Introducing machine learning for power system operation support
Benjamin Donnot (TAU, LRI), Isabelle Guyon (LRI, TAU), Marc Schoenauer, (TAU, LRI), Patrick Panciatici, Antoine Marot

TL;DR
This paper presents a hybrid machine learning approach using deep learning to assist power grid dispatchers by predicting remedial actions for network reconfiguration, aiming to enhance security and reduce operational costs.
Contribution
It introduces a novel hybrid machine learning method that mimics human decision-making for power grid reconfiguration, tested with actual simulators for safety.
Findings
Effective in predicting remedial actions from historical data
Hybrid approach improves decision accuracy and safety
Potential to reduce operational costs and enhance grid security
Abstract
We address the problem of assisting human dispatchers in operating power grids in today's changing context using machine learning, with theaim of increasing security and reducing costs. Power networks are highly regulated systems, which at all times must meet varying demands of electricity with a complex production system, including conventional power plants, less predictable renewable energies (such as wind or solar power), and the possibility of buying/selling electricity on the international market with more and more actors involved at a Europeanscale. This problem is becoming ever more challenging in an aging network infrastructure. One of the primary goals of dispatchers is to protect equipment (e.g. avoid that transmission lines overheat) with few degrees of freedom: we are considering in this paper solely modifications in network topology, i.e. re-configuring the way in which…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Power System Reliability and Maintenance · Electricity Theft Detection Techniques
