A Hybrid Submodular Optimization Approach to Controlled Islanding with Post-Disturbance Stability Guarantees
Luyao Niu, Dinuka Sahanbandu, Andrew Clark, Radha Poovendran

TL;DR
This paper introduces a hybrid submodular optimization method for controlled power system islanding that guarantees post-disturbance stability and is computationally efficient for large-scale systems.
Contribution
It develops a novel hybrid submodular and matroid framework for stability-aware islanding, with an efficient local search algorithm and proven optimality bounds.
Findings
Outperforms baseline in cost minimization across multiple test systems.
Scales efficiently to large systems like Polish 2383-bus.
Provides stability guarantees post-disturbance.
Abstract
Disturbances may create cascading failures in power systems and lead to widespread blackouts. Controlled islanding is an effective approach to mitigate cascading failures by partitioning the power system into a set of disjoint islands. To retain the stability of the power system following disturbances, the islanding strategy should not only be minimally disruptive, but also guarantee post-disturbance stability. In this paper, we study the problem of synthesizing post-disturbance stability-aware controlled islanding strategies. To ensure post-disturbance stability, our computation of islanding strategies takes load-generation balance and transmission line capacity constraints into consideration, leading to a hybrid optimization problem with both discrete and continuous variables. To mitigate the computational challenge incurred when solving the hybrid optimization program, we propose the…
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Taxonomy
TopicsIslanding Detection in Power Systems · HVDC Systems and Fault Protection · Power Systems Fault Detection
