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Controlled Comparison of Machine Learning Models for Fault Classification and Localization in Power System Protection

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arxiv 2510.00831 v2 pith:JWHN6FXW submitted 2025-10-01 cs.AI cs.LGeess.SP

Controlled Comparison of Machine Learning Models for Fault Classification and Localization in Power System Protection

classification cs.AI cs.LGeess.SP
keywords modelsacrosslearninglocalizationmachineprotectioncontrolledfault
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The increasing complexity of modern power systems, driven by the integration of inverter-based and distributed energy resources, challenges the reliability of conventional protection schemes and motivates the use of machine learning for protection tasks. However, published results are often difficult to compare because datasets, sensing assumptions, and decision horizons vary across studies. This paper presents a controlled comparison of machine learning models for fault classification (FC) and fault localization (FL) under identical sensing, timing, and validation conditions on a common electromagnetic transient dataset, using decision windows of 10-50 ms to reflect protection-relevant time scales. For FC, the best-performing nonlinear models achieve F1 scores above 0.98 already at 10 ms, while lower-capacity models degrade at shorter horizons but improve with longer windows, indicating that relevant fault-type information is already present in the earliest transient. For FL, the top-performing models reach a stable localization error of about 10 % of normalized line length across all evaluated horizons, while weaker models form a clearly separated second performance tier. Line-resolved analysis shows that localization accuracy varies across grid segments, indicating topology-dependent difficulty rather than insufficient temporal context alone. These findings provide a controlled reference for comparing machine learning models across two protection tasks with fundamentally different information requirements.

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Cited by 1 Pith paper

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  1. PROTECT-90: A Fault Dataset for Power System Protection

    eess.SP 2026-06 unverdicted novelty 6.0

    PROTECT-90 is a new open dataset of 9,022 EMT-simulated short-circuit episodes on a standardized 90 kV double-line topology with machine-readable metadata for benchmarking power system protection methods.