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Automated Distribution Network Fault Cause Identification With Advanced Similarity Metrics

机译:自动分配网络故障导致高级相似度量标识

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摘要

Distribution network monitoring has the potential to improve service levels by reporting the origin of fault events and informing the nature of remedial action. To achieve this practically, intelligent systems to automatically recognize the cause of network faults could provide a data driven solution, however, these usually require a large amount of examples to learn from, making their implementation burdensome. Furthermore, the choice of input to such a system in order to make accurate classifications is not always clear. In response to this challenge, this paper contributes a means of using minimal amounts of historical fault data to infer fault cause from substation current data through a novel structural similarity metric applied to the associated power quality waveform. This approach is demonstrated along with disturbance context similarity assessment on an industrially relevant benchmark data set where it is shown to provide an improvement in classification accuracy over comparable techniques.
机译:分销网络监控有可能通过报告故障事件的起源并告知补救措施的性质来改善服务水平。为了实现这一实际上,智能系统自动识别网络故障的原因可以提供数据驱动的解决方案,但是,这些通常需要大量的例子来学习,从而使其实现繁重。此外,选择对这样一个系统的输入,以便做出准确的分类并不总是清晰的。响应于此挑战,本文贡献了使用最小量的历史故障数据来通过应用于相关电能质量波形的新结构相似度量来推断出从变电站电流数据推断出故障原因的方法。这种方法在工业相关的基准数据集上展示了扰动上下文相似性评估,其中示出了通过可比较技术提供了改进的分类精度。

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