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Fixed least squares support vector machines for flashover modelling of outdoor insulators

机译:固定最小二乘支持向量机,用于室外绝缘子的闪络建模

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摘要

Many theoretical and experimental studies have been performed to optimize the maintenance times of outdoor insulators. But most of the proposed methods are both time consuming and difficult to apply in practice and also they rely mainly on pollution charts and they are not reliable to weather variations. Artificial intelligence has been extensively applied to solve a large number of electrical and high voltage engineering modeling and optimization problems. In this paper, a methodology based on modified LS-SVM strategy using a fixed set of support vectors is proposed to evaluate the flashover performance of outdoor insulators under contaminated conditions, where the candidate support vectors are selected from the training set according to a quadratic Renyi criterion. The obtained results are promising and ensure that the presented technique can help high voltage engineers to assess insulator performance including such important factors as the flashover behavior, the insulator geometrical parameters, aging, and contamination accumulation. Further comparative analysis of the estimated results with the measured data collected from the site measurement demonstrate the effectiveness of the use of fixed-size LS-SVMs models for flashover prediction.
机译:为了优化户外绝缘子的维护时间,已经进行了许多理论和实验研究。但是大多数提议的方法既耗时又难以实践,并且它们主要依赖于污染图表,并且对天气变化不可靠。人工智能已被广泛应用于解决大量的电气和高压工程建模和优化问题。本文提出了一种基于修正LS-SVM策略的方法,该方法使用固定的支持向量集来评估受污染条件下室外绝缘子的闪络性能,其中根据二次Renyi从训练集中选择候选支持向量标准。所获得的结果是有希望的,并确保所提出的技术可以帮助高压工程师评估绝缘子性能,包括诸如闪络行为,绝缘子几何参数,老化和污染累积等重要因素。对估计结果与从现场测量中收集到的测量数据的进一步比较分析表明,使用固定大小的LS-SVM模型进行闪络预测是有效的。

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