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    • 10th SmartData@PoliTO Workshop – Present and Future Directions
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Home » Publications » Model-based Determination of Bidding Zones: An Approach Based on Multiple Scenarios, Optimal Power Flow and Clustering Algorithms

Model-based Determination of Bidding Zones: An Approach Based on Multiple Scenarios, Optimal Power Flow and Clustering Algorithms

C. Bovo, V. Ilea, P. Colella, E. Bompard, G. Chicco, A. Mazza, A. Russo, E. M. Carlini, M. Caprabianca, F. Quaglia, L. Luzi (2021) Model-based Determination of Bidding Zones: An Approach Based on Multiple Scenarios, Optimal Power Flow and Clustering Algorithms, In: 2021 AEIT International Annual Conference, AEIT 2021, pp. 1-6, ISBN: 978-88-87237-50-4

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