基于Elman神经网络的大型汽轮发电机定子绕组匝间故障智能诊断

Xiao-qiang Dang, N. Tai, Ji-chun Liu
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引用次数: 5

摘要

汽轮发电机定子匝间短路是一种常见的严重故障,由于缺乏有效的保护措施,会给电力系统的安全带来隐患。提出了发电机运行状态在线监测与智能非线性识别技术相结合的方法,以及时发现故障,解决保护功能不佳的问题。将纵向零序电压和故障相电流作为定子绕组匝间短路的稳定故障特征进行分析,建立了其数学模型,并引入了具有较好实时动态数据处理能力的Elman神经网络进行故障识别。利用某大型汽轮发电机的一般参数,计算了其运行中定子绕组匝间短路时的稳定故障特征,并采用训练好的Elman神经网络进行辨识。实例表明,基于合理的故障特征组合,Elman网络能有效识别发电机定子匝间短路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Stator winding's inter-turn fault intelligent diagnosis in large turbo- generator by Elman neural network
Turbo-generator stator's inter-turn short is a usual serious fault, there would have hidden big trouble for electric power system's safety due to lack of efficient protection. On-line monitoring generator's operate condition combined intelligence non-line identify technology is presented to observe fault in time instead of poor function of protection. Longitudinal zero-sequence voltage and fault phase's current are analysis as stator winding's inter-turn short's stable fault characters, mathematical model of which are build, Elman neural network which do well for dynamic data in real time are introduced to identify the fault. A large turbo-generator's general parameters are used for calculate its stable fault characters during stator winding's inter-turn short occur in operation, and identification are performed by trained Elman neural network followed. Example indicate that the Elman network could efficiently identify generator stator's inter-turn short based on rational fault characters combine.
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