AO-PHLGSep 18, 2019

Statistical and machine learning ensemble modelling to forecast sea surface temperature

arXiv:1909.08573v21 citations
AI Analysis

This provides a data-driven, transportable prediction tool for oceanography, particularly useful for low-power edge computing in marine environments, though it is incremental as it matches rather than surpasses existing methods.

The authors tackled forecasting sea surface temperature by developing an ensemble of machine learning models, achieving accuracy comparable to state-of-the-art physics-based models while demonstrating low computational cost for edge deployment.

In situ and remotely sensed observations have potential to facilitate data-driven predictive models for oceanography. A suite of machine learning models, including regression, decision tree and deep learning approaches were developed to estimate sea surface temperatures (SST). Training data consisted of satellite-derived SST and atmospheric data from The Weather Company. Models were evaluated in terms of accuracy and computational complexity. Predictive skill were assessed against observations and a state-of-the-art, physics-based model from the European Centre for Medium Weather Forecasting. Results demonstrated that by combining automated feature engineering with machine-learning approaches, accuracy comparable to existing state-of-the-art can be achieved. Models captured seasonal patterns in the data and qualitatively reproduce short-term variations driven by atmospheric forcing. Further, it demonstrated that machine-learning-based approaches can be used as transportable prediction tools for ocean variables -- the data-driven nature of the approach naturally integrates with automatic deployment frameworks, where model deployments are guided by data rather than user-parametrisation and expertise. The low computational cost of inference makes the approach particularly attractive for edge-based computing where predictive models could be deployed on low-power devices in the marine environment.

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