利用实验和人工神经网络技术估算非陶瓷绝缘子表面泄漏电流的寿命

S. M. Elkhodary, L. Nasrat
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引用次数: 5

摘要

固体绝缘子的击穿机理通常与表面漏电流有关。表面漏电流引起表面跟踪。非陶瓷绝缘体中的表面跟踪是一种不希望出现的现象,它不能准确预测。本文介绍了一种预测绝缘子寿命的实验分析技术,并对自然老化绝缘子和人工污染材料上的非陶瓷绝缘子表面泄漏电流随时间的变化进行了实验测量。本文还比较了14种不同类型的非陶瓷材料在相同条件下的表面泄漏电流(所提到的非陶瓷材料主要是硅橡胶(SR)和聚丙烯(PP),填充率不同)。本文还对泄漏电流与绝缘子污染程度的关系进行了研究。本文构建了基于人工神经网络的不同原型系统,该系统可以利用实验测量的泄漏电流来估计聚合物绝缘子表面不同污染程度下的绝缘子寿命。在神经网络中对不同绝缘子类型的不同填充水平的原型进行了训练。本文提出的方法预测了在污染天气和污染条件下,具有准确填充率的最佳非陶瓷绝缘子,该绝缘子可以承受更高的电压和更长的寿命。所提出的技术被认为是质量控制领域的有用工具
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The Use of Experimental and Artificial Neural Network Technique to Estimate Age against Surface Leakage Current for Non-ceramic Insulators
Solid insulators breakdown mechanism is always associated with surface leakage current. Surface leakage current causes surface tracking. Surface tracking in non-ceramic insulators is an unwanted phenomenon, which cannot be accurately predicted. This paper introduces an experimental and analytical technique to predict the insulator life time, and presents an experimental measurements of the surface leakage current against time of nonceramic insulators on naturally aged insulators and artificially contaminated material. A comparison of surface leakage current for fourteen different type of non-ceramic materials under the same conditions is also introduced in this paper (the mentioned nonceramic materials are mainly silicon rubber (SR) and poly propylene (PP), with different filler percentage). The study of the leakage current dependence on the insulators contamination level is also presented in this paper. Different prototype of artificial neural networks-based system that can estimate the insulator age under different contamination level at the surface of polymer insulators by employing the experimentally measured leakage current was constructed in this paper. The proposed prototype is trained for different filler level for different insulator type in the neural network. The proposed technique in this paper predicts the best non-ceramic insulator with the exact filler percentage that withstands higher voltage with longer life time under contaminated weather and polluted condition. The proposed technique is considered to be helpful tool in the area of quality control
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