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Instantaneous Electromechanical Dynamics Monitoring in Smart Transmission Grid

机译:智能电网中的瞬时机电动力学监测

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摘要

Measurement sensors installed in the smart transmission system can acquire big data for electromechanical dynamics monitoring. The time-series data obtained carry information of instantaneous relationship of system oscillation modes with respect to operating conditions. To extract this information, this paper proposes a parallel processed online supervised learning algorithm called k-nearest neighbors “locally weighted linear regression” (KNN-LWLR), which is an extensive combination of two famous machine-learning algorithms: 1) the KNN learning; and 2) LWLR learning. Its mathematical derivation, implementation, parameter tuning, and application to electromechanical oscillation mode prediction are first described. The proposed algorithm is then validated based on an 8-generator 36-node system with the real operations data.
机译:安装在智能传输系统中的测量传感器可以获取大数据,以进行机电动力学监控。所获得的时间序列数据带有系统振荡模式相对于工作条件的瞬时关系信息。为了提取这些信息,本文提出了一种并行处理的在线监督学习算法,称为k近邻``局部加权线性回归''(KNN-LWLR),它是两种著名的机器学习算法的广泛组合:1)KNN学习;和2)LWLR学习。首先描述其数学推导,实现,参数调整及其在机电振荡模式预测中的应用。然后基于具有实际运行数据的8发电机36节点系统对提出的算法进行验证。

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