Principal Component Density Estimation for Scenario Generation Using Normalizing Flows
Eike Cramer, Alexander Mitsos, Raul Tempone, Manuel Dahmen

TL;DR
This paper introduces a principal component flow (PCF) method that combines PCA with normalizing flows to generate more accurate scenario distributions for renewable energy and load demand data, addressing the smeared-out distribution issue.
Contribution
The paper proposes a novel PCF approach that leverages PCA to improve normalizing flow density estimation for time series scenario generation.
Findings
PCF preserves key features of original distributions.
PCF reduces noise in generated time series.
Applicable to various data sets beyond renewable energy.
Abstract
Neural networks-based learning of the distribution of non-dispatchable renewable electricity generation from sources such as photovoltaics (PV) and wind as well as load demands has recently gained attention. Normalizing flow density models are particularly well suited for this task due to the training through direct log-likelihood maximization. However, research from the field of image generation has shown that standard normalizing flows can only learn smeared-out versions of manifold distributions. Previous works on normalizing flow-based scenario generation do not address this issue, and the smeared-out distributions result in the sampling of noisy time series. In this paper, we exploit the isometry of the principal component analysis (PCA), which sets up the normalizing flow in a lower-dimensional space while maintaining the direct and computationally efficient likelihood…
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Taxonomy
TopicsEnergy Load and Power Forecasting · Solar Radiation and Photovoltaics · Smart Grid Energy Management
MethodsPrincipal Components Analysis · Normalizing Flows
