基于优化 KNN 的分布式发电系统孤岛检测,利用基于 S 变换的特征

Manohar Mishra, Chinmoy Kumar Patra, Pratyush Kumar Muni, D. A. Gadanayak, Tanmoy Parida
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引用次数: 0

摘要

提出了一种基于分布式能源的综合配电系统孤岛检测方法。该方法利用s变换和一个集合k近邻模型(KNN)。首先,采用s变换提取系统信号的特征特征,有效捕获孤岛事件期间发生的暂态功率变化。随后,建立了KNN模型,将系统状态分为孤岛状态和非孤岛状态。为了达到较高的准确率和泛化性能,采用贝叶斯优化算法对KNN模型进行了优化。在一个模拟的der集成配电系统中对该方法进行了评估,并考虑了各种场景,结果证明了该方法在准确检测孤岛事件方面的有效性。该方法为综合配电系统孤岛检测提供了一种可靠、高效的解决方案,对保证电力系统的稳定可靠运行具有重要意义。利用MATLAB软件进行建模和仿真。
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Islanding detection in distributed generation system based on optimized KNN utilizing S-transform based features
This paper presents an islanding detection approach for integrated distribution systems that incorporate distributed energy resources (DERs). The approach utilizes the S-transform and an ensemble K-Nearest Neighbor model (KNN). Initially, the S-transform is employed to extract the characteristic features of the system signals, effectively capturing the transient power variations that occur during islanding events. Subsequently, a KNN model is developed to classify the system states as either islanding or non-islanding. To achieve high accuracy and generalization performance, the KNN model is optimized using a Bayesian optimization algorithm. The proposed approach is evaluated on a simulated DER-integrated distribution system, considering various scenarios, and the results demonstrate its effectiveness in accurately detecting islanding events. This approach provides a reliable and efficient solution for islanding detection in integrated distribution systems (IDS), playing a crucial role in ensuring the stability and reliability of power systems. The modeling and simulation are conducted using MATLAB software.
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