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arxiv: 2510.19608 · v3 · pith:PCCABBIDnew · submitted 2025-10-22 · 📡 eess.SY · cs.SY

Optimal Kron-based Reduction of Networks (Opti-KRON) for Three-phase Distribution Feeders

classification 📡 eess.SY cs.SY
keywords reductionnetworkdistributionfeedersnetworksoptimalreducedvoltage
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This paper presents a novel structure-preserving, Kron-based reduction framework for unbalanced distribution feeders. The method aggregates electrically similar nodes within a mixed-integer optimization (MIP) problem to produce reduced networks that optimally reproduce the voltage profiles of the original full network. To overcome computational bottlenecks of MIP formulations, we propose an exhaustive-search formulation to identify optimal aggregation decisions while enforcing voltage margin limits. The proposed exhaustive network reduction algorithm is parallelizable on GPUs, which enables scalable network reduction. The resulting reduced networks approximate the full system's voltage profiles with low errors and are suitable for steady-state analysis and optimal power flow studies. The framework is validated on two real utility distribution feeders with 5,991 and 8,381 nodes. The reduced models achieve up to 90% and 80% network reduction, respectively, while the maximum voltage-magnitude error remains below 0.003 p.u. Furthermore, on a 1000-node version of the network, the GPU-accelerated reduction algorithm runs up to 15x faster than its CPU-based counterpart.

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  1. Data-Driven Power Flow for Radial Distribution Networks with Sparse Real-Time Data

    eess.SY 2026-04 unverdicted novelty 6.0

    A data-driven power flow method for radial networks achieves voltage magnitude predictions with error below 0.001 p.u. using historical data and optimal sensor placement with only 25% of locations instrumented.