Phasor measurement units (PMUs) create ample real-time monitoring opportunities for modern power systems. Among them, line outage detection and identification remains a crucial but challenging task. Current works on outage identification succeed in full PMU deployment and single-line outages. Performance however degrades for multiple-line outage with partial system observability. We propose a novel framework of multiple-line outage identification using partial nodal voltage measurements. Using alternating current (AC) power flow model, phase angle signatures of outages are extracted and used to group lines into minimal diagnosable clusters. Identification is then formulated into an underdetermined sparse regression problem solved by lasso. Tested on IEEE 39-bus system with 25% and 50% PMU coverage, the proposed identification method is 93% and 80% accurate for single- and double-line outages. Our study suggests that the AC power flow is better at capturing outage patterns and sacrificing some precision could yield substantial improvement in identification accuracy. These findings could contribute to the development of future control schemes that help power systems resist and recover from outage disruptions in real time.
翻译:Phasor测量单位(PMUs)为现代电力系统创造了充足的实时监测机会,其中,线流检测和识别仍然是一项关键但具有挑战性的任务。当前有关断线识别的工作在全PMU部署和单线断流中取得了成功。但是,由于局部系统可视性,多线断流的性能会下降。我们提议了一个使用局部节点电压测量法进行多线断层识别的新框架。使用交替当前电流模型,抽取断线的相角信号,并将其用于最小的可辨分解集群。然后,将识别结果发展成一个不确定的稀薄回归问题,由lasso解决。在IEEE39公共汽车系统上测试了25%和50%的PMU覆盖率,拟议的识别方法对单线和双线断线断层的精确度为93%和80%。我们的研究显示,通电流在捕捉断层模式和牺牲某些精确度方面比较好,可以大大改进识别准确性。这些发现结果有助于制定未来的控制计划,帮助电力系统抵抗和从实时断裂中恢复。