Energies (Feb 2023)

Cross-Correlated Scenario Generation for Renewable-Rich Power Systems Using Implicit Generative Models

  • Dhaval Dalal,
  • Muhammad Bilal,
  • Hritik Shah,
  • Anwarul Islam Sifat,
  • Anamitra Pal,
  • Philip Augustin

DOI
https://doi.org/10.3390/en16041636
Journal volume & issue
Vol. 16, no. 4
p. 1636

Abstract

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Generation of realistic scenarios is an important prerequisite for analyzing the reliability of renewable-rich power systems. This paper satisfies this need by presenting an end-to-end model-free approach for creating representative power system scenarios on a seasonal basis. A conditional recurrent generative adversarial network serves as the main engine for scenario generation. Compared to prior scenario generation models that treated the variables independently or focused on short-term forecasting, the proposed implicit generative model effectively captures the cross-correlations that exist between the variables considering long-term planning. The validity of the scenarios generated using the proposed approach is demonstrated through extensive statistical evaluation and investigation of end-application results. It is shown that analysis of abnormal scenarios, which is more critical for power system resource planning, benefits the most from cross-correlated scenario generation.

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