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首页> 外文期刊>Journal of systems architecture >Anomaly detection based on random matrix theory for industrial power systems
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Anomaly detection based on random matrix theory for industrial power systems

机译:基于随机矩阵理论的工业电力系统的异常检测

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摘要

The identification of abnormal power consumption state is an important but difficult issue in power consumption. The State Grid Corporation of China's electric energy data acquisition system is only capable of acquiring power consumption big data collected by smart energy meter terminals. In view of this fact, this study presents a method for identifying abnormal power consumption state. First, the spectral distribution of eigenvalues of the covariance matrix of the high-dimensional random matrix of massive volumes of power consumption data is analyzed based on high-dimensional random matrix theory. Then, a power consumption big data-based abnormal power consumption state identification method is proposed based on the statistical properties of random matrices. Finally, simulations are performed based on actual power consumption data from Guizhou Province, China. The simulation results show that the proposed method can not only satisfy urgent requirements of power grids for visualization, timeliness, reliability and security but also provide a new approach for data-driven smart visual monitoring of power consumption.
机译:识别异常功耗状态是功耗中的重要而困难的问题。中国电能数据采集系统的国家电网公司仅能够获取由智能能量计终端收集的功耗大数据。鉴于此事实,本研究提出了一种识别异常功耗状态的方法。首先,基于高维随机矩阵理论,分析了大规模功耗数据的高维随机矩阵的协方差矩阵的特征值的光谱分布。然后,基于随机矩阵的统计特性提出了一种功耗大数据的异常功耗状态识别方法。最后,基于来自中国贵州省的实际功耗数据进行仿真。仿真结果表明,该方法不仅可以满足电网的迫切要求,可用于可视化,及时性,可靠性和安全性,还提供了一种新的数据驱动智能视觉监控功耗的新方法。

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