Bayesian design with sampling windows for complex spatial processes

Author:

Buchhorn Katie12ORCID,Mengersen Kerrie12,Santos-Fernandez Edgar12,Peterson Erin E13,McGree James M124

Affiliation:

1. School of Mathematical Sciences, Queensland University of Technology , Brisbane, Queensland , Australia

2. Centre for Data Science (CDS), Queensland University of Technology , Brisbane, Queensland , Australia

3. EP Consulting , Brisbane, Queensland , Australia

4. Australian Institute of Marine Science (AIMS) , Crawley, Western Australia , Australia

Abstract

Abstract Optimal design facilitates intelligent data collection. In this paper, we introduce a fully Bayesian design approach for spatial processes with complex covariance structures, like those typically exhibited in natural ecosystems. Coordinate exchange algorithms are commonly used to find optimal design points. However, collecting data at specific points is often infeasible in practice. Currently, there is no provision to allow for flexibility in the choice of design. Accordingly, we also propose an approach to find Bayesian sampling windows, rather than points, via Gaussian process emulation to identify regions of high design efficiency across a multi-dimensional space. These developments are motivated by two ecological case studies: monitoring water temperature in a river network system in the northwestern United States and monitoring submerged coral reefs off the north-west coast of Australia.

Funder

Australian Research Council

AIMS

Publisher

Oxford University Press (OUP)

Subject

Statistics, Probability and Uncertainty,Statistics and Probability

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