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Generating Multivariate Load States Using a Conditional Variational Autoencoder

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arxiv 2110.11435 v2 pith:DL75KSP3 submitted 2021-10-21 eess.SY cs.LGcs.SY

Generating Multivariate Load States Using a Conditional Variational Autoencoder

classification eess.SY cs.LGcs.SY
keywords multivariatedatageneratingmodelautoencoderconditionalcvaegenerated
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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For planning of power systems and for the calibration of operational tools, it is essential to analyse system performance in a large range of representative scenarios. When the available historical data is limited, generative models are a promising solution, but modelling high-dimensional dependencies is challenging. In this paper, a multivariate load state generating model on the basis of a conditional variational autoencoder (CVAE) neural network is proposed. Going beyond common CVAE implementations, the model includes stochastic variation of output samples under given latent vectors and co-optimizes the parameters for this output variability. It is shown that this improves statistical properties of the generated data. The quality of generated multivariate loads is evaluated using univariate and multivariate performance metrics. A generation adequacy case study on the European network is used to illustrate model's ability to generate realistic tail distributions. The experiments demonstrate that the proposed generator outperforms other data generating mechanisms.

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  1. Diff2SP: Diffusion Models for Correlated Scenario Generation in Stochastic Programming

    stat.CO 2026-06 unverdicted novelty 6.0

    Diff2SP is a diffusion-based generative model that embeds stochastic optimization objectives into scenario generation and supplies regret bounds plus sample-complexity guarantees relative to GANs.