A path-level exact parallelization strategy for sequential simulation
Sequential Simulation is a well known method in geostatistical modelling. Following the Bayesian approach for simulation of conditionally dependent random events, Sequential Indicator Simulation (SIS) method draws simulated values for K categories (categorical case) or classes defined by K different...
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Veröffentlicht in: | Computers & geosciences 2018-01, Vol.110, p.10-22 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | Sequential Simulation is a well known method in geostatistical modelling. Following the Bayesian approach for simulation of conditionally dependent random events, Sequential Indicator Simulation (SIS) method draws simulated values for K categories (categorical case) or classes defined by K different thresholds (continuous case). Similarly, Sequential Gaussian Simulation (SGS) method draws simulated values from a multivariate Gaussian field. In this work, a path-level approach to parallelize SIS and SGS methods is presented. A first stage of re-arrangement of the simulation path is performed, followed by a second stage of parallel simulation for non-conflicting nodes. A key advantage of the proposed parallelization method is to generate identical realizations as with the original non-parallelized methods. Case studies are presented using two sequential simulation codes from GSLIB: SISIM and SGSIM. Execution time and speedup results are shown for large-scale domains, with many categories and maximum kriging neighbours in each case, achieving high speedup results in the best scenarios using 16 threads of execution in a single machine.
•An exact parallelization strategy is proposed for sequential simulation algorithms.•Case studies are presented for SGSIM and SISIM from GSLIB.•Large scale domains of 100 million nodes are simulated. |
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ISSN: | 0098-3004 1873-7803 |
DOI: | 10.1016/j.cageo.2017.09.011 |