A deep mixture density network for outlier-corrected interpolation of crowd-sourced weather data
Charlie Kirkwood, Theo Economou, Henry Odbert, Nicolas Pugeault

TL;DR
This paper introduces a Bayesian deep learning model that automatically detects outliers in crowd-sourced weather data, improving the accuracy of environmental variable interpolation.
Contribution
It presents a novel deep mixture density network that simultaneously models environmental phenomena and classifies outliers, enhancing data quality in crowd-sourced observations.
Findings
Effective outlier detection in weather data
Accurate spatio-temporal temperature modeling
Potential to incorporate diverse observation sources
Abstract
As the costs of sensors and associated IT infrastructure decreases - as exemplified by the Internet of Things - increasing volumes of observational data are becoming available for use by environmental scientists. 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. To realise the value of crowd sourced 'Internet of Things' type observations for environmental modelling, we require approaches that can automate the detection of outliers during the data modelling process so that they do not contaminate the true distribution of the phenomena of interest. To this end, here we present a Bayesian deep learning approach for spatio-temporal modelling of environmental variables with automatic outlier detection. Our approach…
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Taxonomy
TopicsHydrology and Drought Analysis · Climate variability and models · Flood Risk Assessment and Management
