Identifying Irregular Power Usage by Turning Predictions into Holographic Spatial Visualizations
Patrick Glauner, Niklas Dahringer, Oleksandr Puhachov, Jorge Augusto, Meira, Petko Valtchev, Radu State, Diogo Duarte

TL;DR
This paper presents a novel system combining machine learning and expert-driven holographic visualizations to improve detection of non-technical power losses, like electricity theft, in large-scale power grids.
Contribution
It introduces a new framework that integrates automated NTL classification with interactive holographic visualizations for expert decision-making.
Findings
Effective classification of NTL using tailored machine learning models.
Visualization method enhances expert understanding and decision accuracy.
System successfully deployed in real-world power grid scenario.
Abstract
Power grids are critical infrastructure assets that face non-technical losses (NTL) such as electricity theft or faulty meters. NTL may range up to 40% of the total electricity distributed in emerging countries. Industrial NTL detection systems are still largely based on expert knowledge when deciding whether to carry out costly on-site inspections of customers. Electricity providers are reluctant to move to large-scale deployments of automated systems that learn NTL profiles from data due to the latter's propensity to suggest a large number of unnecessary inspections. In this paper, we propose a novel system that combines automated statistical decision making with expert knowledge. First, we propose a machine learning framework that classifies customers into NTL or non-NTL using a variety of features derived from the customers' consumption data. The methodology used is specifically…
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