Exploiting sparse structures and synergy designs to advance situational awareness of electrical power grid
Shimiao Li

TL;DR
This paper introduces a novel Physics-ML Synergy framework that enhances the robustness and efficiency of power grid situational awareness tools by integrating sparse optimization, lightweight machine learning, and physics-based modeling.
Contribution
It proposes a new paradigm combining physics-based and data-driven methods with sparse optimization to improve robustness and scalability in power grid analysis.
Findings
Sparse optimization improves robustness to data errors.
Lightweight ML models enhance scalability and prediction accuracy.
Physics-ML integration strengthens resilience against cyber threats.
Abstract
The growing threats of uncertainties, anomalies, and cyberattacks on power grids are driving a critical need to advance situational awareness which allows system operators to form a complete and accurate picture of the present and future state. Simulation and estimation are foundational tools in this process. However, existing tools lack the robustness and efficiency required to achieve the level of situational awareness needed for the ever-evolving threat landscape. Industry-standard (steady-state) simulators are not robust to blackouts, often leading to non-converging or non-actionable results. Estimation tools lack robustness to anomalous data, returning erroneous system states. Efficiency is the other major concern as nonlinearities and scalability issues make large systems slow to converge. This thesis addresses robustness and efficiency gaps through a dual-fold contribution. We…
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Taxonomy
TopicsSmart Grid and Power Systems · Power Systems and Technologies
