Search Results for author: Theo Economou

Found 3 papers, 1 papers with code

A deep mixture density network for outlier-corrected interpolation of crowd-sourced weather data

no code implementations25 Jan 2022 Charlie Kirkwood, Theo Economou, Henry Odbert, Nicolas Pugeault

However, as the number of available observation sites increases, so too does the opportunity for data quality issues to emerge, particularly given that many of these sensors do not have the benefit of official maintenance teams.

Outlier Detection

Bayesian deep learning for mapping via auxiliary information: a new era for geostatistics?

no code implementations17 Aug 2020 Charlie Kirkwood, Theo Economou, Nicolas Pugeault

Here we demonstrate the power of feature learning in a geostatistical context, by showing how deep neural networks can automatically learn the complex relationships between point-sampled target variables and gridded auxiliary variables (such as those provided by remote sensing), and in doing so produce detailed maps of chosen target variables.

Spatial Interpolation

A framework for probabilistic weather forecast post-processing across models and lead times using machine learning

1 code implementation6 May 2020 Charlie Kirkwood, Theo Economou, Henry Odbert, Nicolas Pugeault

In this paper, we use a road surface temperature example to demonstrate a three-stage framework that uses machine learning to bridge the gap between sets of separate forecasts from NWP models and the 'ideal' forecast for decision support: probabilities of future weather outcomes.

BIG-bench Machine Learning Decision Making

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