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arxiv: 2308.07867 · v4 · pith:7SK6WJIPnew · submitted 2023-08-15 · 📡 eess.SY · cs.LG· cs.SY

Learning Power Flow with Confidence: A Probabilistic Guarantee Framework for Voltage Risk

classification 📡 eess.SY cs.LGcs.SY
keywords learningriskvoltagepowerconfidenceflowachievesacpf
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The absence of formal performance guarantees in machine learning (ML) has limited its adoption for safety-critical power system applications, where confidence and interpretability are as vital as accuracy. In this work, we present a probabilistic guarantee for power flow learning and voltage risk estimation, derived through the framework of Gaussian Process (GP) regression. Specifically, we establish a bound on the expected estimation error that connects the GP's predictive variance to confidence in voltage risk estimates, ensuring statistical equivalence with Monte Carlo-based ACPF risk quantification. To enhance model learnability in the low-data regime, we first design the Vertex-Degree Kernel (VDK), a topology-aware additive kernel that decomposes voltage-load interactions into local neighborhoods for efficient large-scale learning. Building on this, we introduce a network-swipe active learning (AL) algorithm that adaptively samples informative operating points and provides a principled stopping criterion without requiring out-of-sample validation. Together, these developments mitigate the principal bottleneck of ML-based power flow, its lack of guaranteed reliability, by combining data efficiency with analytical assurance. Empirical evaluations across IEEE 118-, 500-, and 1354-bus systems confirm that the proposed VDK-GP achieves mean absolute voltage errors below 1E-03 p.u., reproduces Monte Carlo-level voltage risk estimates with 15x fewer ACPF computations, and achieves over 120x reduction in evaluation time while conservatively bounding violation probabilities.

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  1. Stability-Constrained AC Optimal Power Flow--A Gaussian Process-Based Approach

    math.OC 2025-07 unverdicted novelty 6.0

    A Gaussian Process surrogate for the stability exponent of generator dynamics is integrated into AC Optimal Power Flow to produce both cost-optimal and dynamically stable operating points.