Flexibility Characterization of Sustainable Power Systems in Demand Space: A Data-Driven Inverse Optimization Approach
Mohamed Awadalla, Fran\c{c}ois Bouffard

TL;DR
This paper introduces a data-driven inverse optimization method to characterize power system flexibility in demand space, accounting for renewable variability and spatial correlations, aiding system operation and planning.
Contribution
It presents a novel inverse optimization framework that captures spatial correlations and projects uncertainty onto demand space, enhancing flexibility assessment.
Findings
Effectively models spatial correlation of renewable generation and demand.
Projects uncertainty onto loadability sets for better flexibility understanding.
Recasts as a linear optimization problem for computational efficiency.
Abstract
The deepening of the penetration of renewable energy is challenging how power system operators cope with their associated variability and uncertainty. The inherent flexibility of dispathchable assets present in power systems, which is often ill-characterized, is essential in addressing this challenge. Several proposals for explicit flexibility characterization focus on defining a feasible region that secures operations either in generation or uncertainty spaces. The main drawback of these approaches is the difficulty in visualizing this feasibility region when there are multiple uncertain parameters. Moreover, these approaches focus on system operational constraints and often neglect the impact of inherent couplings (e.g., spatial correlation) of renewable generation and demand variability. To address these challenges, we propose a novel data-driven inverse optimization framework for…
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Taxonomy
TopicsSmart Grid Energy Management · Electric Power System Optimization · Integrated Energy Systems Optimization
