Bayesian design forminimizing prediction uncertainty in bivariate spatial responses with applications to air quality monitoring

S.G.J. Senarathne, Werner Müller, James McGree

Research output: Contribution to journalArticlepeer-review

Abstract

Model-based geostatistical design involves the selection of locations to collect data to minimize an expected loss function over a set of all possible locations. The loss function is specified to reflect the aim of data collection, which, for geostatistical studies, could be to minimize the prediction uncertainty at unobserved locations. In this paper,we propose a new approach to design such studies via a loss function derived through considering the entropy about the model predictions and the parameters of the model. The approach includes a multivariate extension to generalized linear spatial models, and thus can be used to design experiments with more than one response. Unfortunately, evaluating our proposed loss function is computationally expensive so we provide an approximation such that our approach can be adopted to design realistically sized eostatistical studies. This is demonstrated through a simulated study and through designing an air quality monitoring program in Queensland, Australia. The results show that our designs remain highly efficient in achieving each experimental objective individually, providing an ideal compromise between the two objectives. Accordingly, we advocate that our approach could be adopted more generally in model-based geostatistical design.
Original languageEnglish
Article number2100386
Number of pages21
JournalBiometrical Journal
DOIs
Publication statusPublished - 2022

Fields of science

  • 101018 Statistics
  • 105108 Geostatistics
  • 509 Other Social Sciences

JKU Focus areas

  • Digital Transformation
  • Sustainable Development: Responsible Technologies and Management

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