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Benefits of empirical orthogonal functions in pattern recognition applied to vulnerability assessment

机译:经验正交函数在模式识别中应用于脆弱性评估的好处

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One of the main challenges of power system vulnerability assessment is to handle adequate tools capable of analyzing huge volumes of data in real time. For instance, phasor measurement units (PMUs) offer lots of dynamic time series data regarding phasor electric signals. This dynamic data can be analyzed via signal processing tools, such as Fourier Transform, in order to obtain patterns that alert about possible system stress. However, due to the specific dynamic behavior of post-contingency electric signals, they do not exactly correspond to pure periodic signals. Thus, applying classical Fourier-related transforms might not allow obtaining relevant patterns from these types of signals. In this connection, the present paper proposes to use a well-proven time series data mining technique, called empirical orthogonal functions (EOFs), instead of Fourier-related transforms. EOFs better adapt to the peculiar shape of the post-contingency system variables, which allows getting a better pattern recognition, and so a better vulnerability assessment. With the aim of showing the benefits of EOF, a fair comparison of this data mining tool with Discrete Fourier Transform (DFT) is presented in this paper via three different signal examples.
机译:电力系统漏洞评估的主要挑战之一是处理能够实时分析大量数据的适当工具。例如,相量测量单元(PMU)提供了大量有关相量电信号的动态时间序列数据。可以通过信号处理工具(例如,傅立叶变换)来分析此动态数据,以便获得可警告可能的系统压力的模式。但是,由于意外后电信号的特定动态行为,它们并不完全对应于纯周期性信号。因此,应用经典的与傅立叶相关的变换可能不允许从这些类型的信号中获得相关的模式。在这方面,本论文提出使用一种成熟的时间序列数据挖掘技术,称为经验正交函数(EOFs),而不是与傅立叶相关的变换。 EOF更好地适应了意外事件后系统变量的特殊形状,从而可以更好地识别模式,从而更好地进行漏洞评估。为了展示EOF的好处,本文通过三个不同的信号示例对这种数据挖掘工具与离散傅里叶变换(DFT)进行了公平比较。

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