Abstract

AbstractWe present a comprehensive inter‐comparison of linear regression (LR), stochastic, and deep‐learning approaches for reduced‐order statistical emulation of ocean circulation. The reference data set is provided by an idealized, eddy‐resolving, double‐gyre ocean circulation model. Our goal is to conduct a systematic and comprehensive assessment and comparison of skill, cost, and complexity of statistical models from the three methodological classes. The model based on LR is considered as a baseline. Additionally, we investigate its additive white noise augmentation and a multi‐level stochastic approach, deep‐learning methods, hybrid frameworks (LR plus deep‐learning), and simple stochastic extensions of deep‐learning and hybrid methods. The assessment metrics considered are: root mean squared error, anomaly cross‐correlation, climatology, variance, frequency map, forecast horizon, and computational cost. We found that the multi‐level linear stochastic approach performs the best for both short‐ and long‐timescale forecasts. The deep‐learning hybrid models augmented by additive state‐dependent white noise came second, while their deterministic counterparts failed to reproduce the characteristic frequencies in climate‐range forecasts. Pure deep learning implementations performed worse than LR and its simple white noise augmentation. Skills of LR and its white noise extension were similar on short timescales, but the latter performed better on long timescales, while LR‐only outputs decay to zero for long simulations. Overall, our analysis promotes multi‐level LR stochastic models with memory effects, and hybrid models with linear dynamical core augmented by additive stochastic terms learned via deep learning, as a more practical, accurate, and cost‐effective option for ocean emulation than pure deep‐learning solutions.

Highlights

  • Medium-range weather forecast models routinely use computationally expensive Ocean General Circulation Models (OGCMs) that are coupled to the atmosphere model

  • The reference truth (ψ1ref ) used for assessing the model outputs belongs to the reduced space spanned by the 150 Empirical Orthogonal Functions (EOFs)/Principal Components (PCs)

  • We conclude that (i) ML-linear regression (LR) and the stochastically augmented hybrid models show better performance than the standalone implementation of LR and deep-learning models, probably, because the former types include all three major components of a reliable model: core dynamics, memory effects, and model errors accounted by stochastic noise; (ii) adding simple additive noise to the hybrid models significantly improves their performance

Read more

Summary

Introduction

Medium-range weather forecast models routinely use computationally expensive Ocean General Circulation Models (OGCMs) that are coupled to the atmosphere model. The long timescales of ocean dynamics and the weak influence from the deeper layers of the ocean on the atmosphere for a weather forecast of, say, a couple of days justify the investigation of replacements of expensive OGCMs with low-dimensional datadriven models that can run at negligible cost and emulate the upper ocean. These models are referred to as ocean “emulators”, because they emulate statistical properties of the flow rather than simulating the dynamics derived from physical principles. They can be used as conceptual toy models for process-related studies (e.g., as kinematic flow emulator of material transport)

Objectives
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.