Validation Methods for Energy Time Series Scenarios from Deep Generative Models
Eike Cramer, Leonardo Rydin Gorj\~ao, Alexander Mitsos, Benjamin, Sch\"afer, Dirk Witthaut, Manuel Dahmen

TL;DR
This paper critically assesses existing validation methods for energy time series scenarios generated by deep models, proposing multifractal analysis as an additional tool, and highlights the importance of using multiple validation approaches for reliable scenario assessment.
Contribution
It provides a comprehensive evaluation of current validation methods and introduces multifractal detrended fluctuation analysis as a novel validation approach for energy scenarios.
Findings
No single validation method is sufficient alone.
Multiple validation methods should be used together.
Validation results require careful interpretation.
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 comprehensive discussion about appropriate validation methods is currently lacking. To start this discussion, we provide a critical assessment of the currently used validation methods in the energy scenario generation literature. In particular, we assess validation methods based on probability density, auto-correlation, and power spectral density. Furthermore, we propose using the…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Complex Systems and Time Series Analysis · Computational Physics and Python Applications
