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OPFLearnData: Dataset for Learning AC Optimal Power Flow

Publicly accessible License 

The datasets are resulting from OPFLearn.jl, a Julia package for creating AC OPF datasets. The package was developed to provide researchers with a standardized way to efficiently create AC OPF datasets that are representative of more of the AC OPF feasible load space compared to typical dataset creation methods. The OPFLearn dataset creation method uses a relaxed AC OPF formulation to reduce the volume of the unclassified input space throughout the dataset creation process.
The dataset contains load profiles and their respective optimal primal and dual solutions. Load samples are processed using AC OPF formulations from PowerModels.jl. More information on the dataset creation method can be found in our publication, "OPF-Learn: An Open-Source Framework for Creating Representative AC Optimal Power Flow Datasets" and in the package website: https://github.com/NREL/OPFLearn.jl.

Citation Formats

Power Systems Engineering. (2021). OPFLearnData: Dataset for Learning AC Optimal Power Flow [data set]. Retrieved from a56a4501-628a-4cb6-aaf2-1f5a58bf0b8e.
Export Citation to RIS
Joswig-Jones, , Zamzam, , and Baker, . OPFLearnData: Dataset for Learning AC Optimal Power Flow. United States: N.p., 26 Oct, 2021. Web. a56a4501-628a-4cb6-aaf2-1f5a58bf0b8e.
Joswig-Jones, , Zamzam, , & Baker, . OPFLearnData: Dataset for Learning AC Optimal Power Flow. United States. a56a4501-628a-4cb6-aaf2-1f5a58bf0b8e
Joswig-Jones, , Zamzam, , and Baker, . 2021. "OPFLearnData: Dataset for Learning AC Optimal Power Flow". United States. a56a4501-628a-4cb6-aaf2-1f5a58bf0b8e.
@div{oedi_6375, title = {OPFLearnData: Dataset for Learning AC Optimal Power Flow}, author = {Joswig-Jones, , Zamzam, , and Baker, .}, abstractNote = {The datasets are resulting from OPFLearn.jl, a Julia package for creating AC OPF datasets. The package was developed to provide researchers with a standardized way to efficiently create AC OPF datasets that are representative of more of the AC OPF feasible load space compared to typical dataset creation methods. The OPFLearn dataset creation method uses a relaxed AC OPF formulation to reduce the volume of the unclassified input space throughout the dataset creation process.
The dataset contains load profiles and their respective optimal primal and dual solutions. Load samples are processed using AC OPF formulations from PowerModels.jl. More information on the dataset creation method can be found in our publication, "OPF-Learn: An Open-Source Framework for Creating Representative AC Optimal Power Flow Datasets" and in the package website: https://github.com/NREL/OPFLearn.jl.}, doi = {}, url = {a56a4501-628a-4cb6-aaf2-1f5a58bf0b8e}, journal = {}, number = , volume = , place = {United States}, year = {2021}, month = {10}}

Details

Data from Oct 26, 2021

Last updated Dec 18, 2024

Submitted Oct 26, 2021

Organization

Power Systems Engineering

Contact

Ahmed Zamzam

Authors

Joswig-Jones

University of Washington

Zamzam

Power Systems Engineering

Baker

University of Colorado - Boulder

DOE Project Details

Project Name The Science Undergraduate Laboratory Internships Program (SULI), and the Laboratory Directed Research and Development (LDRD) Program at NREL.

Project Number AC36-08GO28308

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