Abstract
Biased, incomplete numerical models are often used for forecasting states of complex dynamical systems by mapping an estimate of a “true” initial state into model phase space, making a forecast, and then mapping back to the “true” space. While advances have been made to reduce errors associated with model initialization and model forecasts, we lack a general framework for discovering optimal mappings between “true” dynamical systems and model phase spaces. Here, we propose using a data-driven approach to infer these maps. Our approach consistently reduces errors in the Lorenz-96 system with an imperfect model constructed to produce significant model errors compared to a reference configuration. Optimal pre- and post-processing transforms leverage “shocks” and “drifts” in the imperfect model to make more skillful forecasts of the reference system. The implemented machine learning architecture using neural networks constructed with a custom analog-adjoint layer makes the approach generalizable across applications.
| Original language | English |
|---|---|
| Article number | e2024GL110472 |
| Journal | Geophysical Research Letters |
| Volume | 52 |
| Issue number | 4 |
| DOIs | |
| State | Published - Feb 28 2025 |
| Externally published | Yes |
Keywords
- Earth system prediction
- dynamical systems
- forecast error
- machine learning
- nonlinear processes