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Automatic analysis of Pole Mounted Auto-Recloser data for fault diagnosis and prognosis

机译:自动分析极点安装的自动重合闸数据,以进行故障诊断和预后

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Fault diagnosis is a key part of a control and protection engineer's role to ensure the effective and stable performance of electrical power networks. One challenge is to support the analysis and application of expert judgement to the, often, large data sets generated. To assist engineers with this task and improve network reliability, this research focuses on analysing previous fault activity in order to obtain an early-warning report to assist fault diagnosis and fault prognosis. This paper details the design of an integrated system with a fault diagnosis algorithm utilising available Supervisory Control And Data Acquisition (SCADA) alarm data and 11kV distribution network data captured from Pole Mounted Auto-Reclosers (PMARs) (provided by a leading UK network operator). The developed system will be capable of diagnosing the nature of a circuit's previous fault activity, underlying circuit activity and evolving fault activity and the risk of future fault activity. This will provide prognostic decision support for network operators and maintenance staff.
机译:故障诊断是控制和保护工程师确保电力网络有效稳定运行的关键部分。挑战之一是支持对通常生成的大型数据集进行专家判断的分析和应用。为了帮助工程师完成此任务并提高网络可靠性,本研究着重于分析先前的故障活动,以便获得预警报告,以帮助进行故障诊断和故障预测。本文详细介绍了具有故障诊断算法的集成系统的设计,该算法利用可用的监督控制和数据采集(SCADA)警报数据以及从立杆式自动重合闸(PMAR)捕获的11kV配电网络数据(由英国领先的网络运营商提供) 。开发的系统将能够诊断电路先前故障活动的性质,基础电路活动和不断发展的故障活动以及未来故障活动的风险。这将为网络运营商和维护人员提供预后决策支持。

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