Abstract
AbstractOperational Arctic sea ice forecasts are of crucial importance to science and to society in the Arctic region. Currently, statistical and numerical climate models are widely used to generate the Arctic sea ice forecasts at weather time-scales. Numerical models require near real-time input of relevant environmental conditions consistent with the model equations and they are computationally expensive. In this study, we propose a deep learning approach, namely Convolutional Long Short Term Memory Networks (ConvLSTM), to forecast sea ice in the Barents Sea at weather to sub-seasonal time scales. This is an unsupervised learning approach. It makes use of historical records and it exploits the covariances between different variables, including spatial and temporal relations. With input fields from reanalysis data, we demonstrate that ConvLSTM is able to learn the variability of the Arctic sea ice and can forecast regional sea ice concentration skillfully at weekly to monthly time scales. It preserves the physical consistency between predictors and predictands, and generally outperforms forecasts with climatology, persistence and a statistical model. Based on the known sources of predictability, sensitivity tests with different climate fields as input for learning were performed. The impact of different predictors on the quality of the forecasts are evaluated and we demonstrate that the surface energy budget components have a large impact on the predictability of sea ice at weather time scales. This method is promising to enhance operational Arctic sea ice forecasting in the near future.
Highlights
As one of the most noticeable frontiers with visible changes due to global warming, the Arctic has received more and more attention in recent decades
With an assessment based on the root-mean-square error (RMSE) of sea ice forecasts for the first leading week, the results show that a combination of a learning rate equal to 0.01, three stacked ConvLSTM layers, a filter size of 3 3 3, and 1500 epochs is the best
A ConvLSTM is a useful tool to incorporate both the spatial and temporal information within meteorological fields in a model. We demonstrate that this deep neural network approach can effectively be used to predict sea ice characteristics in the Barents Sea at weekly to submonthly time scales
Summary
As one of the most noticeable frontiers with visible changes due to global warming, the Arctic has received more and more attention in recent decades. This is accompanied with increased commercial and scientific activities as a result of sea ice melting. Blanchard-Wrigglesworth et al (2011a) investigated the temporal evolution of Arctic sea ice in observations and in ensemble climate model output. They found a Denotes content that is immediately available upon publication as open access
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