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Adaptive Neurofuzzy Inference System-Based Pollution Severity Prediction of Polymeric Insulators in Power Transmission Lines

机译:基于自适应神经模糊推理系统的输电线路聚合物绝缘子污染严重程度预测

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This paper presents the prediction of pollution severity of the polymeric insulators used in power transmission lines using adaptive neurofuzzy inference system (ANFIS) model. In this work, laboratory-based pollution performance tests were carried out on 11 kV silicone rubber polymeric insulator under AC voltage at different pollution levels with sodium chloride as a contaminant. Leakage current was measured during the laboratory tests. Time domain and frequency domain characteristics of leakage current, such as mean value, maximum value, standard deviation, and total harmonics distortion (THD), have been extracted, which jointly describe the pollution severity of the polymeric insulator surface. Leakage current characteristics are used as the inputs of ANFIS model. The pollution severity index “equivalent salt deposit density” (ESDD) is used as the output of the proposed model. Results of the research can give sufficient prewarning time before pollution flashover and help in the condition based maintenance (CBM) chart preparation.
机译:本文利用自适应神经模糊推理系统(ANFIS)模型预测了输电线路中聚合物绝缘子的污染严重程度。在这项工作中,以氯化钠为污染物,在交流电压不同的交流电压下,对11 kV硅橡胶聚合物绝缘子进行了基于实验室的污染性能测试。在实验室测试中测量泄漏电流。提取了泄漏电流的时域和频域特征,例如平均值,最大值,标准偏差和总谐波失真(THD),这些特征共同描述了聚合物绝缘子表面的污染严重程度。泄漏电流特性用作ANFIS模型的输入。污染严重程度指数“等效盐沉积密度”(ESDD)被用作所建议模型的输出。研究结果可以在污染闪蒸之前提供足够的预警时间,并有助于基于状态的维护(CBM)图表的准备。

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