AO-PHLGFeb 23, 2022

A Bayesian Deep Learning Approach to Near-Term Climate Prediction

arXiv:2202.11244v114 citations
Originality Incremental advance
AI Analysis

This work addresses model bias and initialization shock in decadal climate prediction for climate scientists, though it is incremental as it builds on existing machine learning methods in this domain.

The paper tackled the problem of near-term climate prediction by applying a Bayesian deep learning approach to predict North Atlantic sea surface temperature variability, finding that a probabilistic feedforward convolutional network outperformed deterministic versions and provided useful uncertainty measures.

Since model bias and associated initialization shock are serious shortcomings that reduce prediction skills in state-of-the-art decadal climate prediction efforts, we pursue a complementary machine-learning-based approach to climate prediction. The example problem setting we consider consists of predicting natural variability of the North Atlantic sea surface temperature on the interannual timescale in the pre-industrial control simulation of the Community Earth System Model (CESM2). While previous works have considered the use of recurrent networks such as convolutional LSTMs and reservoir computing networks in this and other similar problem settings, we currently focus on the use of feedforward convolutional networks. In particular, we find that a feedforward convolutional network with a Densenet architecture is able to outperform a convolutional LSTM in terms of predictive skill. Next, we go on to consider a probabilistic formulation of the same network based on Stein variational gradient descent and find that in addition to providing useful measures of predictive uncertainty, the probabilistic (Bayesian) version improves on its deterministic counterpart in terms of predictive skill. Finally, we characterize the reliability of the ensemble of ML models obtained in the probabilistic setting by using analysis tools developed in the context of ensemble numerical weather prediction.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes