A review of data-driven and probabilistic algorithms for detection purposes in local power systems

Sylvie Koziel, P. Hilber, R. Ichise
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引用次数: 2

Abstract

Power grid operators use data to guide their asset management decisions. However, as the complexity of collected data increases with time and amount of sensors, it becomes more difficult to extract relevant information. Therefore, methods that perform detection tasks need to be developed, especially in distribution systems, which are impacted by distributed generation and smart appliances. Until now, methods employed in local power systems for detection purposes using data with low sampling rate, have not been reviewed. This paper provides a literature review focused on anomaly detection, fault location, and load disaggregation. We analyze the methods in terms of their type, data requirements and ways they are implemented. Many belong to the machine learning field. We find that some methods are typically combined with others and perform specific tasks, while other methods are more ubiquitous and often used alone. Continued research is needed to identify how to guide the choice of methods, and to investigate combinations of methods that have not been studied yet.
基于数据驱动和概率算法的局部电力系统检测综述
电网运营商使用数据来指导他们的资产管理决策。然而,随着采集数据的复杂性随着时间和传感器数量的增加而增加,提取相关信息变得更加困难。因此,需要开发执行检测任务的方法,特别是在受分布式发电和智能设备影响的配电系统中。到目前为止,在当地电力系统中使用低采样率数据进行检测的方法尚未得到审查。本文对异常检测、故障定位和负载分解等方面的研究进行了综述。我们根据方法的类型、数据需求和实现方式来分析这些方法。很多都属于机器学习领域。我们发现有些方法通常与其他方法结合并执行特定任务,而其他方法则更为普遍且经常单独使用。需要继续进行研究,以确定如何指导方法的选择,并调查尚未研究过的方法组合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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