EMS Annual Meeting Abstracts
Vol. 22, EMS2025-217, 2025, updated on 30 Jun 2025
https://doi.org/10.5194/ems2025-217
EMS Annual Meeting 2025
© Author(s) 2025. This work is distributed under
the Creative Commons Attribution 4.0 License.
An opportunity index for subseasonal prediction
Dominik Büeler1,2,3, Maria Pyrina1,2,4, Adel Imamovic3, Christoph Spirig3, and Daniela Domeisen1,5
Dominik Büeler et al.
  • 1Institute for Atmospheric and Climate Science, ETH Zurich, Switzerland
  • 2Center for Climate Systems Modeling (C2SM), ETH Zurich, Switzerland
  • 3Federal Office of Meteorology and Climatology (MeteoSwiss), Switzerland
  • 4European Centre for Medium-Range Weather Forecasts (ECMWF), Bonn, Germany
  • 5University of Lausanne, Switzerland

The skill of subseasonal atmospheric forecasts has steadily improved in recent decades. Nevertheless, the operational use of such forecasts is still a major challenge for weather prediction centers and weather-dependent socio-economic sectors. A key reason for this challenge is that often only specifically trained forecasters understand and are able to keep track of the complex variety of so-called "windows of forecast opportunity" (WFOs) – periods during which subseasonal prediction skill is enhanced due to specific states of the atmosphere, the ocean, or the land surface acting as drivers of predictability. Here, we propose a novel method to combine the variety of WFOs into a single daily opportunity index, which can be used operationally like a traffic-light system to anticipate enhanced or reduced subseasonal prediction skill in advance. The opportunity index is a linear combination of the standardized anomalies of different known drivers of predictability at forecast initialization. The value of the index is constructed to increase as more WFOs are simultaneously active. Based on 20 years of subseasonal 2m-temperature anomaly hindcasts for Switzerland during summer, we demonstrate that large values of the opportunity index at forecast initialization are able to predict enhanced skill for weekly, two-weekly, and monthly mean anomalies up to four weeks ahead. Systematic sensitivity testing against overfitting indicates year-to-year variability in the performance of the opportunity index, which is something that might be overcome with training on larger hindcast datasets. Given that subseasonal prediction is particularly challenging for Central Europe and during summer, which is the focus of our study, the principle of such a regionally trained index could advance the operational usability of subseasonal predictions in other regions of Europe and the world throughout the year.

How to cite: Büeler, D., Pyrina, M., Imamovic, A., Spirig, C., and Domeisen, D.: An opportunity index for subseasonal prediction, EMS Annual Meeting 2025, Ljubljana, Slovenia, 7–12 Sep 2025, EMS2025-217, https://doi.org/10.5194/ems2025-217, 2025.