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An Observability-based Approach to Extract Spatiotemporal Patterns from Power System Koopman Mode Analysis

机译:基于可观察性的电力系统库普曼模式分析中时空模式提取方法

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摘要

Koopman mode analysis has shown considerable promise for the analysis and characterization of global behavior of power system transient processes recorded using wide-area sensors. In this paper, a framework for feature extraction and mode decomposition of spatiotemporal data based on the Koopman operator is presented. A physical interpretation of the Koopman modes as columns of a matrix of observability measures is derived, and criteria for selecting a reduced set of Koopman modes are proposed. This approach allows to selectively isolate and quantify the dominant physical mechanisms underlying the recorded power system data, and it can be used for wide-area monitoring and assessment. Simulation results on both simulated and measured data show that the method can accurately identify the dominant spatial patterns or shapes and temporal patterns associated with specific system behavior.
机译:Koopman模式分析显示了对使用广域传感器记录的电力系统暂态过程的整体行为进行分析和表征的巨大希望。本文提出了一种基于Koopman算子的时空数据特征提取和模式分解框架。推导了作为可观察性度量矩阵的列的库普曼模式的物理解释,并提出了选择简化的库普曼模式集的标准。这种方法可以有选择地隔离和量化记录的电力系统数据背后的主要物理机制,并且可以用于广域监视和评估。对仿真数据和实测数据的仿真结果表明,该方法可以准确识别与特定系统行为相关的主要空间模式或形状和时间模式。

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