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Towards data-driven multi-stage OPF
Publikationstyp
Conference Paper
Date Issued
2025-06
Sprache
English
Citation
IEEE PowerTech 2025
Contribution to Conference
Publisher DOI
Scopus ID
Publisher
IEEE
ISBN
979-8-3315-4398-3
979-8-3315-4397-6
The operation of large-scale power systems is usually scheduled ahead via numerical optimization. However, this requires models of grid topology, line parameters, and bus specifications. Classic approaches first identify the network topology, i.e., the graph of interconnections and the associated impedances. The power generation schedules are computed by solving a multi-stage optimal power flow (OPF) problem built around the model. In this paper, we explore the prospect of data-driven approaches to multi-stage optimal power flow. Specifically, we leverage recent findings from systems and control to bypass the identification step and to construct the optimization problem directly from data. We illustrate the performance of our method on a 118-bus system and compare it with the classical identification-based approach.
Subjects
data-driven control
optimal power flow
system identification
Willems' fundamental lemma
DDC Class
600: Technology