Conditional simulations of Brown-Resnick processes

2011 
SUMMARY Since many environmental processes such as heat waves or precipitation are spatial in extent, it is likely that a single extreme event affects several locati ons and the areal modelling of extremes is therefore essential if the spatial dependence of extreme s has to be appropriately taken into account. Although some progress has been made to develop a geostatistic of extremes, conditional simulation of max-stable processes is still in its early sta ge. This paper proposes a framework to get conditional simulations of Brown‐Resnick processes. Although closed forms for the regular conditional distribution of Brown‐Resnick processes were recently found, sampling from this conditional distribution is a considerable challenge as it leads quickly to a combinatorial explosion. To bypass this computational burden, a Markov chain Monte‐Carlo algorithm is presented. We test the method on simulated data and give an application to extreme rainfall around Zurich. Results show that the proposed framework provides accurate conditional simulations of Brown‐Resnick processes and can handle real-sized problems.
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