Artículo de revista
An improved spectral turning-bands algorithm for simulating stationary vector Gaussian random fields
Fecha
2016Registro en:
Stochastic Environmental Research and Risk Assessment. Volumen: 30 Número: 7 Páginas: 1863-1873
1436-3240
Autor
Emery, Xavier
Arroyo, Daisy
Porcu, Emilio
Institución
Resumen
We propose a spectral turning-bands approach for the simulation of second-order stationary vector Gaussian random fields. The approach improves existing spectral methods through coupling with importance sampling techniques. A notable insight is that one can simulate any vector random field whose direct and cross-covariance functions are continuous and absolutely integrable, provided that one knows the analytical expression of their spectral densities, without the need for these spectral densities to have a bounded support. The simulation algorithm is computationally faster than circulant-embedding techniques, lends itself to parallel computing and has a low memory storage requirement. Numerical examples with varied spatial correlation structures are presented to demonstrate the accuracy and versatility of the proposal.