Coherency-Constrained Spectral Clustering for Power Network Reduction

IF 3.3 Q3 ENERGY & FUELS IEEE Open Access Journal of Power and Energy Pub Date : 2025-02-04 DOI:10.1109/OAJPE.2025.3538619
Mario D. Baquedano-Aguilar;Sean Meyn;Arturo Bretas
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Abstract

This paper presents a methodology for reducing the complexity of large-scale power network models using spectral clustering, aggregation of electrical components, and cost function approximation. Two approaches are explored using unconstrained and constrained spectral clustering to determine areas for effective system reduction. Once the system areas are determined, both loads and generators by type are aggregated, and their new cost function is approximated through polynomial curve-fitting or statistical methods. The performance of reduced networks is evaluated in terms of their ability to follow the true daily cost of the original system over a 24-hour period considering a set of several days. Two test systems are taken as test beds. Application of the methodology to a modified version of the IEEE 39-bus system reduces it from 17 generators to a 4-bus system and 9 generators with about 93% of accuracy. Similarly, the IEEE 118-bus system is reduced from 19 generators to a 3-bus system with three aggregated units achieving over 99% of accuracy. These findings address scalability challenges and enhance accuracy for high and mid-loading level conditions, and by aggregating thermal units with similar cost functions.
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CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
期刊最新文献
Coherency-Constrained Spectral Clustering for Power Network Reduction Advancing Coherent Power Grid Partitioning: A Review Embracing Machine and Deep Learning Information for authors Synergistic Meta-Heuristic Adaptive Real-Time Power System Stabilizer (SMART-PSS) IEEE Open Access Journal of Power and Energy Publication Information
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