SHEN Hao, HE Chuan, ZHANG Honghao, et al. A Data-driven Method for Identifying Similarity in Transmission Sections With Embedded Multi-scale Key Feature Information[J]. 2025, (23): 9140-9151.
DOI:
SHEN Hao, HE Chuan, ZHANG Honghao, et al. A Data-driven Method for Identifying Similarity in Transmission Sections With Embedded Multi-scale Key Feature Information[J]. 2025, (23): 9140-9151. DOI: 10.13334/j.0258-8013.pcsee.241728.
A Data-driven Method for Identifying Similarity in Transmission Sections With Embedded Multi-scale Key Feature Information
摘要
实现未来输电断面与相似历史断面的辨识,可以为未来输电断面控制措施的制定提供指导,对保障电力系统的安全稳定运行具有重大意义。然而,现有方法对断面关键特征筛选及样本相似性度量方法选取的考虑还不充分,因此,该文提出一种嵌入多尺度关键特征信息的改进模糊C均值(fuzzy C-means,FCM)聚类方法进行断面相似性辨识。首先,为得到更多方面的断面特征样本,建立分层决策模型,筛选及改进电网基础特征量;然后,提出考虑热稳定和暂态功角稳定约束的断面极限传输容量(total transfer capability,TTC)计算模型求取TTC;其次,提出综合考虑样本形态与数值两类特征的自适应FCM聚类用于断面相似性辨识,通过多指标评价体系自适应选定最优聚类个数,提升算法客观性,通过引入余弦距离考虑样本形态特征,提升算法可信性;最后,以IEEE 39节点系统和某地实际电网为例,验证所提方法的有效性。
Abstract
Realizing the similarity identification between future and historical transmission sections can provide guidance for the formulation of future transmission section control measures
which is of great significance for ensuring the safe and stable operation of the power system. However
the existing methods fail to fully consider the selection of key sectional features and sample similarity measurement methods. Therefore
this paper propose an improved fuzzy C-means (FCM) clustering algorithm embedded with multi-scale key feature information for sections similarity identification. First
in order to obtain more sectional feature samples
this paper establishes a hierarchical decision model to filter and improve the basic feature quantities of the power grid. Then
an optimized total transfer capability (TTC) calculation model considering thermal stability and transient power angle stability constraints is proposed to obtain the TTC. Subsequently
an adaptive FCM clustering algorithm considers both sample morphology and numerical features is proposed. With the aim of improving the effectiveness and objectivity of the algorithm
the optimal number of clusters is adaptively selected by the multi-indicator evaluation method
and the cosine distance is introduced to consider the sample morphological features. Finally
the effectiveness of the proposed method is verified by taking the IEEE 39-bus system and a local actual power grid as examples.