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首页> 外文期刊>Journal of Modern Power Systems and Clean Energy >Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies
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Data-driven failure diagnosis in transmission protection system with multiple events and data anomalies

机译:具有多个事件和数据异常的传输保护系统中的数据驱动故障诊断

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To guarantee the reliable power supply, the expected operation of all the components in the power system is critical. Distance protection system is primarily responsible of isolating the faulty section from the healthy part of the grid. Failure in protection devices can result in multiple conflicting alarms at the power grid operation center and complex events analysis to manually find the root cause of the observed system state. If not handled in time, it may lead to the propagation of the faults/failures to the adjacent transmission lines and components. With availability of the synchronized measurements from phasor measurement units (PMUs), real-time system monitoring and automated failure diagnosis is feasible. With multiple adverse events and possible data anomalies, the complexity of the problem will be escalated. In this paper, a PMU based algorithm is presented and discussed to detect the root cause of the failure in transmission protection system based on the observed state, e.g. multiple line tripping, breaker failures. The failure diagnosis algorithm is further enhanced to come up with the fully functional version of the failure diagnosis tool, which is tailored for the cases in which the PMU anomalies are present. In the developed algorithm the validity of the PMU data is critical; however, such causes as communication errors or cyber-attacks might lead to the PMU data anomalies. This issue is well-addressed in this paper and some major types of anomaly detection methods suitable for PMU data are discussed. Results show that the ensemble approach has some distinct advantages in data anomaly detection compared to the previously used standalone algorithms. Additionally, the enhanced failure diagnosis method is developed to clean the inaccurate data in case of the anomaly in measured voltage magnitudes. Finally, both original and enhanced versions of the tool are tested on 96-bus test system using the real-time OPAL-RT simulator. The results show the accuracy of the enhanced tool and its advantages over the primary version of the tool.
机译:为了保证可靠的电源供应,电源系统中所有组件的预期运行至关重要。距离保护系统主要负责将故障部分与电网的健康部分隔离开。保护设备的故障可能导致电网运营中心出现多个冲突的警报,并进行复杂的事件分析以手动找到所观察到的系统状态的根本原因。如果未及时处理,则可能导致故障/故障传播到相邻的传输线和组件。利用相量测量单元(PMU)的同步测量功能,实时系统监视和自动故障诊断是可行的。由于存在多个不良事件和可能的数据异常,问题的复杂性将逐步提高。在本文中,提出并讨论了一种基于PMU的算法,该算法可根据观察到的状态(例如:多次线路跳闸,断路器故障。故障诊断算法得到进一步增强,以提供故障诊断工具的完整功能版本,该工具针对存在PMU异常的情况而量身定制。在开发的算法中,PMU数据的有效性至关重要。但是,通信错误或网络攻击等原因可能导致PMU数据异常。该问题在本文中得到了很好的解决,并讨论了一些适用于PMU数据的主要类型的异常检测方法。结果表明,与以前使用的独立算法相比,集成方法在数据异常检测中具有一些明显的优势。另外,开发了增强的故障诊断方法,以在测量电压幅度异常的情况下清除不准确的数据。最后,使用实时OPAL-RT模拟器在96总线测试系统上测试了该工具的原始版本和增强版本。结果显示了增强工具的准确性及其相对于主要版本的优势。

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