2021
DOI: 10.48550/arxiv.2110.14451
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Validation Methods for Energy Time Series Scenarios from Deep Generative Models

Abstract: The design and operation of modern energy systems are heavily influenced by time-dependent and uncertain parameters, e.g., renewable electricity generation, load-demand, and electricity prices. These are typically represented by a set of discrete realizations known as scenarios. A popular scenario generation approach uses deep generative models (DGM) that allow scenario generation without prior assumptions about the data distribution. However, the validation of generated scenarios is difficult, and a comprehen… Show more

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