高压SF6气体绝缘开关设备放电故障仿真系统及其智能模式识别

Shiling Zhang
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摘要

研制了高压六氟化硫气体绝缘复合电器缺陷模拟器。该装置由四部分组成:六氟化硫气体室、固体绝缘子、缺陷模拟器、观察测量装置。缺陷模拟器可以有效地模拟自由金属颗粒放电、尖端放电、悬浮放电和气隙放电。研制了基于GIS的实时性综合缺陷模拟器,在模拟器上测试了局部放电信号,检测了分解气体随时间的变化趋势。在此基础上,提出了一种模糊ISODATA算法与蚁群算法相结合的人工智能分类方法,并利用粒子群算法对两种算法的结构参数进行优化。高压组合电器的现场应用结果表明,该方法是有效的。故障类型诊断方法可以根据SF6微分解气体和典型微分解气体的时间序列,有效地智能判断故障模式。本文不仅收集了缺陷模拟器硬件平台的原始分类数据,而且开发了易于编程的人工智能分类算法软件系统。它可以直接有效地用于GIS现场实际工程中绝缘缺陷类型的诊断和评价。对GIS设备故障诊断和模式识别具有一定的理论指导价值。
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Discharge Fault Simulation System for High Voltage SF6 Gas Insulated Switch-gear and Its Intelligent Pattern Recognition
In this paper, the defect simulator for high voltage sulfur hexafluoride gas insulated composite electrical apparatus is developed. The device consists of four parts: sulfur hexafluoride gas chamber, solid insulator, defect simulator, observation and measurement device. The defect simulator can effectively simulate free metal particle discharge, tip discharge, suspension discharge and air gap discharge. A real-type integrated defect simulator based on GIS is developed, and the partial discharge signal is tested on the simulator, the change trend of decomposed gas with time is detected. Based on this, an artificial intelligence classification method combining fuzzy ISODATA algorithm and ant colony algorithm is proposed, and the structure parameters of the two algorithms are optimized by PSO algorithm. The field application results of HV combined electrical appliances show that the proposed method is effective. The fault type diagnosis method can effectively judge the fault mode intelligently according to time series of SF6 micro-decomposition gas and typical micro-decomposition gas. This paper not only collects the original classification data from the hardware platform of the defect simulator, but also develops an artificial intelligence classification algorithm software system which is easy to be programmed. It can be directly and effectively used to diagnose and evaluate the type of insulation defect in the field practical engineering of GIS. It has certain theoretical guidance value for GIS equipment fault diagnosis and pattern recognition.
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