Sea Ice RAP: Random Analog Prediction of Arctic Sea Ice Extent
Description
We develop a Random Analogue Predictor (RAP) algorithm for the forecasting of Arctic Sea Ice Extent (SIE) on seasonal timescales. This is a stochastic variant of the celebrated method of the analogues that only uses the historical SIE record to produce ensemble forecasts. When comparing the observations with the most representative forecast of the ensemble (as identified through the band--depth, a centrality measure for functional data) the algorithm shows negligible bias and RMSE no larger than $0.6\cdot 10^6$ km$^2$. We argue that simplicity, interpretability, independence on physical hypothesis, and the ability to attach an uncertainty estimate to its own forecasts, should make RAP the benchmark of choice for physics--based and AI--based models alike.
The most recent version can be found on the GitHub page of the Mubadala Arabian Center for Climate and Environmental Sciences
Notes
Files
Sea_Ice_RAP_October_2025.zip
Files
(909.9 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:557b1a60b863ea45774adad18e9410de
|
909.9 kB | Preview Download |
Additional details
Software
- Programming language
- Python
- Development Status
- Active