对应的平均误差分别为0.438%和0.086%。同时,混合粒子群优化算法得到的电阻电流曲线比粒子群优化算法得到的电阻电流曲线更接近实际情况。从而有效地提高了MOA泄漏监测的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Leakage Monitoring of Metal Oxide Surge Arrester Based on Hybrid Particle Swarm Algorithm
The leakage monitoring of the metal oxide arrester(MOA) is completed in the process of extracting the resistive component of the leakage current of the arrester, that is, the leakage monitoring of the arrester is realized by analyzing the operation of the resistive component of current. It is shown in relevant studies and literature that in the process of using metal oxide arrester, resistive component of current changes due to the aging of metal oxides. Therefore, the problem appears to be the leakage of the arrester. In view of this, aiming at the problem that previous intelligent algorithms are difficult to monitor the leakage of MOA accurately, this paper proposes an online monitoring algorithm based on hybrid particle swarm optimization by combining the classical particle swarm optimization algorithm and the nonlinear classification method. That is, after constructing the objective function of MOA, the characteristic parameters C and α which can effectively reflect the operation of MOA are solved. And then the current resistive component of the leakage current function equation is extracted to monitor the leakage of the metal oxide arrester. The research results show that in this study, the characteristic parameters C and α solved by the hybrid particle swarm algorithm are 502.19 and 24.9786 respectively, and the corresponding mean errors are 0.438% and 0.086% respectively. At the same time, the resistive current curve obtained by the hybrid particle swarm optimization algorithm is closer to the actual situation than that obtained by the particle swarm optimization algorithm. Thus, it can improve the accuracy of MOA Leakage Monitoring effectively.
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