Coherency Analysis in Nonlinear Heterogeneous Power Networks: A Blended Dynamics Approach
Yixuan Liu, Yingzhu Liu, Pengcheng You

TL;DR
This paper extends the blended dynamics approach to analyze power system coherency, revealing how heterogeneous nonlinear machines can exhibit synchronized frequency responses despite disturbances, aiding model reduction and control.
Contribution
It introduces a novel blended dynamics framework for power networks, providing bounds and conditions for coherence in heterogeneous, nonlinear, and disturbed systems.
Findings
Frequency responses of coherent machines can be approximated by blended dynamics.
High network connectivity or low disturbance variation enhances coherence.
Frequencies follow blended dynamics trajectories even without system settling.
Abstract
Power system coherency refers to the phenomenon that machines in a power network exhibit similar frequency responses after disturbances, and is foundational for model reduction and control design. Despite abundant empirical observations, the understanding of coherence in complex power networks remains incomplete where the dynamics could be highly heterogeneous, nonlinear, and increasingly affected by persistent disturbances such as renewable energy fluctuations. To bridge this gap, this paper extends the blended dynamics approach, originally rooted in consensus analysis of multi-agent systems, to develop a novel coherency analysis in power networks. We show that the frequency responses of coherent machines coupled by nonlinear power flow can be approximately represented by the blended dynamics, which is a weighted average of nonlinear heterogeneous nodal dynamics, even under…
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Taxonomy
TopicsPower System Optimization and Stability · Nonlinear Dynamics and Pattern Formation · Optimal Power Flow Distribution
