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Power System Transient Stability Assessment Based on Big Data and the Core Vector Machine

机译:基于大数据和核矢量机的电力系统暂态稳定评估

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摘要

In this paper, an online power system transient stability assessment (TSA) problem is mapped as a two-class classification problem and a novel data mining algorithm the core vector machine (CVM) is proposed to solve the problem based on phasor measurement units (PMUs) big data. First of all, an offline training, online application framework is proposed, which contained four sub-steps, namely features selection, offline training, online application, and assessment evaluation. First, 24 features are selected to present the system status. Then in the offline training procedure, the PMU big data is generated by time domain simulation, and a CVM model is trained and tested. In the online application procedure, an interface between PMU data center and feature calculation program is set up to collect real time specific PMU big data and the CVM trained is applied to the TSA problem. Last but not least, the evaluation indices are calculated. Compared with other support vector machines, the proposed CVM based assessment algorithm has the higher precision, meanwhile, it has the least time consumption and space complexity. As long as online PMU big data are received, TSA can be done simultaneously. Case studies on the IEEE New England 39-bus system, and real systems in China and the U.S., exhibit the speed and effectiveness of the proposed algorithm.
机译:本文将在线电力系统暂态稳定评估(TSA)问题映射为两类分类问题,并提出了一种新的数据挖掘算法-核矢量机(CVM)以解决基于相量测量单元(PMU)的问题。 ) 大数据。首先,提出了离线培训在线应用框架,该框架包含四个子步骤,即特征选择,离线培训,在线应用和评估评估。首先,选择24个功能来显示系统状态。然后在离线训练过程中,通过时域仿真生成PMU大数据,并训练和测试CVM模型。在在线申请程序中,建立了PMU数据中心与特征计算程序之间的接口,以收集实时的特定PMU大数据,并将经过培训的CVM应用于TSA问题。最后但并非最不重要的是,计算评估指标。与其他支持向量机相比,基于CVM的评估算法具有较高的精度,同时具有最小的时间消耗和空间复杂度。只要接收到在线PMU大数据,TSA就可以同时完成。 IEEE新英格兰39总线系统以及中国和美国的实际系统的案例研究显示了该算法的速度和有效性。

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