A multi-layer constrained spectral k-embedded clustering methodology approach for intelligent partitioning of power grid to enhance resiliency in transmission networks

E Priya, J Preetha Roselyn
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Abstract

The intentional controlled islanding by intelligent partitioning of the power grid is considered as essential to protect the grid from cascading events, faults, and High Impact Low Probability (HILP) events. To enhance the resilience, stability, and security of the power grid, the proposed model in this paper intentionally divides the affected power network into islands. This paper presents an intelligent partitioning approach to create an islanding solution through multilayer graphs using spectral clustering. The controlled islanding algorithm uses a multi-criteria objective function that considers the correlation coefficients among the frequency of the buses and minimal disturbances in the real and reactive power. The proposed control technique is implemented in two phases. The first phase employs correlation coefficients between frequency of the buses and modularity clustering to identify clusters of coherent buses. During the second stage, all nodes are categorised into groups using Multi-level constrained Spectral Clustering (ML-CSC) to determine the solution for Intentional controlled Islanding that satisfies bus coherency with the minimum level of disruptions to real and reactive power flows across the boundaries. The proposed algorithm for resolving the generator coherency issue and an intelligent islanding solution is demonstrated by simulation experiments conducted on an IEEE 39-bus transmission test system developed in DIGSILENT Powerfactory version 2023. The MATLAB version R2023a is used to construct the ML-CSC control method. The results demonstrated that the proposed ML-CSC algorithm substantially impacts the functioning of the power system, enabling the formation of intelligent islanding during abnormal conditions. Also, the results clearly show that instead of using single-layer spectral clustering, the multi-layer spectral clustering yields a better intentional islanding solution with minimum power flow mismatch which enhances the transient stability of the islands.
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用于电网智能分区的多层约束频谱 K 嵌入聚类方法,以增强输电网络的复原力
通过对电网进行智能分区来实现有意控制的孤岛化,对于保护电网免受连锁事件、故障和高影响低概率(HILP)事件的影响至关重要。为了增强电网的恢复能力、稳定性和安全性,本文提出的模型有意将受影响的电网划分为若干个孤岛。本文提出了一种智能分区方法,通过使用频谱聚类的多层图来创建孤岛解决方案。受控孤岛算法采用多标准目标函数,该函数考虑了母线频率之间的相关系数以及实际和无功功率中的最小干扰。建议的控制技术分两个阶段实施。第一阶段利用母线频率之间的相关系数和模块化聚类来识别一致性母线群。在第二阶段,使用多级约束频谱聚类(ML-CSC)将所有节点归类,以确定有意控制孤岛的解决方案,该方案既能满足总线一致性,又能将跨边界的实际和无功功率流的干扰程度降至最低。通过在 DIGSILENT Powerfactory 2023 版中开发的 IEEE 39 总线输电测试系统上进行仿真实验,证明了所提出的解决发电机一致性问题的算法和智能孤岛解决方案。MATLAB R2023a 版本用于构建 ML-CSC 控制方法。结果表明,所提出的 ML-CSC 算法对电力系统的运行产生了重大影响,能够在异常情况下形成智能孤岛。此外,结果还清楚地表明,与使用单层频谱聚类相比,多层频谱聚类能产生更好的智能孤岛解决方案,将功率流失配降至最低,从而增强孤岛的暂态稳定性。
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