Statistical Downscaling to Improve the Subseasonal Predictions of Energy-Relevant Surface Variables

Research output: Contribution to journalArticlepeer-review

Abstract

Owing to the increasing share of variable renewable energies in the electricity mix, the European energy sector is becoming more weather sensitive. In this regard, skillful subseasonal predictions of essential climate variables can provide considerable socioeconomic benefits to the energy sector. The aim of this study is therefore to improve the European subseasonal predictions of 100-m wind speed and 2-m temperature, which we achieve through statistical downscaling. We employ redundancy analysis (RDA) to estimate spatial patterns of variability from large-scale fields that allow for the best prediction of surface fields. We compare explanatory powers between the patterns obtained using RDA against those derived using principal component analysis (PCA), when used as predictors in multilinear regression models to predict surface fields, and show that the explanatory power of the former is superior to that of the latter. Subsequently, we employ the estimated relationship between RDA patterns and surface fields to produce statistical probabilistic predictions of gridded surface fields using dynamical ensemble predictions of RDA patterns. We finally demonstrate how a simple combination of dynamical and statistical predictions of surface fields significantly improves the accuracy of subseasonal predictions of both variables over a large part of Europe. We attribute the improved accuracy of these combined predictions to improvements in reliability and resolution.

Original languageEnglish
Pages (from-to)275-296
Number of pages22
JournalMonthly Weather Review
Volume151
Issue number1
DOIs
Publication statusPublished - 1 Jan 2023

Keywords

  • Downscaling
  • Empirical orthogonal functions
  • Europe
  • Forecast verification/skill
  • Statistical forecasting
  • Subseasonal variability

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