Data fusion with Gaussian processes for estimation of environmental hazard events
Xiong, X; Youngman, BD; Economou, T
Date: 24 September 2020
Journal
Environmetrics
Publisher
Wiley / International Environmetrics Society (TIES)
Publisher DOI
Abstract
Environmental hazard events such as extra-tropical cyclones or windstorms that
develop in the North Atlantic can cause severe societal damage. Environmental hazard is quantified by the hazard footprint, a spatial area describing potential damage.
However, environmental hazards are never directly observed, so estimation of the
footprint ...
Environmental hazard events such as extra-tropical cyclones or windstorms that
develop in the North Atlantic can cause severe societal damage. Environmental hazard is quantified by the hazard footprint, a spatial area describing potential damage.
However, environmental hazards are never directly observed, so estimation of the
footprint for any given event is primarily reliant on station observations (e.g., wind
speed in the case of a windstorm event) and physical model hindcasts. Both data
sources are indirect measurements of the true footprint, and here we present a general
statistical framework to combine the two data sources for estimating the underlying
footprint. The proposed framework extends current data fusion approaches by allowing structured Gaussian process discrepancy between physical model and the true
footprint, while retaining the elegance of how the "change of support" problem is
dealt with. Simulation is used to assess the practical feasibility and efficacy of the
framework, which is then illustrated using data on windstorm Imogen
Mathematics and Statistics
Faculty of Environment, Science and Economy
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