首页> 外文会议>International Conference on Sensing, Measurement and Data Analytics in the era of Artificial Intelligence >An Optical Partial Discharge Localization Method Based on Simulation and Machine learning in GIL
【24h】

An Optical Partial Discharge Localization Method Based on Simulation and Machine learning in GIL

机译:GIL中基于仿真和机器学习的光学局部放电定位方法

获取原文

摘要

As gas-insulated transmission line (GIL) is widely used, the partial discharge (PD) phenomenon that occurs during their operation is one of the main reasons for the deterioration of their insulation status. Therefore, the detection and localization of PD in the GIL plays an important role in ensuring the safe and stable operation of the equipment. At present, the PD localization methods for GIL are mainly ultrahigh frequency (UHF) method and ultrasonic method, while these methods are susceptible to mechanical vibration and electromagnetic interference. Optical detection, as a sensitive and effective PD detection method, is rarely used in the field of GIL PD localization. Accordingly, this paper proposes a GIL PD localization method based on optical PD simulation and machine learning. This method establishes a simulation model that is exactly the same as the actual GIL in terms of structure, size and sensor arrangement, where the PD optical simulation experiment is performed to build a PD simulation fingerprint database. Each fingerprint in the fingerprint database corresponds to a PD source location information. Based on this, the PSO-SVM machine learning algorithm is used to match the actual PD fingerprints with the fingerprints in the simulation fingerprint database to obtain the localization results. This method overcomes the difficulty of collecting a large amount of field data to build a fingerprint database in the existing optical fingerprint localization method through simulation. And the structure of GIL in the simulation can be customized according to the actual equipment, while the workload of obtaining the fingerprint database through actual experiments is very heavy for different types of equipment. Through experimental verification, this paper selects 12 typical locations of PD sources in the GIL experimental tank for testing. The average localization error is 10.58mm.
机译:随着气体绝缘传输线(GIL)的广泛使用,在其运行过程中发生的局部放电(PD)现象是其绝缘状态恶化的主要原因之一。因此,GIL中PD的检测和定位在确保设备安全稳定运行中起着重要作用。目前,GIL的PD定位方法主要有超高频(UHF)方法和超声方法,而这些方法易受机械振动和电磁干扰的影响。光学检测作为一种灵敏有效的PD检测方法,在GIL PD定位领域中很少使用。因此,本文提出了一种基于光学PD仿真和机器学习的GIL PD定位方法。该方法建立的仿真模型在结构,尺寸和传感器布置方面与实际的GIL完全相同,在此执行PD光学仿真实验以建立PD仿真指纹数据库。指纹数据库中的每个指纹对应于PD源位置信息。基于此,采用PSO-SVM机器学习算法将实际的PD指纹与仿真指纹数据库中的指纹进行匹配,以获得定位结果。该方法克服了现有光学指纹定位方法中通过仿真采集大量现场数据来建立指纹数据库的难题。仿真中的GIL结构可以根据实际设备进行定制,而对于不同类型的设备,通过实际实验获得指纹数据库的工作量非常大。通过实验验证,本文选择了GIL实验罐中PD源的12个典型位置进行测试。平均定位误差为10.58mm。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号