Project 33 · Industrial IoT / Utilities

High-Voltage Fault Classification System

Automated Waveform Classification Feeding Dispatch

Industry
Industrial IoT / Utilities
Services
Signal Processing Machine Learning
TRL
3 → 8
Duration
8 months
Technologies
DSP ML classifiers waveform databases
Classification pipeline
Figure 1 — DSP → ML → SCADA classification flow with corpus.
Fault signatures + confusion matrix
Figure 2 — 4 fault-type signatures + 5×5 confusion matrix.
Explainable classification
Figure 3 — Classification result with feature contributions.
Real-world High-Voltage Fault Classification System installation
Figure 4 — Real-world deployment.

Project background

Distinguishing fault types — phase-to-ground, phase-to-phase, transient vs. sustained — quickly after an event is critical for dispatch decisions. The client wanted automated classification rather than relying on engineer interpretation.

Challenge

Training on an imbalanced set of real fault waveforms, avoiding overfitting to site-specific noise, and producing classifications fast enough to feed dispatch workflows.

Approach & solution

We combined DSP feature extraction with ML classification, trained against a curated waveform dataset. Models were calibrated per substation where needed, with a fallback to generalized models for new sites. Every classification ships with its supporting features for engineer review.

Results & benefits

Classification accuracy now exceeds manual triage speed with comparable correctness on common fault types. Dispatchers use the output as a starting point rather than generating it themselves, freeing engineering attention for harder cases.

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