TL;DR
This paper introduces a novel method for initializing ensemble forecasts in subseasonal-to-seasonal prediction by projecting onto eigenfunctions derived from Koopman and Perron-Frobenius operators, enhancing forecast reliability.
Contribution
The paper presents a new data-driven approach using Dynamic Mode Decomposition to construct initial conditions that improve ensemble forecast reliability at S2S timescales.
Findings
Eigenfunction-based initializations yield highly reliable forecasts.
Projection onto specific eigenfunctions improves forecast skill across lead times.
Method outperforms traditional EOF and Lyapunov vector-based initializations.
Abstract
The prediction of the weather at subseasonal-to-seasonal (S2S) timescales is dependent on both initial and boundary conditions. An open question is how to best initialize a relatively small-sized ensemble of numerical model integrations to produce reliable forecasts at these timescales. Reliability in this case means that the statistical properties of the ensemble forecast are consistent with the actual uncertainties about the future state of the geophysical system under investigation. In the present work, a method is introduced to construct initial conditions that produce reliable ensemble forecasts by projecting onto the eigenfunctions of the Koopman or the Perron-Frobenius operators, which describe the time-evolution of observables and probability distributions of the system dynamics, respectively. These eigenfunctions can be approximated from data by using the Dynamic Mode…
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