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A data analytic approach to automatic fault diagnosis and prognosis for distribution automation

机译:配电自动化中故障自动诊断和预测的数据分析方法

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摘要

Distribution Automation (DA) is deployed to reduce outages and to rapidly reconnect customers following network faults. Recent developments in DA equipment have enabled the logging of load and fault event data, referred to as ‘pick-up activity’. This pick-up activity provides a picture of the underlying circuit activity occurring between successive DA operations over a period of time and has the potential to be accessed remotely for off-line or on-line analysis. The application of data analytics and automated analysis of this data supports reactive fault management and post fault investigation into anomalous network behavior. It also supports predictive capabilities that identify when potential network faults are evolving and offers the opportunity to take action in advance in order to mitigate any outages. This paper details the design of a novel decision support system to achieve fault diagnosis and prognosis for DA schemes. It combines detailed data from a specific DA device with rule-based, data mining and clustering techniques to deliver the diagnostic and prognostic functions. These are applied to 11kV distribution network data captured from Pole Mounted Auto-Reclosers (PMARs) as provided by a leading UK network operator. This novel automated analysis system diagnoses the nature of a circuit’s previous fault activity, identifies underlying anomalous circuit activity, and highlights indications of problematic events gradually evolving into a full scale circuit fault. The novel contributions include the tackling of ‘semi-permanent faults’ and the re-usable methodology and approach for applying data analytics to any DA device data sets in order to provide diagnostic decisions and mitigate potential fault scenarios.
机译:部署了配电自动化(DA)可以减少停机并在发生网络故障后快速重新连接客户。 DA设备的最新发展使记录负载和故障事件数据成为可能,这被称为“拾取活动”。该拾取活动提供了一段时间内连续DA操作之间发生的底层电路活动的图片,并且有可能被远程访问以进行离线或在线分析。数据分析和此数据的自动分析的应用程序支持反应式故障管理以及对异常网络行为的故障后调查。它还支持预测功能,这些功能可以识别潜在的网络故障何时发生,并提供机会提前采取措施以减少中断。本文详细介绍了一种新颖的决策支持系统的设计,该系统可以实现DA方案的故障诊断和预测。它将来自特定DA设备的详细数据与基于规则的数据挖掘和群集技术相结合,以提供诊断和预后功能。这些数据适用于英国领先的网络运营商提供的从立式自动重合闸(PMAR)捕获的11kV配电网络数据。这种新颖的自动分析系统可以诊断电路先前故障活动的性质,识别潜在的异常电路活动,并突出显示逐渐发展为全面电路故障的问题事件的迹象。这些新颖的贡献包括解决“半永久性故障”以及将数据分析应用于任何DA设备数据集的可重用方法论和方法,以便提供诊断决策并减轻潜在的故障情况。

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