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Auteurs principaux: Cho, Young-ho, Zhu, Hao, Lee, Duehee, Baldick, Ross
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2508.00692
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author Cho, Young-ho
Zhu, Hao
Lee, Duehee
Baldick, Ross
author_facet Cho, Young-ho
Zhu, Hao
Lee, Duehee
Baldick, Ross
contents For conducting resource adequacy studies, we synthesize multiple long-term wind power scenarios of distributed wind farms simultaneously by using the spatio-temporal features: spatial and temporal correlation, waveforms, marginal and ramp rates distributions of waveform, power spectral densities, and statistical characteristics. Generating the spatial correlation in scenarios requires the design of common factors for neighboring wind farms and antithetical factors for distant wind farms. The generalized dynamic factor model (GDFM) can extract the common factors through cross spectral density analysis, but it cannot closely imitate waveforms. The GAN can synthesize plausible samples representing the temporal correlation by verifying samples through a fake sample discriminator. To combine the advantages of GDFM and GAN, we use the GAN to provide a filter that extracts dynamic factors with temporal information from the observation data, and we then apply this filter in the GDFM to represent both spatial and frequency correlations of plausible waveforms. Numerical tests on the combination of GDFM and GAN have demonstrated performance improvements over competing alternatives in synthesizing wind power scenarios from Australia, better realizing plausible statistical characteristics of actual wind power compared to alternatives such as the GDFM with a filter synthesized from distributions of actual dynamic filters and the GAN with direct synthesis without dynamic factors.
format Preprint
id arxiv_https___arxiv_org_abs_2508_00692
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Wind Power Scenario Generation based on the Generalized Dynamic Factor Model and Generative Adversarial Network
Cho, Young-ho
Zhu, Hao
Lee, Duehee
Baldick, Ross
Machine Learning
Systems and Control
For conducting resource adequacy studies, we synthesize multiple long-term wind power scenarios of distributed wind farms simultaneously by using the spatio-temporal features: spatial and temporal correlation, waveforms, marginal and ramp rates distributions of waveform, power spectral densities, and statistical characteristics. Generating the spatial correlation in scenarios requires the design of common factors for neighboring wind farms and antithetical factors for distant wind farms. The generalized dynamic factor model (GDFM) can extract the common factors through cross spectral density analysis, but it cannot closely imitate waveforms. The GAN can synthesize plausible samples representing the temporal correlation by verifying samples through a fake sample discriminator. To combine the advantages of GDFM and GAN, we use the GAN to provide a filter that extracts dynamic factors with temporal information from the observation data, and we then apply this filter in the GDFM to represent both spatial and frequency correlations of plausible waveforms. Numerical tests on the combination of GDFM and GAN have demonstrated performance improvements over competing alternatives in synthesizing wind power scenarios from Australia, better realizing plausible statistical characteristics of actual wind power compared to alternatives such as the GDFM with a filter synthesized from distributions of actual dynamic filters and the GAN with direct synthesis without dynamic factors.
title Wind Power Scenario Generation based on the Generalized Dynamic Factor Model and Generative Adversarial Network
topic Machine Learning
Systems and Control
url https://arxiv.org/abs/2508.00692